This document provides guidance for managing groundwater data as part of a Hydrological Information System (HIS) in India. It discusses the lifecycle of hydrometric data from collection to dissemination. Key points covered include:
- The HIS Manual Groundwater is the primary reference for groundwater data management procedures.
- Groundwater data goes through stages of monitoring, data sensing, validation, analysis, and publication.
- Sections provide guidance on groundwater monitoring networks, data collection, processing, analysis, and dissemination of data.
- Tables list the relevant HIS Manual volumes for groundwater level and rainfall data management.
This document provides guidance on managing groundwater data within India's Hydrological Information System (HIS). It discusses the lifecycle of hydrometric data from collection to dissemination. The document directs the user to relevant manuals within HIS, particularly the Groundwater manual, for guidance on groundwater level monitoring networks, data collection, processing, analysis and publication. It describes the various types of manuals within HIS - design, field operation, and reference - and lists the specific volumes and parts most pertinent to groundwater level data. The overall aim is to help users locate and understand documentation to standardize high quality groundwater data management and inform water resource planning.
This document provides guidance for managing hydro-meteorological data in India within a Hydrological Information System (HIS). It discusses the data lifecycle, from monitoring networks and data collection to analysis, dissemination and use. It directs the user to relevant manuals on topics like rainfall, snow, climate and evaporation data processing. The goal is to standardize procedures and provide high quality data to inform water resources planning and management.
This document provides guidance for managing sediment and water quality data within India's Hydrological Information System (HIS). It summarizes the key HIS manuals that provide procedures for monitoring, data collection, validation, analysis, dissemination and publication of sediment and water quality data. Specifically, it outlines the multi-volume HIS Manuals for Surface Water and Groundwater, which describe the lifecycle of sediment and water quality data within the HIS. It also lists some additional HPI documentation and training modules that are relevant to sediment and water quality monitoring and analysis. The overall aim is to help users navigate and understand the various documents within the HIS library to properly manage sediment and water quality data.
This document provides an overview of guidance materials for the management of surface water data within India's Hydrological Information System (HIS). It describes the lifecycle of hydrometric data from collection through analysis and publication. Key documents that provide procedures for surface water data management are the HIS Manual Surface Water and various training modules developed under the Hydrology Project. The manual and modules cover topics like network design, data collection, entry, validation, processing, analysis, and dissemination of water level, stage-discharge, and flow data. The goal is to standardize surface water data management practices across states and agencies to improve data quality and usability.
This document provides a readers' guide to groundwater documents produced by the Hydrology Project (HP). It summarizes the Hydrological Information System (HIS) Manual Groundwater, which consists of 10 volumes covering topics like hydro-meteorology, geo-hydrology, water quality sampling and analysis, data processing, and more. It also describes related groundwater training modules and other documents on standards, maintenance, and more. The guide is intended to help users understand and locate relevant groundwater information resources in the HIS document library.
This document provides a readers' guide to surface water documents related to India's Hydrological Information System (HIS). It summarizes the key documents, including the 10-volume HIS Manual Surface Water, which describes procedures for surface water data collection, analysis and management. It also outlines the surface water training modules available, which cover topics like hydrometry, meteorology and data processing. The guide is intended to help users understand and locate relevant surface water documents on the Hydrology Project website.
This document provides a readers' guide to hydro-meteorological documents related to India's Hydrological Information System (HIS). It summarizes key hydro-meteorology manuals, training modules, and other documents produced by the Hydrology Project to support the collection, processing, and use of rainfall and climate data in India. The primary references are the HIS Manual Surface Water and Groundwater, which describe procedures for network design, data collection, processing, and analysis of hydro-meteorological data. Related training modules cover topics like rainfall data entry, validation, analysis and reporting. The guide aims to help users locate relevant hydro-meteorology documents.
The document provides guidance on assessing hydrological data needs through stakeholder interviews. Small interview teams will visit existing and potential hydrological data users with a questionnaire. The questionnaire aims to gather information on: 1) The user's organizational profile, current water system use, and current data availability and sources. 2) The user's future hydrological data classification, proposed uses, and parameter requirements. Interview teams will explain the questionnaire and hydrological information system, then review responses to ensure questions are understood and data needs are properly assessed. Results will inform immediate data provision and long-term system adjustments.
This document provides guidance on managing groundwater data within India's Hydrological Information System (HIS). It discusses the lifecycle of hydrometric data from collection to dissemination. The document directs the user to relevant manuals within HIS, particularly the Groundwater manual, for guidance on groundwater level monitoring networks, data collection, processing, analysis and publication. It describes the various types of manuals within HIS - design, field operation, and reference - and lists the specific volumes and parts most pertinent to groundwater level data. The overall aim is to help users locate and understand documentation to standardize high quality groundwater data management and inform water resource planning.
This document provides guidance for managing hydro-meteorological data in India within a Hydrological Information System (HIS). It discusses the data lifecycle, from monitoring networks and data collection to analysis, dissemination and use. It directs the user to relevant manuals on topics like rainfall, snow, climate and evaporation data processing. The goal is to standardize procedures and provide high quality data to inform water resources planning and management.
This document provides guidance for managing sediment and water quality data within India's Hydrological Information System (HIS). It summarizes the key HIS manuals that provide procedures for monitoring, data collection, validation, analysis, dissemination and publication of sediment and water quality data. Specifically, it outlines the multi-volume HIS Manuals for Surface Water and Groundwater, which describe the lifecycle of sediment and water quality data within the HIS. It also lists some additional HPI documentation and training modules that are relevant to sediment and water quality monitoring and analysis. The overall aim is to help users navigate and understand the various documents within the HIS library to properly manage sediment and water quality data.
This document provides an overview of guidance materials for the management of surface water data within India's Hydrological Information System (HIS). It describes the lifecycle of hydrometric data from collection through analysis and publication. Key documents that provide procedures for surface water data management are the HIS Manual Surface Water and various training modules developed under the Hydrology Project. The manual and modules cover topics like network design, data collection, entry, validation, processing, analysis, and dissemination of water level, stage-discharge, and flow data. The goal is to standardize surface water data management practices across states and agencies to improve data quality and usability.
This document provides a readers' guide to groundwater documents produced by the Hydrology Project (HP). It summarizes the Hydrological Information System (HIS) Manual Groundwater, which consists of 10 volumes covering topics like hydro-meteorology, geo-hydrology, water quality sampling and analysis, data processing, and more. It also describes related groundwater training modules and other documents on standards, maintenance, and more. The guide is intended to help users understand and locate relevant groundwater information resources in the HIS document library.
This document provides a readers' guide to surface water documents related to India's Hydrological Information System (HIS). It summarizes the key documents, including the 10-volume HIS Manual Surface Water, which describes procedures for surface water data collection, analysis and management. It also outlines the surface water training modules available, which cover topics like hydrometry, meteorology and data processing. The guide is intended to help users understand and locate relevant surface water documents on the Hydrology Project website.
This document provides a readers' guide to hydro-meteorological documents related to India's Hydrological Information System (HIS). It summarizes key hydro-meteorology manuals, training modules, and other documents produced by the Hydrology Project to support the collection, processing, and use of rainfall and climate data in India. The primary references are the HIS Manual Surface Water and Groundwater, which describe procedures for network design, data collection, processing, and analysis of hydro-meteorological data. Related training modules cover topics like rainfall data entry, validation, analysis and reporting. The guide aims to help users locate relevant hydro-meteorology documents.
The document provides guidance on assessing hydrological data needs through stakeholder interviews. Small interview teams will visit existing and potential hydrological data users with a questionnaire. The questionnaire aims to gather information on: 1) The user's organizational profile, current water system use, and current data availability and sources. 2) The user's future hydrological data classification, proposed uses, and parameter requirements. Interview teams will explain the questionnaire and hydrological information system, then review responses to ensure questions are understood and data needs are properly assessed. Results will inform immediate data provision and long-term system adjustments.
This document outlines the stages of surface water data processing under the Hydrological Information System (HIS) in India. It discusses: 1) Receipt of data from field stations and storage of raw records; 2) Data entry at sub-divisional offices; 3) Validation of data through primary, secondary, and hydrological checks; 4) Completion and correction of missing or erroneous data; 5) Compilation, analysis, and reporting of validated data; 6) Transfer of data between processing levels from sub-division to division to state centers. The overall goal is to process field data in a systematic series of steps to produce quality-controlled hydrological information.
This document provides an overview of a Hydrological Information System (HIS) being developed for 9 states in India. It discusses the key components and activities of the HIS, which include: assessing user needs, establishing observation networks, managing historical data, collecting field data, processing and analyzing data, exchanging and reporting data, storing and disseminating data, and developing institutional and human resources. The overall goal of the HIS is to provide reliable hydrological data and information to support long-term water resources planning and management decisions in India.
This document provides guidance on sampling principles for hydrological and hydro-meteorological variables. It discusses key concepts such as units of measurement, basic statistics, measurement error, sampling frequency and spatial sampling. The goal is to design monitoring networks that can estimate important statistical parameters about variables while accounting for various sources of error from sampling. Basic statistical concepts covered include distribution functions, parameters like mean and variance, and how to estimate these from samples along with associated confidence intervals and effects of serial correlation.
This document provides a guide to water quality documents produced by the Hydrology Project in India. It summarizes the key water quality documents, including the HIS Manual Water Quality, Water Quality Training Modules, and additional technical papers. The guide is intended to help users locate relevant water quality information for surface water and groundwater monitoring and analysis.
Mh sw optimisation of g&d stations network of maharashtrahydrologyproject0
This document discusses optimizing the streamgauge and raingauge network for the Upper Bhima Basin in India. It provides background on hydrological information systems and networks in India. The Hydrology Project aims to improve India's capabilities for collecting and analyzing hydrological data. This study was conducted as part of the Hydrology Project to review and optimize the existing hydrometric network in Maharashtra state, which includes streamgauges and raingauges. The goal is to ensure the network is collecting the necessary data to facilitate optimal water resources use and management in the Upper Bhima Basin.
This document provides guidance on reporting discharge data from hydrological monitoring stations. It outlines the contents and purpose of yearly reports, including descriptive summaries of streamflow patterns, basic statistics for selected stations, and comparisons to long-term averages. Periodic long-term reports every 5-10 years are also recommended to analyze trends over longer time periods. The reports aim to inform water resource planning and make hydrological data more accessible and understandable for users.
This document describes procedures for surface water data processing under the Hydrological Information System (HIS) in India. It discusses various stages of data processing including receipt of data, data entry, validation, completion, compilation, analysis, reporting and transfer. It emphasizes the importance of validation to correct errors and identify data reliability. Validation is done at multiple levels - primary, secondary and hydrological. The document also covers organizing temporary databases, transferring data between databases, and backing up databases.
This document provides guidance on reporting climatic data in India. It discusses the purpose and contents of annual reports on climatic data, including evaporation data. Key points covered include:
- Annual reports summarize evaporation data for the reporting year and compare to long-term statistics.
- Reports include details on the observational network, basic evaporation statistics, data validation processes.
- Network maps and station listings provide details on locations and recorded variables. Statistics include monthly and annual summaries for the current year and historical averages.
- Reports aim to inform users and support planning, while also recognizing data producers and maintaining the climatic observation system.
This document provides operational details for groundwater data processing and analysis in India. It outlines the monitoring networks for water levels, quality, and hydro-meteorology. It describes the geological structures, soil types, typical groundwater issues, and the organizational setup of the responsible groundwater agency. The agency collects various dynamic data through monitoring networks to estimate groundwater resources and inform management recommendations in an annual groundwater yearbook.
The document provides information about a workshop on standards for groundwater monitoring, processing, and data dissemination. It includes the following key points:
1. The workshop aims to review current practices and adopt standard formats, techniques, and procedures for computerized groundwater data acquisition, processing, validation, retrieval and dissemination.
2. Topics to be addressed include computerized techniques, data standards, quality monitoring objectives and procedures, dedicated software demonstrations, and requirements for software.
3. The 3-day workshop program includes sessions on data standards, software discussions, and a visit to an operational digital monitoring network site. Standardizing procedures and using computerization can help establish a reliable hydrological information system.
This document provides guidance on collecting, entering, and validating hydrological data for storage and use in a water resources information system in India. It discusses the mandatory information needed for spatial (e.g. well locations) and temporal (e.g. water level measurements) data. It also describes proper data collection procedures like using field forms, maintaining a data collection register, and entering data directly from field forms to reduce errors. The document emphasizes validation of data at multiple stages and storing data according to standards to ensure long-term usability and reliability of the hydrological information system.
Achievement of new state under hp 2 - himachal pradesh in integrated water ma...hydrologywebsite1
This document provides an overview of the Hydrology Project Phase II being implemented in Himachal Pradesh. Some key points:
1. The project aims to improve hydrological data collection and management in HP to support water resource planning. It has three main components - institutional strengthening, network expansion, and recurrent costs.
2. Activities under the project include expanding the network of rain gauges, piezometers, weather stations; establishing state and divisional data centers; upgrading water quality labs; and conducting purpose-driven studies.
3. Over 650 officials have been trained so far. MoUs have also been signed for data sharing with other agencies. Workshops and study tours have been held to raise awareness about
The Hydrology Project established India's Hydrological Information System by developing networks of hydro-meteorological stations, web-based data management systems, and tools for water resources planning and management. It involved 29 agencies across 13 states and 8 central government organizations. Key achievements include establishing surface and groundwater observation networks, databases for water quality and quantity data, decision support systems for integrated planning, and capacity building for water resource professionals. The project helped shift from isolated development to comprehensive basin-scale planning and management of water resources.
This document provides guidance on how to carry out primary validation of water level data. It discusses validating data from staff gauges, automatic water level recorders, and digital water level recorders by checking for errors and inconsistencies in single time series, and by comparing data between instruments. Methods include examining data graphically and against physical limits, and viewing hydrographs from adjacent stations. The goal is to flag potentially incorrect values for further validation while replacing others with corrected values based on these initial checks.
This document provides guidance on how to report rainfall data in yearly and periodic reports. It outlines the typical contents and structure of annual reports including descriptive summaries of rainfall patterns, comparisons to long-term averages, basic statistics, and descriptions of major storms. Periodic reports produced every 10 years would include long-term statistics updated over the previous decade as well as frequency analysis of rainfall data. The reports aim to inform stakeholders of rainfall patterns and data availability as well as validate and improve the quality of data collection.
This document provides information about a training module on processing stream flow data organized by the Central Training Unit of the Central Water Commission in India. The training is intended for engineers involved in reviewing, analyzing, and processing stream flow data. The document includes details about the module such as its objectives, key concepts, session plan, and evaluation suggestions. It aims to help participants learn how to analyze and process gauge-discharge data, sediment data, water quality data, bed material data, and meteorological data through methods like consistency checks and reliability assessments.
This document discusses quality assurance and within-laboratory analytical quality control programs. It emphasizes the need for quality assurance due to errors found in analytical results. A quality assurance program includes sample control, standard procedures, equipment maintenance, calibration, and analytical quality control. Within-laboratory quality control focuses on precision using statistical control charts to monitor performance over time and identify issues. Regular quality control practices help ensure reliability of laboratory results.
This document summarizes the rationalization of the surface water quality monitoring program under the Hydrology Project in India. It discusses that various agencies were monitoring water quality with different objectives and no coordination, resulting in duplication of efforts. The Hydrology Project aims to design a unified monitoring network and methodology. Key points discussed include:
- Monitoring objectives of establishing baseline quality, observing trends, and calculating pollutant flux.
- Frequency of sampling every 2 months at baseline stations and monthly at trend stations to represent all seasons.
- Parameters to include general, nutrients, organic, and microbiological parameters depending on station type.
- Emphasis on representative sampling and sample collection/transport procedures.
The document discusses two phases of the Central Water Commission's Hydrology Project aimed at establishing a functional hydrological information system and improving institutional capacity in several Indian states. It outlines the objectives, activities, and achievements of each phase, including the development of water monitoring and management software, training programs, and infrastructure improvements at the National Water Academy. The post-project plan and lessons learned from the two phases are also summarized.
This document summarizes the Hydrology Project Phase-II being implemented in Himachal Pradesh. The key points are:
1. The project was approved in 2006 for Rs. 49.50 Crore with an implementation period of 6 years, which was later extended by 23 months.
2. The project aims to strengthen hydrological monitoring networks and institutional capacity in Himachal Pradesh. It includes installation of rain gauges, weather stations, piezometers, labs, and data management systems.
3. As of 2014, most of the planned networks have been installed but some equipment procurement and installations are still ongoing. Data is being collected from most stations and shared with other organizations.
The document provides an overview of training courses for staff involved in managing and operating a Hydrological Information System for water quality in India. It describes various training courses grouped by instrument, software, and hydrological information system function. For each course it provides information on target group, provider, location, duration, objectives, admission requirements, equipment used, and program/syllabus. The training courses cover a wide range of topics from basic water quality concepts and laboratory practices to more specialized courses on pollution parameters, sampling, and training management. The document is intended to help training beneficiaries, managers and providers in planning and implementing staff training programs.
Ch sw water availibility study and supply demand analysis in kharun sub basin...hydrologyproject0
This document describes a water availability study and supply-demand analysis conducted in the Kharun Sub-Basin of Chhattisgarh, India. The study was carried out by the Water Resources Department of Chhattisgarh and the National Institute of Hydrology between 2014-2017. Key aspects of the study included developing a rainfall-runoff model to assess water availability, estimating current and projected water demands, and evaluating measures to meet future water needs in the sub-basin. Field data collection, drought assessment, infiltration modeling, and stakeholder workshops were also part of the multi-faceted study of water resources management in the Kharun Sub-Basin.
This document outlines the stages of surface water data processing under the Hydrological Information System (HIS) in India. It discusses: 1) Receipt of data from field stations and storage of raw records; 2) Data entry at sub-divisional offices; 3) Validation of data through primary, secondary, and hydrological checks; 4) Completion and correction of missing or erroneous data; 5) Compilation, analysis, and reporting of validated data; 6) Transfer of data between processing levels from sub-division to division to state centers. The overall goal is to process field data in a systematic series of steps to produce quality-controlled hydrological information.
This document provides an overview of a Hydrological Information System (HIS) being developed for 9 states in India. It discusses the key components and activities of the HIS, which include: assessing user needs, establishing observation networks, managing historical data, collecting field data, processing and analyzing data, exchanging and reporting data, storing and disseminating data, and developing institutional and human resources. The overall goal of the HIS is to provide reliable hydrological data and information to support long-term water resources planning and management decisions in India.
This document provides guidance on sampling principles for hydrological and hydro-meteorological variables. It discusses key concepts such as units of measurement, basic statistics, measurement error, sampling frequency and spatial sampling. The goal is to design monitoring networks that can estimate important statistical parameters about variables while accounting for various sources of error from sampling. Basic statistical concepts covered include distribution functions, parameters like mean and variance, and how to estimate these from samples along with associated confidence intervals and effects of serial correlation.
This document provides a guide to water quality documents produced by the Hydrology Project in India. It summarizes the key water quality documents, including the HIS Manual Water Quality, Water Quality Training Modules, and additional technical papers. The guide is intended to help users locate relevant water quality information for surface water and groundwater monitoring and analysis.
Mh sw optimisation of g&d stations network of maharashtrahydrologyproject0
This document discusses optimizing the streamgauge and raingauge network for the Upper Bhima Basin in India. It provides background on hydrological information systems and networks in India. The Hydrology Project aims to improve India's capabilities for collecting and analyzing hydrological data. This study was conducted as part of the Hydrology Project to review and optimize the existing hydrometric network in Maharashtra state, which includes streamgauges and raingauges. The goal is to ensure the network is collecting the necessary data to facilitate optimal water resources use and management in the Upper Bhima Basin.
This document provides guidance on reporting discharge data from hydrological monitoring stations. It outlines the contents and purpose of yearly reports, including descriptive summaries of streamflow patterns, basic statistics for selected stations, and comparisons to long-term averages. Periodic long-term reports every 5-10 years are also recommended to analyze trends over longer time periods. The reports aim to inform water resource planning and make hydrological data more accessible and understandable for users.
This document describes procedures for surface water data processing under the Hydrological Information System (HIS) in India. It discusses various stages of data processing including receipt of data, data entry, validation, completion, compilation, analysis, reporting and transfer. It emphasizes the importance of validation to correct errors and identify data reliability. Validation is done at multiple levels - primary, secondary and hydrological. The document also covers organizing temporary databases, transferring data between databases, and backing up databases.
This document provides guidance on reporting climatic data in India. It discusses the purpose and contents of annual reports on climatic data, including evaporation data. Key points covered include:
- Annual reports summarize evaporation data for the reporting year and compare to long-term statistics.
- Reports include details on the observational network, basic evaporation statistics, data validation processes.
- Network maps and station listings provide details on locations and recorded variables. Statistics include monthly and annual summaries for the current year and historical averages.
- Reports aim to inform users and support planning, while also recognizing data producers and maintaining the climatic observation system.
This document provides operational details for groundwater data processing and analysis in India. It outlines the monitoring networks for water levels, quality, and hydro-meteorology. It describes the geological structures, soil types, typical groundwater issues, and the organizational setup of the responsible groundwater agency. The agency collects various dynamic data through monitoring networks to estimate groundwater resources and inform management recommendations in an annual groundwater yearbook.
The document provides information about a workshop on standards for groundwater monitoring, processing, and data dissemination. It includes the following key points:
1. The workshop aims to review current practices and adopt standard formats, techniques, and procedures for computerized groundwater data acquisition, processing, validation, retrieval and dissemination.
2. Topics to be addressed include computerized techniques, data standards, quality monitoring objectives and procedures, dedicated software demonstrations, and requirements for software.
3. The 3-day workshop program includes sessions on data standards, software discussions, and a visit to an operational digital monitoring network site. Standardizing procedures and using computerization can help establish a reliable hydrological information system.
This document provides guidance on collecting, entering, and validating hydrological data for storage and use in a water resources information system in India. It discusses the mandatory information needed for spatial (e.g. well locations) and temporal (e.g. water level measurements) data. It also describes proper data collection procedures like using field forms, maintaining a data collection register, and entering data directly from field forms to reduce errors. The document emphasizes validation of data at multiple stages and storing data according to standards to ensure long-term usability and reliability of the hydrological information system.
Achievement of new state under hp 2 - himachal pradesh in integrated water ma...hydrologywebsite1
This document provides an overview of the Hydrology Project Phase II being implemented in Himachal Pradesh. Some key points:
1. The project aims to improve hydrological data collection and management in HP to support water resource planning. It has three main components - institutional strengthening, network expansion, and recurrent costs.
2. Activities under the project include expanding the network of rain gauges, piezometers, weather stations; establishing state and divisional data centers; upgrading water quality labs; and conducting purpose-driven studies.
3. Over 650 officials have been trained so far. MoUs have also been signed for data sharing with other agencies. Workshops and study tours have been held to raise awareness about
The Hydrology Project established India's Hydrological Information System by developing networks of hydro-meteorological stations, web-based data management systems, and tools for water resources planning and management. It involved 29 agencies across 13 states and 8 central government organizations. Key achievements include establishing surface and groundwater observation networks, databases for water quality and quantity data, decision support systems for integrated planning, and capacity building for water resource professionals. The project helped shift from isolated development to comprehensive basin-scale planning and management of water resources.
This document provides guidance on how to carry out primary validation of water level data. It discusses validating data from staff gauges, automatic water level recorders, and digital water level recorders by checking for errors and inconsistencies in single time series, and by comparing data between instruments. Methods include examining data graphically and against physical limits, and viewing hydrographs from adjacent stations. The goal is to flag potentially incorrect values for further validation while replacing others with corrected values based on these initial checks.
This document provides guidance on how to report rainfall data in yearly and periodic reports. It outlines the typical contents and structure of annual reports including descriptive summaries of rainfall patterns, comparisons to long-term averages, basic statistics, and descriptions of major storms. Periodic reports produced every 10 years would include long-term statistics updated over the previous decade as well as frequency analysis of rainfall data. The reports aim to inform stakeholders of rainfall patterns and data availability as well as validate and improve the quality of data collection.
This document provides information about a training module on processing stream flow data organized by the Central Training Unit of the Central Water Commission in India. The training is intended for engineers involved in reviewing, analyzing, and processing stream flow data. The document includes details about the module such as its objectives, key concepts, session plan, and evaluation suggestions. It aims to help participants learn how to analyze and process gauge-discharge data, sediment data, water quality data, bed material data, and meteorological data through methods like consistency checks and reliability assessments.
This document discusses quality assurance and within-laboratory analytical quality control programs. It emphasizes the need for quality assurance due to errors found in analytical results. A quality assurance program includes sample control, standard procedures, equipment maintenance, calibration, and analytical quality control. Within-laboratory quality control focuses on precision using statistical control charts to monitor performance over time and identify issues. Regular quality control practices help ensure reliability of laboratory results.
This document summarizes the rationalization of the surface water quality monitoring program under the Hydrology Project in India. It discusses that various agencies were monitoring water quality with different objectives and no coordination, resulting in duplication of efforts. The Hydrology Project aims to design a unified monitoring network and methodology. Key points discussed include:
- Monitoring objectives of establishing baseline quality, observing trends, and calculating pollutant flux.
- Frequency of sampling every 2 months at baseline stations and monthly at trend stations to represent all seasons.
- Parameters to include general, nutrients, organic, and microbiological parameters depending on station type.
- Emphasis on representative sampling and sample collection/transport procedures.
The document discusses two phases of the Central Water Commission's Hydrology Project aimed at establishing a functional hydrological information system and improving institutional capacity in several Indian states. It outlines the objectives, activities, and achievements of each phase, including the development of water monitoring and management software, training programs, and infrastructure improvements at the National Water Academy. The post-project plan and lessons learned from the two phases are also summarized.
This document summarizes the Hydrology Project Phase-II being implemented in Himachal Pradesh. The key points are:
1. The project was approved in 2006 for Rs. 49.50 Crore with an implementation period of 6 years, which was later extended by 23 months.
2. The project aims to strengthen hydrological monitoring networks and institutional capacity in Himachal Pradesh. It includes installation of rain gauges, weather stations, piezometers, labs, and data management systems.
3. As of 2014, most of the planned networks have been installed but some equipment procurement and installations are still ongoing. Data is being collected from most stations and shared with other organizations.
The document provides an overview of training courses for staff involved in managing and operating a Hydrological Information System for water quality in India. It describes various training courses grouped by instrument, software, and hydrological information system function. For each course it provides information on target group, provider, location, duration, objectives, admission requirements, equipment used, and program/syllabus. The training courses cover a wide range of topics from basic water quality concepts and laboratory practices to more specialized courses on pollution parameters, sampling, and training management. The document is intended to help training beneficiaries, managers and providers in planning and implementing staff training programs.
Ch sw water availibility study and supply demand analysis in kharun sub basin...hydrologyproject0
This document describes a water availability study and supply-demand analysis conducted in the Kharun Sub-Basin of Chhattisgarh, India. The study was carried out by the Water Resources Department of Chhattisgarh and the National Institute of Hydrology between 2014-2017. Key aspects of the study included developing a rainfall-runoff model to assess water availability, estimating current and projected water demands, and evaluating measures to meet future water needs in the sub-basin. Field data collection, drought assessment, infiltration modeling, and stakeholder workshops were also part of the multi-faceted study of water resources management in the Kharun Sub-Basin.
Gw02 role of dwlr data in groundwater resource estimationhydrologyproject0
This document discusses the role of data from Deep Well Logging Recorders (DWLRs) in estimating groundwater resources. DWLRs provide high-frequency water level data that can help understand recharge processes and parameters. Their data allows identifying accurate peaks and troughs in the water table to define optimal periods for water balance studies estimating specific yield and rainfall recharge. DWLR hydrographs also aid in determining rainfall amounts needed to initiate recharge, lag times between rainfall and recharge, effective rainfall events, and periods of evapotranspiration loss - all improving the accuracy of water balance assessments and groundwater resource estimation.
This document provides guidance on transferring data from temporary to permanent databases under India's Hydrological Information System (HIS). It outlines how raw and processed data stored in temporary databases at State and Regional Data Processing Centers (SDPCs/RDPCs) should be regularly exported and transferred to the respective State and Regional Data Storage Centers (SDSCs/RDSCs) for long-term archival. The document discusses file naming conventions, export procedures from SWDES workareas, and import of the transferred data into the permanent databases once the dedicated data storage software is fully implemented.
This document provides an overview of statistical procedures commonly used to evaluate analytical data precision and accuracy. It discusses confidence intervals and how to calculate them based on population standard deviation, sample size, and confidence level. Rejection of outlier data and regression analysis for calibration curves are also covered. Examples are provided to illustrate calculation of confidence intervals for single measurements and sample means, as well as outlier detection criteria.
The document provides expenditure status updates for central and state implementing agencies under India's Hydrology Project Phase II. It shows the total allocation, expenditure to date, and planned future expenditures for each agency. Most agencies have spent 50-80% of their allocated funds so far, with a few over or under that range. The overall project expenditure is projected to reach 94,102.949 crore rupees, leaving an estimated unutilized amount of 10,877.051 crore rupees.
This document provides guidance on field inspections, maintenance, and calibration for hydro-meteorological stations. It describes procedures for inspecting rain gauges, full climatic stations, and checking instrument exposure and observer training. Routine maintenance tasks are outlined for rain gauges, wind instruments, thermometers, evaporimeters, and other equipment. Spare part requirements are listed. Proper maintenance is important to ensure high quality comparable data from the field stations.
Here are the steps to calculate the solubility of CaF2 in distilled water:
- CaF2 ⇔ Ca2+ + 2F-
- Ksp for CaF2 = 4 × 10-11
- Let 'x' be the molar solubility of CaF2
- Then, [Ca2+] = [F-] = x
- By definition of Ksp, Ksp = [Ca2+][F-]2
- Substituting values: Ksp = (x)(x)2 = x3
- Equating both sides: x3 = 4 × 10-11
- Taking cube root on both sides: x = 2 × 10-4 mol
This document provides an overview of redox equilibria and stability field diagrams. It discusses galvanic cells, standard electrode potentials, the Nernst equation, and how to calculate cell potentials and equilibrium constants. Stability field diagrams relate redox potential (Eh), pH, and the predominant chemical species in aquatic systems. They allow visualization of the stability fields for different chemical species as a function of Eh and pH.
Nih sw impact of sewage effluent of drinking water sources of shimla city and...hydrologyproject0
This document provides an introduction and background on a study conducted to assess the impact of sewage effluent on drinking water sources in Shimla City, India. A mass jaundice outbreak in 2006-07 prompted the study. Water quality monitoring of groundwater, surface water, and treated water from water treatment plants and sewage treatment plants was conducted. Analysis found groundwater to be contaminated with sewage in some locations. Sewage treatment plant effluent and open drain samples had high levels of organics exceeding standards. The study analyzed basin characteristics and the sewerage network to investigate interactions. Recommendations were made to minimize pollutant ingress at water sources supplying affected areas.
The document is a lesson plan on basic programming concepts that:
1) Defines a program as a series of organized instructions that direct a computer to perform tasks, and defines a programming language as a set of words, symbols, and codes that allows humans to communicate with computers.
2) Discusses five generations of programming languages from first to fifth generation and provides examples such as BASIC, Pascal, C, and Smalltalk.
3) Compares structured programming and object-oriented programming, noting that structured programming uses a top-down design model while object-oriented programming combines data and functions into objects.
BASIC is a family of high-level programming languages that was originally developed in the 1960s. It was designed to be easy to learn and use, especially for non-technical users. Some key features of early BASIC dialects included simple English-like commands, loops, user-defined functions, and built-in math and string functions. While criticized for potentially encouraging poor programming practices, BASIC was highly successful due to its ease of use and ability to run on many different systems. It evolved significantly over time with improved structured programming features and was adapted for personal computers and later graphical user interfaces.
This document describes procedures for surface water data processing under the Hydrological Information System (HIS) in India. It discusses various stages of data processing including receipt of data, data entry, validation, completion, compilation, analysis, reporting and transfer. It emphasizes the importance of validation to correct errors and identify data reliability. Validation is done at multiple levels - primary, secondary and hydrological. The document also covers organizing temporary databases, transferring data between databases, and backing up databases.
This document describes procedures for surface water data processing under the Hydrological Information System (HIS) in India. It discusses various stages of data processing including receipt of data, data entry, validation, completion, compilation, analysis, reporting and transfer. It emphasizes the importance of validation to correct errors and identify data reliability. Validation is carried out at multiple levels, from primary validation during data entry to secondary and hydrological validation. The document also covers organizing temporary databases, transferring data between databases, and backing up databases.
This document describes the design of a hydrological data storage and dissemination system. It discusses the major components of the system including databases to store different types of hydrological data (e.g. field data, processed data, maps), a catalogue to allow users to search and access data, and interfaces to allow external organizations and users to input and retrieve data. It provides specifications for hardware, software, security, and other technical aspects required to build the hydrological information system. The overall aim is to create a centralized, standardized system for permanently storing all types of hydrological data from various agencies and making it accessible to authorized users.
The document discusses the achievements and objectives of India's Hydrology Project Phases I, II, and III.
Phase I (1995-2003) established hydrological monitoring networks across 9 states. Phase II (2006-2014) expanded these networks to 13 states and strengthened data collection, management, and decision support systems.
Phase III aims to establish integrated water resources management across all Indian states and UTs. It will upgrade groundwater and meteorological monitoring, develop spatiotemporal data and tools to support planning, and strengthen institutions for capacity building. The workshop discussed opportunities for cross-learning and identifying appropriate technologies.
This document provides a final report on the Hydrology Project conducted from 2003 in India with technical assistance from organizations in the Netherlands and India. It summarizes the objectives of establishing a comprehensive Hydrological Information System across various agencies, the activities of the technical assistance provided, and achievements of the project. Key points:
- The project aimed to improve institutional capabilities for hydrological data measurement, collection, analysis and dissemination through a distributed hydrological information system.
- Technical assistance provided support in areas such as assessing user needs, establishing observation networks, data collection/processing, institutional development and training.
- A phased implementation approach was used, starting with planning and standardization before implementation and consolidation of the hydrological information
1 - MoWR - Overview of HP-III Workshop-15th Sep 2014indiawrm
This document summarizes the key achievements and objectives of the Hydrology Project in India across its three phases. The project aims to develop a standardized national water resources monitoring and information system to improve water resources planning and management. Key achievements of phase II included upgrading monitoring networks, developing web-based data management and tools for planning, and conducting studies on groundwater management and water quality issues. Phase III will further develop these systems nationwide and introduce tools for flood forecasting, reservoir operation, and assessing climate change impacts. The ultimate goal is to establish a permanent water resources information coordination center.
This document provides information on a training module for understanding hydrological information system (HIS) concepts and setup. It includes an introduction to HIS, why they are needed, how they are set up under the Hydrology Project. It also discusses who the key users of hydrological data are and how computers are used in hydrological data processing. The training module contains session plans, presentations, handouts, and text to educate participants on HIS objectives, components, and how they provide reliable hydrological data to various end users.
This document provides information on setting up a Hydrological Information System (HIS) for India. It includes details on:
1. Defining key concepts of a HIS, including that it is a system to collect, process, and disseminate hydrological data to provide useful information to users.
2. The need for a standardized HIS in India to better plan for water resources given the variability of water patterns and inadequacies of existing systems.
3. The Hydrology Project aims to improve existing HIS across 8 Indian states to provide more reliable hydrological data for planning and management.
1. The document outlines the National Water Policy of India which establishes the need for a standardized national hydrological information system to collect, process, and disseminate reliable water resources data.
2. Key goals of the policy include maximizing water availability, integrating surface and groundwater management, preserving environmental and ecological balances, and involving stakeholders in water management.
3. The hydrological information system described in the document is intended to provide the hydrological data and analysis needed to inform planning, design, management, and policy decisions around India's water resources in accordance with the National Water Policy.
1. The document describes India's Hydrological Information System (HIS) which collects, processes, stores and disseminates hydrological data.
2. The HIS aims to provide reliable data to support long-term water resources planning and management by establishing observation networks, managing historical data, collecting and processing data, and storing and disseminating it to users.
3. Key activities of the HIS include assessing user needs, establishing and maintaining observation networks, managing historical data, collecting field data, processing and analyzing data, exchanging and reporting data, and storing and disseminating data to support water planning in India.
This document provides guidance on reporting climatic data in India. It discusses the purpose and contents of annual reports on climatic data, including evaporation data. Key points covered include:
- Annual reports summarize evaporation data for the reporting year and compare to long-term statistics.
- Reports include details on the observational network, basic evaporation statistics, data validation processes.
- Network maps and station listings provide details of monitoring locations. Statistics include monthly and annual evaporation amounts for the current year and historical averages.
- Reports aim to inform water resource planning, acknowledge data collection efforts, and provide access to climatic data records.
This document provides guidelines for generating spatial datasets for a hydrology project in India. It outlines 13 themes that will be mapped, including land use, soils, geology, geomorphology, administrative boundaries, hydrologic units, settlements, transportation, drainage, and contours. Standards are provided for mapping scale, projection, accuracy, and database organization. Spatial data will be generated through interpretation of satellite imagery and digitization of existing paper maps. Resulting data will be integrated into surface and groundwater data centers in participating states.
This document discusses next steps after the completion of the Hydrology Project (HP) in India. It summarizes the gains from HP, including establishing an integrated hydrological monitoring network across agencies. Lessons learned include the need for clear expectations and benefits, improved management and implementation approaches, and addressing staffing and training issues. The document proposes expanding HP horizontally to other states and consolidating achievements in states already covered. It also suggests expanding vertically to enable real-time water data use, drought management, and an integrated water resources management system. Institutional reforms are recommended to establish river basin organizations for improved water governance.
This document provides guidance on using regression analysis for data validation in hydrological data processing. It discusses simple linear regression, multiple linear regression, and stepwise regression. Regression analysis can be used to validate and fill in missing water level, rainfall, and discharge data. It establishes relationships between dependent and independent variables. Both linear and nonlinear regression models are used in hydrological applications. Key applications mentioned include rating curves, spatial interpolation of rainfall, and validating station data against nearby stations.
This document provides guidance on using regression analysis for data validation in hydrological data processing. It discusses simple linear regression, multiple linear regression, and stepwise regression. Regression analysis can be used to validate and fill in missing water level, rainfall, and discharge data. It establishes relationships between dependent and independent variables. Both linear and nonlinear regression models are used in hydrological applications. Key applications mentioned include rating curves, spatial interpolation of rainfall, and validating station data against nearby stations.
This document provides guidance on using regression analysis for data validation in hydrological data processing. It discusses simple linear regression, multiple linear regression, and stepwise regression. Regression analysis can be used to validate and fill in missing water level, rainfall, and discharge data. It establishes relationships between dependent and independent variables. Both linear and nonlinear regression models are used in hydrological applications. Key applications mentioned include rating curves, spatial interpolation of rainfall, and validating station data against nearby stations.
The Hydrology Project has been running in India since 1995 and has significantly improved the availability and reliability of hydro-meteorological data in the country. It has established networks for instrumenting, processing, and applying hydrological data across nine states and six central agencies. The project focuses on building blocks like instrumentation, data processing, dissemination and specific applications like river basin planning tools, flood management tools, and studies. While the project has achieved a lot, further development is still needed to ensure sufficient high quality data for optimal water resources management in India according to the National Water Policy.
A FOSS based web geo-service architecture for data management in complex wate...Carolina Arias Muñoz
11th International Conference on Hydroinformatics
HIC 2014, New York City, USA
http://academicworks.cuny.edu/cc_conf_hic/
S9-01: Special Session: Information Exchange – Standard
Data Protocols within the Global Earth System of Systems
Geospatial data & Web Portals for IWRM:-NRSC Perspective By Dr. J.R. Sharmaindiawrm
This document discusses geospatial data and web portals for integrated water resource management. It introduces Bhuvan, a web portal developed by ISRO to provide Indian earth observation data and services. Bhuvan allows users to explore virtual 2D and 3D models of Earth with value-added capabilities. It has high resolution multi-sensor data, thematic information, weather data, ocean services, and tools for visualization, data download, and crowdsourcing. The document also discusses the India-WRIS portal, which provides a single-window solution for water resource data and information in India to support integrated water resource management. It describes the extensive hydrological and other datasets incorporated in a standardized GIS framework, as well as the
The World Bank conducted a final supervision and completion mission for the Hydrology Project in Andhra Pradesh from May 7-8, 2014. The project aimed to strengthen surface water data collection networks and build institutional capacity for hydrological data management and use. Key achievements included establishing 25 additional data collection stations, procuring IT equipment, developing a project website, and providing training. Expenditures totaled Rs. 4.13 crore against the revised project cost of Rs. 8.92 crore. Moving forward, the document discusses continuing project activities in Andhra Pradesh and potential areas of focus for a phase III of the Hydrology Project.
The document summarizes a water purification system that includes a reverse osmosis unit, storage tank, and ultrapure water purification unit. The system uses a microprocessor to control purification from a municipal water supply to produce at least 35 liters/hour of water with a resistivity of 18 megohm cm or higher that is at least 99% free of bacteria, ions, organics, and particles. The system is also capable of continuous monitoring and will automatically shut off if the feed water is inadequate or the storage tank reaches capacity.
The document describes a water purifier using ion exchange resin columns that produces reagent-grade water for trace analysis. It has separate cation and anion exchange columns with a capacity of 25 liters each and can purify water at a rate over 1 liter per minute. Accessories include spare columns, instructions, a cover, and vacuum hose. Key features are an inline conductivity monitor and the ability to regenerate the resin columns.
This document provides specifications for a double distillation water purification unit. It distills water to a conductivity of 1.0 μS/cm or less at 25°C for generating reagent-grade water. The unit is made of quartz glass with a 1.5 liter/hour capacity. It runs on 220V power and includes a metallic stand, ring clamp, and operation manual. Safety features include over-heating protection and indicators.
This document provides specifications for an automatic water distillation unit. The unit distills water to generate reagent water type III with a maximum conductivity of 0.01 mS/cm at 25°C for use in washing and quantitative analysis. It has a stainless steel construction, 1.5 liter per hour capacity, operates on 220VAC power, and has automatic shutoff when water levels are low.
This document specifies a water geyser (heater) that has a 120 liter capacity, heats water to 90°C with thermostatic control, and requires a 220 VAC ±25%, 47 to 53 Hz power supply for operation in a laboratory setting.
A general purpose water bath has an inner size of approximately 0.4 x 0.3 x 0.1 meters, is made of stainless steel inside and stove enameled outside, and can maintain temperatures from ambient to 100°C with an accuracy of ±2°C. It has a stainless steel cover with 12 holes and features a drain cock or plug, double-walled insulation, and a pilot lamp to indicate thermostat operation.
This document describes the specifications of a water bath used for incubating culture tubes in coliform analysis. The water bath has an inner size of approximately 0.4 x 0.3 x 0.15 meters, is made of stainless steel inside and stove enameled outside, and can maintain temperatures from ambient to 50°C with an accuracy of ±0.1°C. It has a double wall for insulation, a dome lid to hold test tubes vertically, and displays the internal water temperature.
The document specifies the requirements for a wash bottle used to flush glassware. The wash bottle must be made of polythene, hold 500 ml of liquid, and have a bent nozzle and screw cap. It was last reviewed on October 23, 2007 and is used to wash away any sticking sediment from glassware.
The document specifies volumetric flasks that will be used for sediment analyses in a laboratory. The flasks must comply with IS 915-1975, be made of Corning glass or similar material, and come in sizes of 50, 100, 250, and 500 ml with B class accuracy.
The visual accumulation tube is used to assess particle sizes of sediments. It consists of a vertical transparent settling tube through which sediment samples are passed. Particles settle individually based on terminal velocity related to diameter, and accumulated sediment volume in the tube's narrow end relates to solid weight. It is best for uniform, spherical particles. The analysis involves introducing a small sample and recording accumulated sediment height over time.
This document provides specifications for a vacuum pump for general laboratory use. The pump is a single stage pump with a capacity of 50 l/min, capable of reaching a final vacuum of 0.05 mm Hg without ballast or 2 mm Hg with ballast. It has a 200W motor that operates on 220VAC at 47-53 Hz. Accessories include a filter, regulator, gauge, hose, and valve. The pump is designed for noise free operation.
This document provides specifications for a turbidity meter used to directly measure suspended matter in water samples. The turbidity meter has a range of 0 to 1000 NTU in at least 2 ranges, an accuracy of ±2% full scale deflection, and requires a power supply of 220 VAC ±25%, 47 to 53 Hz. Accessories for the turbidity meter include an ambient light shield, 6 spare tubes, a sensor stand, voltage stabilizer, instruction manual, and dust cover.
This tool kit contains basic tools for minor repairs of electrical laboratory equipment, including a set of screwdrivers, pliers, soldering iron, and multi-meter. The tools come in a lockable storage box for organization and security.
The document specifies the requirements for a microprocessor-controlled TOC analyzer. It must be able to directly measure total carbon, total organic carbon, and purgeable organic carbon in water samples. It uses high temperature catalytic combustion up to 900°C and non-dispersive infrared detection. It must have a measuring range of 1-500 mg/L carbon, precision within 3%, and detection limit of at least 500 ppb carbon. The analyzer and auto-sampler require 240V 50Hz power and it uses nitrogen or high purity air as carrier gases. It includes an auto-sampler, syringes, printer, manuals, spare parts, and application software in English.
This document provides specifications for a tissue grinder used to prepare tissue or sediment samples. The grinder must be able to macerate glass fibre filters and is a manual, porcelain device used to homogenize samples for further analysis such as chemical extraction.
This document specifies a set of thermometers for laboratory use, including mercury-filled glass thermometers with three temperature ranges (0-80oC, 10-150oC, 20-250oC) and an accuracy of ±0.5oC, along with a storage box for the thermometers.
This document specifies test tubes for laboratory use in sediment analysis. It outlines that the test tubes should be made of Corning glass or similar material, and lists two standard sizes - 15 x 125 mm and 25 x 200 mm in diameter and height. The test tubes are intended for general use in analyzing sediments in the laboratory.
The document specifies requirements for test sieves with a shaker. It requires stainless steel sieves that are 200mm in diameter, 50mm in height, and have nominal aperture sizes between 63-250 micrometers. It also requires a shaker capable of holding at least 5 sieves that runs on 220V power. Accessories include a sieve brush and wash bottle. Some sieves can be used manually without the shaker.
This document provides specifications for a magnetic stirrer with a hot plate. It can rotate between 0-1200 rpm and heat with a 300 Watt thermostatically controlled element. The stirrer has a stainless steel top and comes with PTFE coated magnets ranging from 10-50mm in 5mm increments, with two of each size included as accessories.
This document provides specifications for a sterilizer autoclave. The autoclave is 0.3 x 0.5 meters in size, made of stainless steel inside and lid with an enameled outside. It operates at a working pressure of 1 bar with a maximum pressure of 1.5 bars. Accessories include a pressure gauge, steam release cock, safety valve, perforated aluminum basket, water level indicator, and lifting arrangement. The autoclave is powered by 220 VAC at 47-53 Hz and uses approximately 2500 Watts.
Generating privacy-protected synthetic data using Secludy and MilvusZilliz
During this demo, the founders of Secludy will demonstrate how their system utilizes Milvus to store and manipulate embeddings for generating privacy-protected synthetic data. Their approach not only maintains the confidentiality of the original data but also enhances the utility and scalability of LLMs under privacy constraints. Attendees, including machine learning engineers, data scientists, and data managers, will witness first-hand how Secludy's integration with Milvus empowers organizations to harness the power of LLMs securely and efficiently.
5th LF Energy Power Grid Model Meet-up SlidesDanBrown980551
5th Power Grid Model Meet-up
It is with great pleasure that we extend to you an invitation to the 5th Power Grid Model Meet-up, scheduled for 6th June 2024. This event will adopt a hybrid format, allowing participants to join us either through an online Mircosoft Teams session or in person at TU/e located at Den Dolech 2, Eindhoven, Netherlands. The meet-up will be hosted by Eindhoven University of Technology (TU/e), a research university specializing in engineering science & technology.
Power Grid Model
The global energy transition is placing new and unprecedented demands on Distribution System Operators (DSOs). Alongside upgrades to grid capacity, processes such as digitization, capacity optimization, and congestion management are becoming vital for delivering reliable services.
Power Grid Model is an open source project from Linux Foundation Energy and provides a calculation engine that is increasingly essential for DSOs. It offers a standards-based foundation enabling real-time power systems analysis, simulations of electrical power grids, and sophisticated what-if analysis. In addition, it enables in-depth studies and analysis of the electrical power grid’s behavior and performance. This comprehensive model incorporates essential factors such as power generation capacity, electrical losses, voltage levels, power flows, and system stability.
Power Grid Model is currently being applied in a wide variety of use cases, including grid planning, expansion, reliability, and congestion studies. It can also help in analyzing the impact of renewable energy integration, assessing the effects of disturbances or faults, and developing strategies for grid control and optimization.
What to expect
For the upcoming meetup we are organizing, we have an exciting lineup of activities planned:
-Insightful presentations covering two practical applications of the Power Grid Model.
-An update on the latest advancements in Power Grid -Model technology during the first and second quarters of 2024.
-An interactive brainstorming session to discuss and propose new feature requests.
-An opportunity to connect with fellow Power Grid Model enthusiasts and users.
Driving Business Innovation: Latest Generative AI Advancements & Success StorySafe Software
Are you ready to revolutionize how you handle data? Join us for a webinar where we’ll bring you up to speed with the latest advancements in Generative AI technology and discover how leveraging FME with tools from giants like Google Gemini, Amazon, and Microsoft OpenAI can supercharge your workflow efficiency.
During the hour, we’ll take you through:
Guest Speaker Segment with Hannah Barrington: Dive into the world of dynamic real estate marketing with Hannah, the Marketing Manager at Workspace Group. Hear firsthand how their team generates engaging descriptions for thousands of office units by integrating diverse data sources—from PDF floorplans to web pages—using FME transformers, like OpenAIVisionConnector and AnthropicVisionConnector. This use case will show you how GenAI can streamline content creation for marketing across the board.
Ollama Use Case: Learn how Scenario Specialist Dmitri Bagh has utilized Ollama within FME to input data, create custom models, and enhance security protocols. This segment will include demos to illustrate the full capabilities of FME in AI-driven processes.
Custom AI Models: Discover how to leverage FME to build personalized AI models using your data. Whether it’s populating a model with local data for added security or integrating public AI tools, find out how FME facilitates a versatile and secure approach to AI.
We’ll wrap up with a live Q&A session where you can engage with our experts on your specific use cases, and learn more about optimizing your data workflows with AI.
This webinar is ideal for professionals seeking to harness the power of AI within their data management systems while ensuring high levels of customization and security. Whether you're a novice or an expert, gain actionable insights and strategies to elevate your data processes. Join us to see how FME and AI can revolutionize how you work with data!
Ivanti’s Patch Tuesday breakdown goes beyond patching your applications and brings you the intelligence and guidance needed to prioritize where to focus your attention first. Catch early analysis on our Ivanti blog, then join industry expert Chris Goettl for the Patch Tuesday Webinar Event. There we’ll do a deep dive into each of the bulletins and give guidance on the risks associated with the newly-identified vulnerabilities.
Main news related to the CCS TSI 2023 (2023/1695)Jakub Marek
An English 🇬🇧 translation of a presentation to the speech I gave about the main changes brought by CCS TSI 2023 at the biggest Czech conference on Communications and signalling systems on Railways, which was held in Clarion Hotel Olomouc from 7th to 9th November 2023 (konferenceszt.cz). Attended by around 500 participants and 200 on-line followers.
The original Czech 🇨🇿 version of the presentation can be found here: https://www.slideshare.net/slideshow/hlavni-novinky-souvisejici-s-ccs-tsi-2023-2023-1695/269688092 .
The videorecording (in Czech) from the presentation is available here: https://youtu.be/WzjJWm4IyPk?si=SImb06tuXGb30BEH .
Dandelion Hashtable: beyond billion requests per second on a commodity serverAntonios Katsarakis
This slide deck presents DLHT, a concurrent in-memory hashtable. Despite efforts to optimize hashtables, that go as far as sacrificing core functionality, state-of-the-art designs still incur multiple memory accesses per request and block request processing in three cases. First, most hashtables block while waiting for data to be retrieved from memory. Second, open-addressing designs, which represent the current state-of-the-art, either cannot free index slots on deletes or must block all requests to do so. Third, index resizes block every request until all objects are copied to the new index. Defying folklore wisdom, DLHT forgoes open-addressing and adopts a fully-featured and memory-aware closed-addressing design based on bounded cache-line-chaining. This design offers lock-free index operations and deletes that free slots instantly, (2) completes most requests with a single memory access, (3) utilizes software prefetching to hide memory latencies, and (4) employs a novel non-blocking and parallel resizing. In a commodity server and a memory-resident workload, DLHT surpasses 1.6B requests per second and provides 3.5x (12x) the throughput of the state-of-the-art closed-addressing (open-addressing) resizable hashtable on Gets (Deletes).
Connector Corner: Seamlessly power UiPath Apps, GenAI with prebuilt connectorsDianaGray10
Join us to learn how UiPath Apps can directly and easily interact with prebuilt connectors via Integration Service--including Salesforce, ServiceNow, Open GenAI, and more.
The best part is you can achieve this without building a custom workflow! Say goodbye to the hassle of using separate automations to call APIs. By seamlessly integrating within App Studio, you can now easily streamline your workflow, while gaining direct access to our Connector Catalog of popular applications.
We’ll discuss and demo the benefits of UiPath Apps and connectors including:
Creating a compelling user experience for any software, without the limitations of APIs.
Accelerating the app creation process, saving time and effort
Enjoying high-performance CRUD (create, read, update, delete) operations, for
seamless data management.
Speakers:
Russell Alfeche, Technology Leader, RPA at qBotic and UiPath MVP
Charlie Greenberg, host
Programming Foundation Models with DSPy - Meetup SlidesZilliz
Prompting language models is hard, while programming language models is easy. In this talk, I will discuss the state-of-the-art framework DSPy for programming foundation models with its powerful optimizers and runtime constraint system.
"Choosing proper type of scaling", Olena SyrotaFwdays
Imagine an IoT processing system that is already quite mature and production-ready and for which client coverage is growing and scaling and performance aspects are life and death questions. The system has Redis, MongoDB, and stream processing based on ksqldb. In this talk, firstly, we will analyze scaling approaches and then select the proper ones for our system.
How information systems are built or acquired puts information, which is what they should be about, in a secondary place. Our language adapted accordingly, and we no longer talk about information systems but applications. Applications evolved in a way to break data into diverse fragments, tightly coupled with applications and expensive to integrate. The result is technical debt, which is re-paid by taking even bigger "loans", resulting in an ever-increasing technical debt. Software engineering and procurement practices work in sync with market forces to maintain this trend. This talk demonstrates how natural this situation is. The question is: can something be done to reverse the trend?
How to Interpret Trends in the Kalyan Rajdhani Mix Chart.pdfChart Kalyan
A Mix Chart displays historical data of numbers in a graphical or tabular form. The Kalyan Rajdhani Mix Chart specifically shows the results of a sequence of numbers over different periods.
Fueling AI with Great Data with Airbyte WebinarZilliz
This talk will focus on how to collect data from a variety of sources, leveraging this data for RAG and other GenAI use cases, and finally charting your course to productionalization.
9 CEO's who hit $100m ARR Share Their Top Growth Tactics Nathan Latka, Founde...
Final gw handbook 180514
1. HP IIIndian Hydrology Project
Technical Assistance
(Implementation Support) and
Management Consultancy
Groundwater Handbook:
Groundwater Level
May 2014
2. Hydrological Information System May 2014
HP II
Last Updated: 19/05/2014 05:01
Filename: GW Handbook.docx
Groundwater Handbook: Groundwater Level
Issue and Revision Record
Revision Date Originator Checker Approver Description
0 21/05/14 Helen Houghton-Carr Version for approval
1
2
3
3. Hydrological Information System May 2014
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Last Updated: 19/05/2014 05:01
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Page i
Contents
Contents i
Glossary iii
1. Introduction
1.1 HIS Manual
1.2 Other HPI documentation
1
2
3
2. The Data Management Lifecycle in HPII 5
2.1 Use of hydrogeological information in policy and decision-
making
2.2 Hydrogeological monitoring network design and
development
2.3 Data sensing and recording
2.4 Data validation and archival storage
2.5 Data synthesis and analysis
2.6 Data dissemination and publication
2.7 Real-time data
5
6
6
7
7
8
9
3. Groundwater Monitoring Stations and Data 10
3.1 Types of groundwater quantity monitoring station
3.2 Groundwater monitoring networks
3.3 Site inspections, audits and maintenance
3.4 Data sensing and recording
3.5 Data processing
10
12
13
14
15
4. Groundwater Level Data Processing and Analysis 17
4.1 Data entry
4.2 Primary validation
4.3 Secondary validation
4.4 Analysis
17
18
19
21
5. Rainfall Data Processing and Analysis 28
5.1 Rainfall in the Hydrology Project 28
6. Data Dissemination and Publication 29
6.1 Hydrogeological products
6.2 Annual reports
6.3 Periodic reports
6.4 Special reports
6.5 Dissemination to hydrological data users
29
29
31
31
31
References 32
Annex I States and agencies participating in the Hydrology Project 33
Annex II Summary of distribution of hard copy of HPI HIS Manual
Groundwater
34
4. Hydrological Information System May 2014
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Filename: GW Handbook.docx
Page ii
List of figures
1.1 Hydrometric information lifecycle 1
4.1 Examples of secondary validation techniques 21
4.2 Contour map modified to account for a river 22
4.3 Contour map showing influence of suspect data 23
List of tables
1.1 HPI groundwater training modules 4
2.1 Groundwater data processing timetable for data for month n 8
3.1 Where to go in the HIS Manuals GW and SW for groundwater
data management guidance: groundwater level and
rainfall 11
4.1 Measurement errors for groundwater level data 22
5. Hydrological Information System May 2014
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Page iii
Glossary
ADCP Acoustic Doppler Current Profiler
ARG Autographic Rain Gauge
AWS Automatic Weather Station
BBMB Bhakra-Beas Management Board
CGWB Central Ground Water Board
CPCB Central Pollution Control Board
CGWB Central Water Commission
CWPRS Central Water and Power Research Station
Div Division
DPC Data Processing Centre
DSC Data Storage Centre
DWLR Digital Water Level Recorder
e-GEMS Web-based Groundwater Estimation and Management System
(HPII)
eHYMOS Web-based Hydrological Modelling System (HPII)
eSWDES Web-based Surface water Date Entry System in e-SWIS (HPII)
e-SWIS Web-based Surface water Information System (HPII)
FCS Full Climate Station
GEMS Groundwater Estimation and Management System (HPI)
GW Groundwater
GWDES Ground Water Data Entry System (HPI)
GWIS Groundwater Information System (GPI)
HDUG Hydrological Data User Group
HIS Hydrological Information System
HP Hydrology project (HPI Phase I, HPII Phase II)
HYMOS Hydrological Modelling System (HPI)
IMD India Meteorological Department
Lab Laboratory
MoWR Ministry of Water Resources
NIH National Institute of Hydrology
SRG Standard Rain Gauge
Stat Station
Sub-Div Sub-Division
SW Surface water
SWDES Surface water Data Entry System (HPI)
TBR Tipping Bucket Raingauge
ToR Terms of Reference
WISDOM Water Information System Data Online Management (HPI)
WQ Water Quality
7. Hydrological Information System May 2014
HP II
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Filename: GW Handbook.docx
Page 1
1. Introduction
This Hydrology Project Phase II (HPII) Handbook provides guidance for the management of
groundwater data. The data are managed within a Hydrological Information System (HIS) that
provides information on the spatial and temporal characteristics of the quantity and quality of
surface water and groundwater. The information is tuned to the requirements of the policy makers,
designers and researchers to provide evidence to inform decisions on long-term planning, design
and management of water resources and water use systems, and for related research activities.
The Indian States and Central Agencies participating in the Hydrology Project are listed in Annex I.
However, this Handbook is also relevant to non-HP States.
It is important to recognise that there are two separate issues involved in managing groundwater
information. The first issue covers the general principles of understanding monitoring networks, of
collecting, validating and archiving data, and of analysing, disseminating and publishing data. The
second covers how to actually do these activities using the database systems and software
available. Whilst these two issues are undeniably linked, it is the first – the general principles of
data management - that is the primary concern. This is because improved data management
practices will serve to raise the profile of Central/State hydrometric agencies in government and in
the user community, highlight the importance of groundwater data for the design of water-related
schemes and for water resource planning and management, and motivate staff, both those
collecting the data and those in data centres.
This Handbook aims to help HIS users locate and understand documents relevant to groundwater
in the library available through the Manuals page on the Hydrology Project website. The
Handbook is a companion to the HIS Manuals. The Handbook makes reference to the six stages
in the hydrometric information lifecycle (Figure 1.1), in which the different processes of data
sensing, manipulation and use are stages in the development and flow of information. The cycle
and associated HIS protocols are explored more fully in Section 2. Subsequent sections cover
different stages of the cycle for different groundwater variables.
Figure 1.1 Hydrometric information lifecycle (after: Marsh, 2002)
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1.1 HIS Manual
The primary reference source is the HIS Manual Groundwater (GW), one of many hundreds of
documents generated during Hydrology Project Phase I (HPI) to assist staff working in observation
networks, laboratories, data processing centres and data communication systems to collect, store,
process and disseminate hydrometric data and related information. During HPI, special attention
was paid to the standardisation of procedures for the observation of variables and the validation of
information, so that it was of acceptable quality and compatible between different agencies and
States, and to facilities for the proper storage, archival and dissemination of data for the system, so
that it was sustainable in the long-term. Therefore, the majority of the documents produced under
HPI, particularly those relating to fundamental principles, remain valid through and beyond HPII.
Some parts of the guides, manuals and training material relating to HPI software systems
(SWDES, HYMOS, WISDOM, GWDES, GEMS, GWIS) have been partially or wholly superseded
as replacement Phase II systems (e-GEMS, e-SWIS) become active.
The HIS Manual GW describes the procedures to be used to arrive at a sound operation of the HIS
in regard to groundwater quantity data. The HIS Manual GW consists of 10 volumes. Each
volume contains one or more of the following manuals, depending on the topic:
• Design Manual (DM) - procedures for the design activities to be carried out for the
implementation and further development of the HIS.
• Field Manual (FM) or Operation Manual (OM) – detailed instructions describing the activities to
be carried out in the field (station operation, maintenance and calibration), at the laboratory
(analysis), and at the Data Processing Centres (data entry, validation, processing,
dissemination, etc). Each Field/Operation Manual is divided into a number of parts, where
each part describes a distinct activity at a particular field station, laboratory or data processing
centre.
• Reference Manual (RM) - additional or background information on topics dealt with or
deliberately omitted in the Design, Field and Operation Manuals.
Those HIS Manual GW volumes relevant to groundwater level are:
GW Volume 1: Hydrological Information System: a general introduction to the HIS, its structure,
HIS job descriptions, Hydrological Data User Group (HDUG) organisation and user data needs
assessment.
• Design Manual
• Field Manual
Part II: Terms of Reference for HDUG
Part III: Data needs assessment
GW Volume 2: Sampling Principles: units, principles of sampling in time and space and sampling
error theory.
• Design Manual
GW Volume 4: Geo-Hydrology: network design, implementation, operation and maintenance.
• Design Manual
• Field Manual
Part I: Network design and site selection
Part II: Drilling of litho-specific piezometers
Part III: Aquifer tests
Part IV: Testing and implementation of DWLR
Part V: Reduced levels of wells
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Part VI: Manual water level data collection from observation wells and piezometers
Part VII: Digital water level data collection from piezometers
Part VIII: Monitoring wells – inspection and maintenance
• Reference Manual
GW Volume 5: Creation of GIS datasets: a somewhat out-of-date introduction to the use of GIS
for processing spatial data.
• Operation Manual
GW Volume 8: Data processing and analysis: specification of procedures for Data Processing
Centres (DPCs).
• Operation Manual
Part I: Data collection, data entry and data validation – water level data
Part III: Data processing and analysis
Part IV: Groundwater resource assessment
Part V: Groundwater Year Book
GW Volume 10: HIS activities – Groundwater domain: outline of protocols for data collection,
entry, validation and processing, communication, inter-agency validation, data storage and
dissemination, HIS training and management.
• Operation Manual
In this Handbook, individual parts of the HIS Manual SW are referred to according to the
nomenclature “GWvolume-manual(part)” e.g. Volume 4: “Geo-Hydrology” Field Manual Part IV:
“Testing and implementation of DWLR” is referred to as GW4-FM(IV), and Volume 8: “Data
processing and analysis” Operation Manual Part I: “Data collection, data entry and data validation”
is referred to as GW8-OM(I).
A hard copy of the relevant manuals should be available for the locations listed in Annex II. For
example, a hard copy of SW4-FM(IV) should be available at all piezometers where water level is
measured with a DWLR. Similarly, SW8-OM(I) should be available at all Data Processing Centres
where data entry and validation take place.
1.2 Other HPI documentation
Other HPI documents of relevance to groundwater include:
• The e-GEMS software manual, and the GWDES and GEMS software manuals - although
GWDES and GEMS are being superseded by e-GEMS in HPII, to promote continuity, e-GEMS
contains GWDES and GEMS functionality.
• “Groundwater O&M norms” – a maintenance guide for hydrogeology, hydro-meteorology and
water quality instrumentation and equipment.
• “Groundwater Yearbook” – a template for a Groundwater Yearbook published at State level.
• Groundwater training modules – these relate primarily to DWLR groundwater data handling
(see Table 1.1). Their contents have been largely incorporated into this Handbook as the
underlying principles remain valid.
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Table 1.1 HPI groundwater training modules
Topic Module Title
DWLR
groundwater
01 Understanding Conventional and DWLR Assisted Water Level Monitoring
01 Role of DWLR Data in Groundwater Resource Estimation
03 Other Applications of DWLR Data
04 How to Identify the Cycles using Harmonic Analysis
05 Understanding the Concept of Optimal Monitoring Frequency of DWLR
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2. The Data Management Lifecycle in HPII
Agencies and staff with responsibilities for hydrometric data have a pivotal role in the development
of groundwater quantity information, through interacting with data providers, analysts and policy
makers, both to maximise the utility of the datasets and to act as key feedback loops between data
users and those responsible for data collection. It is important that these agencies and staff
understand the key stages in the hydrometric information lifecycle (Figure 1.1), from monitoring
network design and data measurement, to information dissemination and reporting. These later
stages of information use also provide continuous feedback influencing the overall design and
structure of the hydrometric system. While hydrometric systems may vary from country to country
with respect to organisation set-ups, observation methods, data management and data
dissemination policies, there are also many parallels in all stages of the cycle.
2.1 Use of hydrogeological information in policy and decision-making
The objectives of water resource development and management in India, based on the National
Water Policy and Central/State strategic plans, are: to protect human life and economic functions
against flooding; to maintain ecologically-sound water systems; and to support water use functions
(e.g. drinking water supply, energy production, fisheries, industrial water supply, irrigation,
navigation, recreation, etc). These objectives are linked to the types of data that are needed from
the HIS. GW1-DM Chapter 3.3 presents a table showing HIS data requirements for different use
functions on page 17. In turn, these use functions lead to policy and decision-making uses of HIS
data, such as: water policy, river basin planning, water allocation, conservation, demand
management, water pricing, legislation and enforcement.
Hence, freshwater management and policy decisions across almost every sector of social,
economic and environmental development are driven by the analysis of hydrometric information.
Its wide-ranging utility, coupled with escalating analytical capabilities and information dissemination
methods, have seen a rapid growth in the demand for hydrometric data and information over the
first decades of the 21st century. Central/State hydrometric agencies and international data
sharing initiatives are central to providing access to coherent, high quality hydrometric information
to a wide and growing community of data users. Hydrological data users may include water
managers or policymakers in Central/State government offices and departments, staff and
students in academic and research institutes, NGOs and private sector organisations, and
hydrology professionals. An essential feature of the HIS is that its output is demand-driven, that is,
its output responds to the hydrological data needs of users.
GW1-FM(III) presents a questionnaire for use when carrying out a data needs assessment to
gather information on the profile of data users, their current and proposed use of surface water,
groundwater, hydro-meteorology and water quality data, their current data availability and
requirements, and their future data requirements. Data users can, through Central/State
hydrometric agencies, play a key role in improving hydrometric data, providing feedback
highlighting important issues in relation to records, helping establish network requirements and
adding to a centralised knowledge base regarding national data. By embracing this feedback from
the end-user community, the overall information delivery of a system can be improved.
A key activity within HPII was a move towards greater use of the HIS data assembled under HPI.
Two examples of the use of HIS data include the Purpose-Driven Studies (PDS) and the Decision
Support Systems (DSS) components of HPII. See the Hydrology Project website for more
information about DSS and PDS, and access to PDS reports.
The 38 PDS, which were designed, prepared and implemented by each of the Central/State
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hydrometric agencies, are small applied research projects to investigate and address a wide range
of real-world problems and cover surface water, groundwater, hydro-meteorology and water quality
topics. Some examples of projects include urban groundwater hydrology and groundwater quality
in and around Bangalore city in Karnataka (PDS number GW-KN-1), and an evaluation of
downstream consequences of well pumping on the Verna Plateau and working out a water
resource management strategy in Goa (PDS number GW-Goa-1). The PDS utilise hydrometric
data and products developed under HPI, supplemented with new data collected during HPII.
Two separate DSS programmes were set up under HPII. One, for all participating implementing
agencies, called DSS Planning (DSS-P), has established water resource allocation models for
each State to assist them to manage their surface and groundwater resources more effectively.
The other, called DSS Real-Time (DSS-RT) was specifically for the Bhakra-Beas Management
Board (BBMB), although a similar DSS-RT study has also now been initiated on the Bhima River in
Maharashtra. The DSS programmes have been able to utilise hydrological data assembled under
the Hydrology Project to guide operational decisions for water resource management.
2.2 Hydrogeological monitoring network design and development
Section 3.2 of this Handbook outlines the design and development of groundwater monitoring
networks. Networks are planned, established, upgraded and evolved to meet a range of needs of
data users and objectives, most commonly water resources assessment and hydrological hazard
mitigation (e.g. flood forecasting). It is important to ensure that the hydro-meteorological, surface
water, groundwater and water quality monitoring networks of different agencies are integrated as
far as possible to avoid unnecessary duplication. In particular, a raingauge network should have
sufficient spatial coverage that all groundwater monitoring stations are adequately covered.
Integration of networks implies that networks are complimentary and that regular exchange of data
takes place to produce high quality validated datasets. Responsibility for maintenance of
Central/State hydrometric networks is frequently devolved to a regional (Divisional) or sub-regional
(Sub-Divisional) level.
2.3 Data sensing and recording
Sections 3.1 to 3.4 of this Handbook review groundwater monitoring stations and piezometers,
maintenance requirements and measurement techniques. Responsibility for operation of
Central/State groundwater monitoring stations is frequently devolved to a regional (Divisional) or
sub-regional (Sub-Divisional) level. However, it is important that regular liaison is maintained
between sub-regions and the Central/State agencies through a combination of field site visits,
written guidance, collaborative projects and reporting, in order to ensure consistency in data
collection and initial data processing methods across different sub-regions, maintain strong
working relationships, provide feedback and influence day-to-day working practice. Hence, the
Central/State agencies are constantly required to maintain a balance of knowledge between a
broad-scale overview and regional/sub-region hydrogeological awareness. Operational
procedures should be developed in line with appropriate national and international (e.g. Indian,
ISO, WMO) standards (e.g. WMO Report 168 “Guide to Hydrological Practices”).
For the Hydrology Project, field data from observational stations are required to be received at
Sub-Divisional office level and entered onto the database by 7 days after return from the field
(GW10-OM HIS activities – Groundwater domain).
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2.4 Data validation and archival storage
The quality control and long-term archiving of groundwater quantity data represent a central
function of Central/State hydrometric agencies. This should take a user-focused approach to
improving the information content of datasets, placing strong emphasis on maximising the final
utility of data e.g. through efforts to improve completeness and fitness-for-purpose of
Centrally/State archived data. Section 3.5 of this Handbook summarises the stages in the
processing of hydrometric data. Section 4 of this Handbook covers the process from data entry
through primary and secondary validation, to analysis of groundwater level data (Section 2.5).
During all levels of validation, staff should be able to consult station metadata records detailing the
history of the site and its hydrometric performance, along with hydrogeological and climate maps
and previous quality control logs. Numerical and visual tools available at different phases of the
data validation process, such as versatile groundwater level plotting and manipulation software to
enable comparisons between different near-neighbour or analogue observation wells and
assessment of time series statistics greatly facilitate validation. High-level appraisal by
Central/State staff, examining the data in a broader spatial context, can provide significant benefits
to final information products. It also enables evaluation of the performance of sub-regional data
providers, individual stations or groups of stations, which can focus attention on underperforming
sub-regions and encourage improvements in data quality.
A standardised data assessment and improvement procedure safeguards against reduced quality,
unvalidated and/or unapproved data reaching the final data archive from where they can be
disseminated. However, Marsh (2002) warns of the danger of data quality appraisal systems that
operate too mechanistically, concentrating on the separate indices of data quality rather than the
overall information delivery function.
For the Hydrology Project, the timetable for data processing is set out in GW10-OM HIS activities –
Groundwater domain, and summarised in Table 2.1 of this Handbook. Data entry and primary
validation of field data from observational stations is required to be completed at Sub-
Divisional/Divisional office level by 7 days after return from the field, and 7 days after data entry,
respectively, ready for secondary validation by State offices. Secondary validation should be
completed within one month (initial) and four months (intermediate) of data collection, in State
DPCs for State data, and CGWB local offices for CGWB data. Some secondary validation will not
be possible until the end of the hydrological year when the entire year’s data can be reviewed in a
long-term context, and compared with CGWB data, so data should be regarded as provisional
approved data until then (e.g. for June data by the end of the hydrological year plus 3 months),
after which data should be formally approved and made available for dissemination to external
users. At certain times of year (e.g. during the monsoon season), the data processing plan
outlined above may need to be compressed, so that validated hydrometric data are available
sooner.
2.5 Data synthesis and analysis
Central/State hydrometric agencies play a key role in the delivery of large-scale assessments of
groundwater quantity data and other hydrological data. Through their long-term situation
monitoring, they are often well placed to conduct or inform scientific analysis at a State, National or
International level, and act as a source of advice on data use and guidance on interpretation of
groundwater flow patterns. This is especially true in the active monitoring of the State or National
situation or the assessment of conditions at times of extreme events (e.g. monsoonal rains,
droughts) where agencies may be asked to provide input to scientific reports and research, as well
as informing policy decisions, media briefings, and increasing public understanding of the state of
the water environment. Section 4 of this Handbook covers analysis of groundwater level data, as
well as the process from data entry through primary and secondary validation (Section 2.4).
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Table 2.1 Groundwater data processing timetable for data for month n
Activity Responsibility Deadline
Groundwater level data
Data receipt Sub-Divisional office 7 days after return from field
Data entry Sub-Divisional/Divisional office 7 days after return from field
Primary validation Sub-Divisional/Divisional office 7 days after data entry
Secondary validation State DPC
State DPC
State DPC
Initial – within 1 month of data
collection
Intermediate – within 4 months of
data collection
Final – end of hydrological year +
3 months
Analysis State DPC As required
Reporting State DPC At least annually
Rainfall data
Data receipt Sub-Divisional office 5
th
working day of month n+1
Data entry Sub-Divisional/Divisional office 10
th
working day of month n+1
Primary validation Sub-Divisional/Divisional office 10
th
working day of month n+1
Secondary validation State DPC
State DPC
Initial - end of month n+1
Final – end of hydrological year +
3 months
Correction and completion State DPC
State DPC
Initial - end of month n+1
Final – end of hydrological year +
3 months
Compilation State DPC As required
Analysis State DPC As required
Reporting State DPC At least annually
Data requests State DPC 95% - within 5 working days
5% - within 20 working days
Interagency validation CGWB At least 20% of State stations, on
rolling programme, by end of
hydrological year + 6 months
2.6 Data dissemination and publication
One of the primary functions of Central/State hydrometric agencies is to provide comprehensive
access to information at a scale and resolution appropriate for a wide range of end-users.
However, improved access to data should be balanced with a promotion of responsible data use
by also maintaining end-user access to important contextual information. Thus, the dissemination
of user guidance information, such as composite summaries that draw users’ attention to key
information and record caveats (e.g. monitoring limitations, high levels of uncertainty regarding
specific flood event accuracy, major changes in hydrometric setup), is a key stewardship role for
Central/State hydrometric agencies, as described in Section 6 of this Handbook.
For large parts of the 20th century the primary data dissemination route for hydrometric data was
via annual hardcopy publications of data tables i.e. yearbooks. However, the last decade or so has
seen a shift towards more dynamic web-based data dissemination to meet the requirement for
shorter lag-time between observation and data publication and ease of data re-use. Like many
countries, India now uses an online web-portal as a key dissemination route for hydrometric data
and associated metadata which provides users with dynamic access to a wide range of information
to allow selection of stations. At least 95% of data requests from users should be processed within
5 working days. More complex data requests should be processed within 20 working days.
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2.7 Real-time data
During HPII many implementing agencies developed low cost real-time data acquisition systems,
feeding into bespoke databases and available on agency websites. Such systems often utilise
short time interval recording of data e.g. 5 minutes, 15 minutes, etc. As groundwater levels change
relatively slowly, there is not an immediately obvious need for fast transmission of data to a
Central/State agency. In some instances, agencies are taking advantage of the telemetry aspect
of real-time systems as a cost-effective way of acquiring data from remote locations. However, for
some operational purposes (e.g. real-time drought monitoring, seasonal planning of groundwater
use, etc), real-time data is extremely valuable.
Real-time data should go through some automated, relatively simple data validation process before
being input to real-time models e.g. checking that each incoming data value is within pre-set limits
for the station, and that the change from preceding values is not too large. Where data fall outside
of these limits, they should generally still be stored, but flagged as suspect, and a warning
message displayed to the model operators. Where suspect data have been identified, a number of
options are available to any real-time forecasting or decision support model being run, and the
choice will depend upon the modelling requirements. Whilst suspect data could be accepted and
the model run as normal, it is more common to treat suspect data as missing or to substitute them
with some form of back-up, interpolated or extrapolated data. This is necessary for hydrometric
agencies to undertake some of their day-to-day functions and, in such circumstances, all the data
should be thoroughly validated as soon as possible, according to the same processing timetable
and protocols as other groundwater data.
Real-time data should also be regularly transferred to the e-GEMS database system, through
appropriate interfaces, in order to ensure that all hydrogeological data are stored in a single
location and provide additional back-up for the real-time data, but also to provide access to the
data validation tools available through e-GEMS.
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3. Groundwater Monitoring Stations and Data
3.1 Types of groundwater quantity monitoring station
Table 3.1 lists the relevant section in the HIS Manual GW for detailed information, with respect to
groundwater level data, on design and installation, maintenance, measurement, data entry, primary
and secondary validation, analysis of data, and reporting. References for rainfall data, important
for estimating rainfall recharge, are also included, many of which (particularly those relating to
processing and analysis of rainfall data) are in SW8-OM. See the Precipitation and Climate
Handbook for more information about rainfall data management.
Groundwater wells types include the following:
• Open dug wells - constructed to tap mostly unconfined aquifers, in use for domestic or
irrigation water supply. The term includes large diameter irrigation wells and collector wells.
• Tubewells - drilled in unconsolidated formations and having a well assembly for the entire
depth and a screen at the end, usually fitted with a hand pump or power-driven pump for use
for domestic or irrigation water supply.
• Boreholes - drilled in consolidated formations and having casing pipe only against collapsible
formations with no well assembly, usually fitted with a hand pump or power-driven pump for
use for domestic or irrigation water supply.
• Piezometers - purpose-built, small diameter wells for water level recording and water quality
monitoring, although water levels and water samples can also be taken from the above well
types. In unconsolidated formations, piezometers are provided with screens tapping the zone
of interest whilst, in consolidated formations, they are left open ended (uncased). Water levels
in piezometers are measured and recorded:
Manually using a calibrated steel tape or electrical dip tape
Automatically using a DWLR (Digital Water Level Recorder) containing a pressure
transducer
All groundwater level monitoring programs depend on the design of the piezometer network.
Ideally, the piezometers need to provide data representative of the different geology, lithology and
groundwater development environments. The network density is determined by the monitoring
objectives, the complexity of the aquifer system, and the magnitude and frequency of variations in
groundwater level and piezometric head. In general, monitoring of a local unconfined aquifer will
need a relatively dense network of piezometers, whilst for a deeper confined aquifer a less dense
network will be required. The spatial distribution and depth of piezometers depend on the aquifer
system and general groundwater flow, the lithology of the aquifer, and additional information on
precipitation, surface water systems, and anthropogenic factors (e.g. abstractions, irrigation, etc).
Water level monitoring in complex geological and lithological environments may require
measurements of water levels in multiple piezometers (nested) constructed at different depths
tapping different aquifer units representing different geological and lithological units.
A set of specifications for groundwater equipment was compiled under HPI and updated under
HPII. As such, the DWLR specification in GW4-RM has been superseded; however, GW4-RM
also includes useful bid evaluation guidance and an acceptance protocol for DWLRs, and GW4-
FM(IV) describes the DWLR commissioning procedure which should be used in conjunction with
the specific installation instructions for the procured DWLR. The specifications, which are
downloadable from the Hydrology Project website, provide a guideline for procurement (with
examples of some procurement templates and documents also on the Hydrology Project website).
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Table 3.1 Where to go in the HIS Manuals GW and SW for groundwater data management guidance: groundwater level and rainfall
Instrument
/ Variable
Design &
Installation
Maintenance Measurement Data entry Primary
Validation
Secondary
Validation
Correction &
Completion
Compilation Analysis Reporting
DWLR GW4-DM
8.1
GW4-FM(II)
GW4-FM(III)
GW4-FM(IV)
GW4-FM(V)
GW4-
FM(VIII)
GW10-OM
GW4-DM 5,
6
GW4-FM(VI)
GW4-
FM(VII)
GW8-OM(I)
3.1-3.2, 4.1-
4.2
GW8-OM(I)
4.3
GW8-OM(I)
4.4
GW8-OM(III)
3, 4
GW8-
OM(IV)
GW8-RM 1
GW8-OM(V)
Rainfall
(see
Precipitation
and Climate
Handbook)
GW3-DM
6.2.1-6.2.3,
8.2.2-8.2.4
GW3-FM(II)
1.3
GW3-FM(III)
2.3, 3.3
GW3-FM(V)
2.2, 3.2-3.4
GW3-FM(II)
1.2
GW3-FM(III)
2.2.2, 2.3.2
SW8-OM(I)
4.4-4.7
SW8-OM(I)
5
SW8-OM(II)
2
SW8-OM(II)
3
SW8-OM(II)
4
SW8-OM(III)
4
SW8-OM(III)
9
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3.2 Groundwater monitoring networks
A groundwater monitoring network is a system of dedicated observation wells in a hydrogeological
unit in which groundwater levels, and water quality, are measured at a pre-determined frequency.
Groundwater monitoring networks may be required for assessment of groundwater resources, or
for monitoring of saline water intrusion, of groundwater levels in irrigated areas, of groundwater
levels in drought-prone areas, or monitoring artificial recharge. Whatever the purpose, monitoring
networks should be considered to be dynamic entities and it is important that the current utility of
well-established monitoring networks is periodically assessed to ensure that they continue to meet
changing requirements and to optimise the information they deliver. Network reviews should be
done in collaboration with other agencies. Improving the density of networks and upgrading of
networks are continuous activities, replacing non-performing open wells with dedicated
piezometers as well as constructing deep piezometers to cover aquifers that have not been
previously monitored.
GW4-FM(I) describes the different types of groundwater monitoring networks and the design of
networks for monitoring groundwater levels in aquifers. This is a multi-step process comprising:
1. Identification of hydrogeological data users and their data needs to understand what data are
required and at what frequency. This informs the purposes and objectives of the network in
order to fulfill the hydrogeological data need, and evaluation of the consequences of not
meeting those targets, to inform a prioritisation of objectives in case of budget constraints.
Purposes may include: monitoring the water levels and water quality of independent aquifers;
understanding the relationship between different aquifers; understanding the hydraulic
characteristics of different aquifers; evaluating groundwater regime characteristics;
understanding the regional flow characteristics; and estimating groundwater resources
availability.
2. Inventory of available information to understand the geological formations in the area and their
hydraulic characteristics, the recharge and discharge mechanism which governs groundwater
flow, and the factors that night influence natural groundwater flow. Geological and
hydrogeological maps, lithological cross sections, structural maps, geomorphological maps,
drilling data and geophysical survey reports are useful in this respect.
3. Evaluation and optimisation of the existing network to assess how well it meets the purposes
and objectives, as well as the adequacy of existing equipment and operational procedures, and
possible improvements to existing network. This step also includes identification of gaps (need
for new stations) and over-design (redundancy) in the existing network e.g. locations where the
States and CGWB, or two States, have wells very close together. GW4-FM(I) Chapter 1.5
presents some techniques to guide users through this step. These may involve the
development of regionalisation and network optimisation techniques (e.g. Institute of
Hydrology, 1999; Hannaford et al., 2013).
4. Estimation of overall costs of installing, operating and maintaining the network, once the
preliminary design or evaluation of the network has been completed. This step also includes
evaluation of the network in relation to purposes and objectives, ideal network, available
budgets and overall benefits to assess sustainability which is of paramount importance.
Achieving an optimum network design may involve an iterative process, repeating steps 4 and
5, until a satisfactory outcome is reached.
5. Preparation of phased implementation plan for optimum network that is prioritised, realistic and
achievable in the time scales allowed.
6. Selection of appropriate sites for piezometers and site surveys. GW4-FM(I) devotes Chapter
1.8 to this topic, and GW4-FM(I) Annex 1 provides a useful checklist of all the factors that
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should be taken into consideration in selecting a piezoemeter to ensure long-term reliable data.
A site survey comprises four phases: a desk study, a reconnaissance survey, a field survey
and a data interpretation phase. The site survey, which should be carried out in collaboration
with CGWB, may reveal that the desired location is unsuitable, and an alternative site or flow
measurement technique may need to be considered.
The selected piezometer site should show no influence from any external sources (e.g. canal,
tank, perennial river, irrigation return flows, etc), except in the cases that the piezometer is for
studying the impact of these parameters on the groundwater system. The site should not fall
within the radius of influence of a well, which is under pumping; but it should be capable of
recording the effects of the pumping as a regional phenomenon. Ideally, the water quality at
the site should not be influenced by local recharge/pollutant sources. There are also site-
specific logistic considerations, including ownership, access, space, and security. Piezometers
that represent different lithologies are called lithology-specific piezometers (also known as
lithospecific piezometers).
7. Establishment of a framework for regular periodic maintenance to ensure optimum
performance of the piezometers.
8. Establishment of a framework for regular network reviews (e.g. after 3 years or sooner if new
data needs develop) i.e. starting this process again from step 1.
Once sites have been selected, piezometer construction should follow standard procedures with
the incorporation of site-specific elements. Steps in the construction of piezometers are outlined in
GW4-FM(II), including site preparation, drilling and completion. Normally pumping tests are carried
out soon after completion to estimate aquifer parameters such as transmissivity, storage coefficient
and leakage factor. Aquifer pumping tests are described in GW4-FM(III), which provides a aquifer
test data sheet in Annex 1. After completion, the height of the measuring point above ground level,
used for all water level measurements, must be levelled in, connected to mean sea level (MSL), as
described in GW8-FM(IV). The measuring point is usually the top of the casing for tubewells or
boreholes, and the top of the cement/stone lining for open wells.
3.3 Site inspections, audits and maintenance
The optimum performance of groundwater monitoring networks should be ensured through well-
defined operation and maintenance practices, supported with adequate budgets and trained
manpower. Regular maintenance of equipment, together with periodic inspections and audits,
ensures collection of good quality data and provides information that may assist in future data
validation queries. Table 3.1 lists the relevant section in the HIS Manual GW for maintenance of
groundwater monitoring stations. Information is summarised in the document “Groundwater O&M
norms” which is a maintenance guide for hydrogeology, hydro-meteorology and water quality
instrumentation and equipment.
A supply of appropriate spare parts should be kept on site and/or taken on station visits in case
they are needed (see checklist in GW4-FM(VIII) Chapter 4.2.5). Whilst inspections will be carried
out every day that somebody is on site, piezometers and both manual measuring equipment (e.g.
tapes) and DWLRs should be inspected and certified annually, and before the onset of the
monsoon. Activities may include: checking the performance of and motivating the field staff;
identifying existing or potential problems with the site, instruments, equipment and observation
procedures at an early stage so they can be rectified; and undertaking independent measurement
checks. GW4-FM(VIII), which provides a comprehensive guide for regular inspection and
maintenance of groundwater monitoring stations and instruments, includes an annual operation
and maintenance inspection report form on pages 11-12, as well as details of follow-up field
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investigations should any issues be identified. Any maintenance requirements and
recommendations should be implemented before the onset of the monsoon.
3.4 Data sensing and recording
Table 3.1 lists the relevant section in the HIS Manual GW for operational instructions on the
measurement of groundwater level in observation wells. Water levels in piezometers are
measured and recorded:
• Manually using a calibrated steel tape or electrical dip tape
• Automatically using a DWLR (Digital Water Level Recorder) containing a pressure transducer
Measurements are made relative to a fixed reference point above ground level - usually the top of
the casing for tubewells or boreholes, and the top of the cement/stone lining for open wells – which
is levelled in, connected to mean sea level (MSL).
The measuring frequency depends on diurnal variations, short recharge and discharge events,
seasonal variations (i.e. in wet and dry periods), and variations caused by anthropogenic factors.
The groundwater level data should fully characterise the hydrogeological behaviour of the aquifer,
and discriminate between short-term and seasonal groundwater fluctuations and long-term
hydrogeological changes. Depending on the purpose of the network, it may be important to use
groundwater level data to identify:
• Peaks and troughs of the groundwater levels
• Time of shallow groundwater level i.e. time during which the water level rises above a specified
threshold level
• Time of deep groundwater level i.e. time during which the water level falls below a specified
threshold level
• Rate of rise of decline in groundwater levels
• Response time of groundwater levels after a rainfall event
Under the Hydrology Project, all piezometers, including observation wells without DWLR, should
be monitored for a minimum of four times a year. All observation wells with DWLR should have a
minimum of 6-hourly monitoring in normal areas, and hourly monitoring in critical areas, with
monthly downloading frequency.
Increasingly, DWLRs are generating high frequency groundwater level data which are more suited
to many analytical techniques, and can produce more rational and credible results, as described in
Groundwater Training Module 01 “Understanding conventional and DWLR assisted water level
monitoring” (Section 4.4). High frequency DWLR data have a particularly important role to play in
groundwater resource estimation by improving understanding of the rainfall recharge process
(Section 4.4.5), and by permitting a more realistic groundwater balance and more accurate
assessment of recharge (Section 4.4.6). Other uses include conjunctive use planning,
identification of over-exploited areas, scheduling of pumping, calibration of aquifer response
models and identification of cycles (Section 4.4.7). For more information, see Groundwater
Training Module 03 “Other application of DWLR data”. Strategies for arriving at the optimal
monitoring frequency are presented in Groundwater Training Module 05 “Understanding the
comcept of optimal monitoring frequency of DWLR”.
Another issue in groundwater monitoring is the length of data collection. Only short-term data may
be required for some types of groundwater investigations e.g. tests to determine the hydraulic
properties of wells or aquifers. Long-term data are fundamental to the resolution of many of the
most complex problems dealing with groundwater availability and sustainability, and significant
periods of time from years to decades are typically required to collect data needed to assess the
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effects of climate variability, to monitor the effects of regional aquifer development, or to obtain
data sufficient for analysis of water-level trends. Many of the applications of long-term
groundwater level data involve the use of analytical and numerical (computer) groundwater
models, where the water level measurements serve as primary data for calibration and testing.
The enhanced understanding of the groundwater systems and data limitations identified by model
calibration provides insights into the most critical needs for collection of future groundwater level
data.
When making groundwater level measurements, the observer should always note any occurrences
which may influence the groundwater level as observed by the instruments. These may include:
damage to the equipment for a specified reason. The observer should also note any maintenance
activities carried out at the monitoring site (e.g. change batteries, clean sensor, etc).
The observer should double-check that that any manual reading is taken correctly, and transcribed
correctly (e.g. decimal point in right place). If the reading is later transferred to another document
(e.g. hand copied or typed in, or abstracted from a chart), the observer should always check that
this has been done correctly. An experienced and suitably qualified observer should compare
measurements with equivalent ones from earlier that day or from the day before, if available, as an
additional form of checking. However, the observer should not, under any circumstances,
retrospectively alter earlier readings or adjust current readings, but should simply add an
appropriate comment.
Data collected in the field are delivered to a Data Processing Centre (DPC) on a variety of media,
including handwritten forms and notebooks, and digital data.
3.5 Data processing
The processing of groundwater level data starts with preliminary checking in the field, as described
in Section 3.4 of this Handbook, through receipt of raw field data at a DPC, through successively
higher levels of validation in State and Central DPCs, before data are fully validated and approved
in the National database. Validation ensures that the data stored are as complete and of the
highest quality as possible by: identifying errors and sources of errors to mitigate them occurring
again, correcting errors where possible, and assessing the reliability of data. It is important for staff
to be aware of the different errors that may occur as described in GW4-MM Chapter 6.3.
Data validation is split into two principal stages: primary and secondary, with an optional tertiary
stage. Validation is very much a two-way process, where each step feeds back to the previous
step any comments or queries relating to the data provided. The data processing steps comprise:
1. Receipt of data according to prescribed target dates. Rapid and reliable transfer of data is
essential, using the optimal method based on factors such as volume, frequency, speed of
transfer/transmission and cost. Maintenance of a strict time schedule is important because it
gives timely feedback to monitoring sites, it encourages regular exchanges between field staff,
Sub-Divisional offices, State and Central agencies, it creates continuity of processing activities
at different offices, and it ensures timely availability of final (approved) data for use in policy
and decision-making.
2. Entry of data to computer, using the e-GEMS, is primarily done at a Sub-Divisional office level
where staff are in close contact to field staff who have made the observations and/or collected
the digital data. Historical data, previously only available in hardcopy form, may also be
entered this way. Each Central/State agency should have a programme of historical data
entry.
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3. Primary data validation which should be carried out in State DPCs for State data and CGWB
local offices for CGWB data, as soon as possible after the observations are made or data
downloaded from loggers, using e-GEMS. This ensures that any obvious problems (e.g.
indicating an instrument malfunction, observer error, etc) are spotted at the earliest opportunity
and resolved. Other problems may not become apparent until more data have been collected,
and data can be viewed in a longer temporal context during secondary validation.
4. Secondary data validation which should be carried out in State DPCs for State data and CGWB
local offices for CGWB data, to take advantage of the information available from a large area
by focusing on comparisons with the same variable at other good quality, nearby monitoring
sites (analogue stations) which are expected to exhibit similar hydrogeological behaviours,
uses e-GEMS. States should have access to CGWB data during secondary validation, and
may receive support from CGWB in this activity.
5. Tertiary data validation which focuses on advanced techniques for the analysis and validation
of spatial and temporal data, using tools like statistical analysis and spatial overlays. This
stage of validation is time-consuming and is applied selectively.
6. Data storage. The e-GEMS HIS database, of both approved data and unapproved data
undergoing primary and secondary validation, is backed up automatically. Therefore, there is
no need to make regular back-ups, unless any data are stored outside the HIS database, for
instance in Excel files or other formats awaiting data entry, or in stand-alone real-time
databases – such files should be securely backed up, ideally onto an external back-up device
and/or backed up network server, so that there is no risk of data loss. All PCs should have up-
to-date anti-virus software.
Raw field data, in the form of handwritten forms and notebooks, and charts should also be
stored in a secure manner after database entry to ensure that original field data remain
available should any problems be identified during validation and analysis. Such hardcopy
data should ultimately be securely archived, in the State DPC for State data or CGWB local
office for CGWB data, possibly by scanning documents and storing them digitally.
7. Interagency data validation by CGWB – CGWB should aim to validate at least 20% of current
and historic data from State groundwater monitoring stations every year, on a rolling
programme, so that CGWB has independently validated the data from every State well at least
once every 5 years. Interagency validation is a 2-way process and CGWB should discuss any
identified issues and agree final datasets with State DPCs through a 2-way consultative
process, to build capacity for data validation within the States.
For groundwater level data, Section 4 of this Handbook covers the process from data entry through
primary and secondary validation, to analysis of data.
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4. Groundwater Level Data Processing and Analysis
4.1 Data entry
4.1.1 Overview
Entry of data to computer is primarily done at a Sub-Divisional office level where staff are in close
contact to field staff who have made the observations and/or collected the manual or digital data.
Data entry is carried out using e-GEMS. Prior to entry to computer, two manual activities are
essential: registration of receipt of the data, and manual inspection of the groundwater level forms
and notebooks from the field, for complete information and obvious errors. Data entry (see Table
3.1) and primary validation of field data from observational stations are required to be completed at
Sub-Divisional/Divisional office level by 7 days after return from the field, and 7 days after days
entry, respectively, ready for secondary validation by State offices.
4.1.2 Manual inspection of field records
Prior to data entry to computer an initial inspection of field records is required. This is done in
conjunction with notes received from the observation station on equipment problems and faults,
missing records or exceptional levels. Groundwater level sheets and charts are inspected for the
following:7
• Is the station name and code and month and year recorded?
• Is the station coordinates and altitude (relative to mean sea level MSL) recorded?
• Is the height of the measuring point above ground level recorded?
• Are there some missing values or dry wells?
• Is the record written clearly and with no ambiguity in digits or decimal points?
• Do digital records downloaded from the data loggers have valid station/instrument
identification, dates and timings, etc.
Any queries arising from such inspection should be communicated to the observer to confirm
ambiguous data before data entry. Any unresolved problems should be noted and the information
sent forward with the digital data to Divisional/State offices to assist in initial secondary validation.
Any equipment failure or observer problem should be communicated to the supervising field officer
for rectification.
4.1.3 Entry of manual groundwater level data
Groundwater level data may be entered manually. Using e-GEMS, the user selects the correct
station and groundwater level series. The screen for entry (or editing) of groundwater level is
displayed. The user enters the data and time of the measurement, the height of the measuring
point above ground level, and the depth to groundwater level. Non-numerical entries are
automatically rejected. The software also calculates the groundwater level reduced to MSL as the
user enters the data.
Dry wells When the well is dry, the depth to groundwater level is left blank (not the depth of the
well as the actual groundwater level is below the bottom of the well and is not known) and a
comment entered against that day or time.
Missing data When data are missing, the corresponding depth to groundwater level is left as -999
(not zero) and a comment entered against that day or time.
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Entered data should undergo entry checks and be viewed graphically to identify potentially suspect
data not apparent in tabular form, which may reflect an error in data entry:
• A value cannot be saved unless all the required details are entered.
• A value cannot be saved when it is at the same date and time as another value i.e. no
duplicates may be present.
• A value is flagged as suspect when a depth to groundwater level is entered that is more than
the depth of the well.
For any missing or potentially suspect values, the user should refer back to the field documents to
see if there was some error in entering the data. Any mismatch remaining after thorough checking
of the field documents must be due to incorrect field computations by the observer and should be
communicated to the supervising field officer.
4.1.4 Import/entry of digital data
Digital data from DWLRs take the form of groundwater levels at pre-set time intervals (e.g. 1 hour,
15 minutes, etc). DWLR data can be imported directly should an appropriate import interface be
available (bespoke to each type of data logger) and , ideally, an import report will be automatically
generated with the number of records offered, the number of records imported and the number of
records rejected. Imported data should undergo entry checks and be viewed graphically as
described in Section 4.1.3.
4.2 Primary validation
4.2.1 Overview
Primary validation is primarily done at a Sub-Divisional office level where staff are in close contact
to field staff who have made the observations and/or collected the manual or digital data. Primary
validation is carried out using e-GEMS. Primary validation (see Table 3.1) of field data from
observational stations is required to be completed at Sub-Divisional/Divisional office level by 7
days after data entry, ready for secondary validation by State offices. This time schedule ensures
that any obvious problems (e.g. indicating an instrument malfunction, observer error, etc) are
spotted at the earliest opportunity and resolved. Other problems may not become apparent until
more data have been collected, and data can be viewed in a longer-term context during secondary
validation.
Primary validation of groundwater level data focuses on validation within a single data series by
making comparisons between individual observations and physical limits, and between two
measurements of groundwater level at a single station (e.g. a DWLR groundwater level and a
manually-read check of depth to groundwater level).
4.2.2 Typical errors
Staff should be aware of typical errors in groundwater level measurement, listed in Table 4.1, and
these should be considered when interpreting data and possible discrepancies.
4.2.3 Comparison with physical limits
Single station validation against data limits and expected hydrological behaviour is carried out by
the inspection of the data using a combination of graphical and tabular displays. Groundwater
levels which are below the bottom of the well or above the top of the well plus, say, 0.25 m, should
be flagged as erroneous.
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Table 4.1 Measurement errors for groundwater level data
Manual depth to groundwater level measurement errors
• Observer reads water depth incorrectly
• Observer enters water depth incorrectly in the field sheet (e.g. misplacement of decimal point in the
range 0.01 to 0.10, writing 4.9 m instead of 4.09 m)
• Observer enters groundwater level to the wrong day or time
• Observer fabricates readings, indicated by sudden changes in levels or extended periods of uniform
mathematical sequences of observations
• Observer uses incorrect measurement point
• Observer enters depth of well for dry well
• Depth of well is greater than length of measuring tape
DWLR measurement errors
• Failure of electronics due to lightning strike etc. (though lightning protection usually provided)
• Incorrect set up of measurement parameters by the observer or field supervisor
Visual checking of groundwater level data is often a more efficient technique for detecting data
anomalies than numerical checking. The plot of groundwater levels should cover a representative
period of time (depending on the frequency of measurement) to reveal any discontinuities e.g. for
daily data at least 2 months, for hourly data one month, etc. The scale of the hydrograph should
be selected such that the variation of the groundwater level data is neither very flat nor very steep.
Trend lines for pre-monsoon, post-monsoon and the whole time period, and 3D viewing, may also
be utilised to aid interpretation. The main purpose of graphical inspection is to identify any abrupt
discontinuities in the data or the existence of positive or negative spikes which do not conform to
expected hydrogeological behaviour. These may be caused by an incorrect reading (often by 0.5
m or 1.0 m), a change in height of the measuring point, or assigning the reading to the wrong well.
Suspect groundwater levels should be flagged for comparison with other groundwater levels
measured in the same area during secondary validation.
4.2.4 Comparison of manual and digital data
For stations with a DWLR, periodic manual readings should be made once a month – before data
download - using a calibrated measuring tape, to check correct operation of the DWLR.
Comparison of manual and DWLR groundwater level data can be best carried out in graphical
form, where the two water level series should correspond. If there is a systematic but constant
difference between the manual and DWLR levels, it is possible that the DWLR has been set up at
the wrong depth and the DWLR data may need adjusting.
Where a doubtful or incorrect groundwater level is identified, and there is any uncertainty as to the
correct action, this should be marked with an appropriate flag to indicate that it is suspect. The
data flagged as suspect are reviewed at the time of secondary validation.
4.3 Secondary validation
4.3.1 Overview
Secondary validation of groundwater level data is primarily carried out at State DPCs, to take
advantage of the information available from a larger area. Secondary validation is carried out
using e-GEMS. Data may also be exported to Excel for secondary validation. For the Hydrology
Project, secondary validation should be completed within one month (initial) and four months
(intermediate) of data collection (see Table 3.1). Some secondary validation (including comparison
with CGWB data) will not be possible until the end of the hydrological year when the entire year’s
data can be reviewed in a long-term context, so data should be regarded as provisional approved
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data until then (e.g. for June data by the end of the hydrological year plus 3 months), after which
data should be formally approved and made available for dissemination to external users.
Data entering secondary validation have already received primary validation on the basis of
knowledge of the station and instrumentation and field documents. Data may have been flagged
as missing or suspect. Secondary validation focuses on further investigation of data from the well,
including comparison between groundwater level and incident rainfall (initial), and comparisons
with neighbouring wells to identify suspect values (intermediate). Data processing staff should
continue to be aware of field practice and instrumentation and the associated errors which can
arise in data.
4.3.2 Combined groundwater level and rainfall plots
The addition of rainfall (Section 5) to the water level plots in Section 4.2.3, and to the comparison
plots in Section 4.3.3, provides a means of validating water level data (see example in Figure
4.1a). Comparison may be made using an areal rainfall determined using Thiessen polygons or
other methods over the entire basin, or for the intervening sub-basin corresponding to various
gauging stations (Precipitation and Climate Handbook, Section 4.5.3). Where the basin is small or
the number of raingauges limited, individual rainfall records may be plotted.
In general, a rise in groundwater level must be preceded by a rainfall event in the basin and,
conversely, it is expected that rainfall over the basin will be followed by rise in water level. There
must be a time lag between the occurrence of rainfall and the rise in water level. Where these
conditions are violated, an error in rainfall or in the water level data may be suspected. However,
the above conditions do not apply universally and the assumption of an error is not always justified,
especially for isolated storms in arid areas:
• An isolated storm recorded at a single raingauge may be unrepresentative and much higher
than the basin rainfall. The resulting recharge may be negligible or even absent
• Where storm rainfall is spatially variable, it may be heavy and widespread but miss all the
raingauges, thus resulting in a rise in groundwater level without preceding measured rainfall
The use of comparative plots of rainfall and groundwater level is, therefore, qualitative but it
provides valuable ancillary information when used with the multiple hydrograph plots. Trend lines
for pre-monsoon, post-monsoon and the whole time period, and 3D viewing, may also be utilised to
aid interpretation.
See also Section 4.4.5 for use of combined groundwater level and rainfall plots in understanding
the rainfall-recharge relationship.
4.3.3 Statistical methods
Some simple statistical methods are available to check groundwater level measurements:
• Deviation from the mean or the median - check for values which differ more than three times
the standard deviation from the mean or median (preferred as it is less affected by values of
individual measurements and represents better the centre of the dataset). Ideally, the time
series should contain at least 50 measurements.
• Frequency analysis - calculate the frequency of the measurements in order to identify values,
which appear more often than normally expected. Such values may result from measurements
affected by a casing joint or from overflowing or siltation of the well. The consistent rounding of
measurements to a near value also may cause such values.
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Figure 4.1 Examples of secondary validation techniques
4.3.4 Multiple station comparison plots
Comparative time series plots are an effective visual method for identifying potential anomalies
between wells data (see example in Figure 4.1b). Where only two wells are involved in the
comparison, the identification of an anomaly does not necessarily indicate which well is at fault.
For multiple time series plots, select a set of wells, ideally in the same area and with the same
hydrogeological characteristics. Plot the groundwater level series as hydrographs, preferably in
different colours for each well. For routine monthly validation, the plot should include the time
series of at least the previous month to ensure that there are no discontinuities between one batch
of data received from the station and the next. There will be differences in the plots depending on
differing rainfall over the basins and differing recharge response to rainfall but, in general,
fluctuations and trends are expected to be replicated at several wells and gross differences
between plots may be identified. Trend lines for pre-monsoon, post-monsoon and the whole time
period, and 3D viewing, may also be utilised to aid interpretation.
Comparison of groundwater level series may permit the acceptance of values flagged as suspect
because they fell outside the warning ranges, when viewed as water level or when validated as a
single station. When two or more stations display the same behaviour there is strong evidence to
suggest that the values are correct. Comparison plots provide a simple means of identifying
anomalies but not of correcting them.
4.4 Analysis
4.4.1 Overview
Analysis of groundwater data (see Table 3.1) provides information on the past, present and future
condition of the available groundwater resources, but may produce misleading results with
insufficient knowledge of the groundwater level data and its quality. It is important to have an
understanding of the completeness of the groundwater level data, and the quantity and potential
significance of missing data, of the representativeness of the measured groundwater levels of the
actual situation, and of the possibilities and limitations in the use of the groundwater level data.
The completeness of the data is important with respect to the analysis of time-dependent data
because some techniques (e.g. statistical analysis) may not yield results unless the dataset is
continuous dataset. Understanding the limitations is particularly important with respect to spatial
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analysis where, for instance, there may be an insufficient density of data points to represent the
groundwater level, when preparing for a contour map using GIS.
GIS has a critical role to play in the interpretation of point groundwater level data for understanding
surface water-groundwater interactions, water quality changes, groundwater resource availability,
etc across an area. For improved understanding of the hydrological/hydrogeological system and
for refining water resource estimates, additional spatial data on surface drainage, land use,
geomorphology, slope, soils, geology and structures, and man-made (anthropogenic) features are
required. GIS enables integration of different layers of point data and spatial information, including
digital maps, generated from the topographic sheets, and thematic data interpreted from satellite
images. GW5-DM provides a somewhat out-of-date introduction to the use of GIS for processing
spatial data. See the e-GEMS manual for details about which GIS tools are available.
4.4.2 Contour maps
Contour maps show the spatial distribution of groundwater level measurements, or of a value
derived from the measurements. However, such a map will not be realistic when effects of
physical features between monitoring stations are not accounted for e.g. a river. Additional
information has to be incorporated to produce a meaningful map, which may necessitate manual
editing of contours after combining the generated contours with other map layers e.g. topography.
Figure 4.2 illustrates how the presence of a river influences contours. GW8-OM(III) Chapter 3
presents an example of preparing a contour map from groundwater level data in Andhra Pradesh.
Contours of groundwater level, and of other related spatially varying quantities like groundwater
quality parameters, aquifer characteristics, rainfall, etc, are required for a variety of computations
aimed at the quantitative estimation of groundwater resources and groundwater quality
(contaminant transport). Contouring may be accomplished by a manual procedure or by a
software-assisted automatic procedure based on a pre-selected algorithm. GW8-RM Chapter 1
presents the relative merits/demerits of the two procedures. The optimum approach combines the
two procedures such that the software produces the contours according to the user specifications
(e.g. grid spacing, contour interval, contouring algorithm) and an experienced hydrogeologist
manipulates them manually to incorporate existing hydrogeological features. There are many
contouring algorithms available, but the principle ones, discussed in detail in GW8-RM Chapters
1.2 to 1.5, are:
• Trend surface analysis (polynomial approximation)
• Kriging (including Universal Kriging)
• Spline functions
Figure 4.2 Contour map modified to account for a river
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GW8-OM(III) Chapter 4 considers the choice of algorithm for a variety of contouring uses,
including:
• Water table/piezometric elevation contouring – required for estimating lateral flow directions
and rates
• Water depth contouring – produced for routine analysis aimed at evaluation, planning and
management of groundwater resources.
• Water level fluctuation contouring – contours of water level fluctuation in a given period (e.g.
monsoon and dry seasons) combined with contours of specific yield permit an estimation of the
storage fluctuations, necessary for performing a lumped water balance. These may also be
useful for calibrating a distributed aquifer response model.
• Computation of velocity field – contouring algorithms permit estimation of gradients of the
attribute (i.e. the particular data e.g. groundwater levels) at any specified point, from which
raster data (Section 4.4.3) of hydraulic gradients may be generated. Raster data of hydraulic
gradient and hydraulic conductivity may be used for estimating the velocity distribution, in
accordance with Darcy’s law (GW4-DM Chapter 2.7.1).
• Groundwater level data validation – contouring algorithms permit identification of outliers i.e.
data points that are statistically inconsistent with the dataset. This may be visualised as a high
concentration of contours around the location of the well which may indicate a potentially
erroneous value, though it is necessary to check the groundwater level plot of the well to
determine whether the value really is in error. Figure 4.3 illustrates the effect of a low (4.4)
measured value that should be followed-up to check its authenticity. A technique known as
jack-knifing, suitable for use with kriging and universal kriging algorithms, may be adopted for
detecting outliers.
4.4.3 Raster maps
As indicated in Section 4.4.2, contour maps are usually processed to perform a variety of tasks like
gridding/interpolation, integration (spatial averaging, storage estimation) and differentiation
(velocity calculation). Raster maps are created from contour maps and contain values for a grid
Figure 4.3 Contour map showing influence of suspect value
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with uniformly distributed points. To facilitate visualisation, the derived values are classified by
value, with each class assigned a separate symbol and/or colour.
Raster maps may be used for spatial calculations e.g. the difference in groundwater level between
pre-monsoon (one raster map) and post-monsoon (another raster map), where subsequent
multiplication of the derived raster map of the difference by the area of the raster cells and the
specific yield of the aquifer (another raster map) will give the total groundwater volume increase
during the monsoon period.
By overlaying different spatial layers, raster maps may be used in tertiary validation to ascertain
whether any detected outliers are natural extremes or erroneous data values e.g. in a comparison
of the results of aquifer pumping tests with a map of hydrogeological units, the values of the
transmissivity and the storage coefficient derived from the pumping tests should conform to the
values expected for the hydrogeological units on the map.
4.4.4 Computing basic statistics
Basic statistics are widely required for validation and reporting including:
• Annual mean water level:
• Standard deviation - the root mean squared deviation Sx:
•
• Annual highest water level - the maximum value of a series X
• Annual lowest water level – the minimum value of a series X
• Monthly mean water level (also known as macro means) – the mean water level for each
month
4.4.5 Rainfall recharge understanding
At the beginning of a rainfall event, or indeed at the beginning of the monsoon season, when the
soil may be dry, most of rainfall infiltrating into the ground may be held back in the soil and there
may practically be no recharge. As the rainfall event builds up the soil moisture, the recharge
process may be initiated. Thus, a certain depth of rainfall (RC) has to occur before a rainfall event
starts producing recharge. Furthermore, since the water has to flow through the unsaturated zone
before it appears as recharge at the water table, there is a time lag (Tg) between a rainfall event
and the consequent recharge.
The rainfall recharge parameters RC and Tg need to be estimated for groundwater resource
assessment. One of the ways of achieving this is to study the impact of the rainfall recharge on the
water table, facilitated by high frequency DWLR data:
• First, superpose the hyetographs of all the rainfall events of a rainy season over the
corresponding groundwater level hydrograph (Section 4.3.2).
• Examine the water level response following each rainfall event, starting from the beginning of
the rainy season.
• Identify the first rainfall event (say X) which is followed by a conspicuous water table rise.
• Compute the cumulative rainfall preceding the X rainfall event. This provides an estimate of
RC.
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• Compare the time lags between the rainfall events (starting from X) and the following
groundwater level rises and determine an average time lag. This provides an estimate of Tg.
For more information and an example, see Groundwater Training Module 02 “Role of DWLR data
in groundwater resource estimation”.
4.4.6 Groundwater modelling
Groundwater models simulate the hydrogeological conditions of an area in order to understand the
hydrogeological processes taking place and to make estimations of future resources. There are
different types of groundwater models. GW8-OM(III) Chapter 6 presents a simple model with
horizontal layers, and GW8-OM(IV) describes a lumped water balance model in some detail.
A groundwater balance, usually applied to an unconfined aquifer, assumes that the difference
between the net recharge volume (I) and net discharge volume (O) equals the change of
groundwater storage (ΔS). I, O and ΔS must be in respect of the same aquifer area and the time
period:
I - O = ΔS
When the study area is treated as a single entity, and flow across the boundary is estimated by
Darcy’s law (GW4-DM Chapter 2.7.1), it is a lumped model. When the study area is divided into a
finite number of cells, and flow between adjacent cells is estimated by Darcy’s law, it is a
distributed model e.g. MODFLOW. Uses of lumped water balance models include:
• Estimation of groundwater resource – the model provides historical estimates of different
components of recharge and discharge and may be used to estimate the status of the resource
in a certain time span, essential for resource management.
• Validation – the model may be used to validate various adopted algorithms, norms, practices,
parameter values, etc, by checking if independently estimated components of recharge,
discharge and storage change satisfy the water balance equation:
I - O - ΔS = εΔS
Where: εΔS is the residue term in the water balance equation i.e. the volumetric
imbalance between the net recharge (that is, recharge minus discharge) and the
storage fluctuation.
• Prioritisation of model components – the validation use above also leads to an understanding
of the relative significance of the various component(s) of the model. The estimate of each
component, expressed as a fraction of the storage fluctuation, provides an indication of the
relative significance of the components. Larger effort should be put in to estimating the most
significant components e.g. experimental field work to improve upon the estimates.
• Estimation of an unknown model component – a critical model component not amenable to
rational estimation (e.g. rainfall recharge during the monsoon period) may estimated by
substituting the estimates of all other components and of the storage fluctuation into the water
balance equation. If the residual term is assumed to be zero, the estimate of the unknown
model component is reliably estimated, provided the estimates of all other components and of
storage fluctuation are more or less error free
Groundwater balances benefit from the use of high frequency DWLR data. See GW8-OM(IV) and
Groundwater Training Module 02 “Role of DWLR data in groundwater resource estimation” for
more information.
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4.4.7 Time series analysis
Time series analysis may be used to test the variability, homogeneity or trend of a water level
series, or to give an insight into the characteristics of the series as graphically displayed. For more
information see GW8-OM(III) Chapter 5. See the e-GEMS manual for details about which time
series analysis tools are available.
• Dynamic equilibrium – If the annual recharge to an aquifer equals the annual withdrawals
from the aquifer, a volumetric balance exists and the groundwater level time series displays
first order stationarity (GW8-RM Section 2.3). If the spatial and temporal distributions of the
recharge, withdrawals and boundary conditions (e.g. stage of hydraulically connected streams
in the vicinity) follow the same annual pattern over the years, the groundwater level time series
displays second order stationarity. A time series displaying both first and second order
stationarity is said to be in dynamic equilibrium i.e. the annual hydrographs over the years are
from the same population.
In practice, a true dynamic equilibrium may never be reached, since there are always variations
of recharge, withdrawals and boundary conditions from year to year. However, if these
variations are small in comparison to the respective long-term mean, a near-dynamic
equilibrium may be reached i.e. although there are some variations from year to year, there is
no long-term rising/declining trend of the annual mean groundwater level and the shape of the
groundwater level hydrograph is not undergoing any distortion.
• Temporal trends – If first order stationarity is violated, the annual mean groundwater level and
other attributes of the hydrograph may display a rising or a falling trend. If this test holds but
the test for second order stationarity is violated, the annual mean groundwater level may be
devoid of a trend but one or more of the other attributes may be displaying a trend. Fit a
regression line to a time series of the mean or other attribute and check if the slope coefficient
is significantly different from zero i.e. whether there is any trend.
• Regression analysis - Regression analysis is a widely-used statistical technique in hydrology
for: making estimates of dependent variable Y (i.e. the groundwater level at the test station)
based on independent variables X (e.g. the groundwater level at an analogue station); for
investigating the functional relationship between two or more variables; for infilling missing
values in the test time series; and for validating the test time series. Regression relations may
be obtained for annual, monthly or daily water level series. The most common model is based
on the assumption of a linear relationship between two variables and has the general form:
Yi = a Xi + c
In simple linear regression, the Y variable is regressed on one X variable. In multiple and
stepwise linear regression, the Y variable is regressed on more than one X variable. In non-
linear regression, the coefficients appear as a power:
Yi = c Xa
i
The type of regression equation that is most suitable to describe the relation depends on the
variables considered and, with respect to hydrology, on the physics of the processes driving
the variables. Furthermore, it also depends on the range of the data of interest. Regression
analysis may be used in tertiary validation to identify suspect data values.
• Linear interdependencies - Linear interdependence between two concurrent groundwater
level series may be identified by estimating correlations (GW8-RM Section 2.2) between their
respective time series. A significant correlation may indicate a close linear interdependence.
• Lagged interdependencies - Linear time-lagged interdependence between two concurrent
groundwater level series may be identified by estimating correlations (GW8-RM Section 2.2)
between their respective time series at different time lags. The lag at which the correlation is
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highest may represent the lag between two series. If the highest correlation is significant, it
may indicate a close liner interdependence.
• Outliers – Identification of the outliers (i.e. data points that are statistically inconsistent with the
dataset) should start with a manual inspection of hydrographs (Section 4.3.4, also Section
4.4.2) followed up with statistical analysis. An outlier may represent some discrete or short-
lived phenomenon. However, an outlier may also represent and erroneous data value.
Outliers can be detected by statistical analysis of annual groundwater level data for a single
well, by statistical analysis of trends of macro means, or by regression analysis between wells
whose groundwater level data are linearly interdependent. The latter technique may be used in
tertiary validation to ascertain whether any detected outliers are natural extremes or erroneous
data values.
• Cycles - A plot of groundwater levels represents the consequences of a number of
phenomena, many of which may be periodic (i.e. self repeating). These include: daily pumping
and recovery; tidal effects; atmospheric pressure fluctuations; and seasonal rainfall, pumping
and irrigation recharge. Each periodic phenomenon imparts a periodicity or cyclicity to the
water level hydrograph. However, due to their superposition, all these cycles may not be
visible, particularly in low frequency manual measurements. However, high frequency DWLR
data present an opportunity to identify and infer the relative influence of different cycles on the
groundwater system, and design fieldwork programmes accordingly.
Harmonic analysis (also known as spectral analysis) is a form of time series analysis used to
separate a groundwater level time series of into these hidden cycles. It is applicable only to
stationary time series, devoid of any long-term trend (GW8-RM Section 2.3). For more
information and an example, see GW8-RM Section 2.4 and Groundwater Training Module 04
“How to identify the cycles using harmonic analysis”.
• Analysis of hydrograph recession – The recession of a groundwater level hydrograph
predominantly resulting from the natural drainage, is related to the aquifer geometry and
diffusivity. Analysis of the hydrograph recession can provide a preliminary estimate of the
diffusivity, which in turn may lead to the estimation of the transmissivity or of the storage
coefficient.
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5. Rainfall Data Processing and Analysis
5.1 Rainfall in the Hydrology Project
Rainfall recharge is often the largest source of recharge to groundwater: a rise in groundwater level
is usually preceded by a rainfall event in the basin. Hence, access to rainfall data is important in
interpretation of groundwater level data, and for balancing recharge, discharge and storage of
groundwater systems. GW3-DM, FM and RM describe the design, implementation, operation and
maintenance of hydrometeorological networks, and rainfall data may be stored in e-GEMS.
However, subsequent data processing and analysis of rainfall data are covered only in SW8-OM
(see Table 3.1) and the surface water software e-SWIS has a wider range of validation and
manipulation tools for rainfall data than e-GEMS. Therefore, it is recommended to carry out the
majority of rainfall data processing and analysis in e-SWIS, and then export final datasets from e-
SWIS, for import to e-GEMS. See the Precipitation and Climate Handbook for more information
about rainfall data management.
.
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6. Data Dissemination and Publication
6.1 Hydrogeological products
The traditional primary visible output of hydrogeological data archives is published reports, usually
in the form of annual groundwater yearbooks. However, this is not generally the most convenient
format of groundwater quantity data for data users who often require long-term records for a single
station or a group of stations i.e. data by station rather than by year. For data users in the past,
this necessitated the collation of data from a set of annual reports and the keying in of the data for
the required analysis. In many countries, recent advances in IT, combined with well-established
links between data suppliers and data users, mean that annual reports are no longer published in
print, with the same information being provided online, and data requests met with a rapid and
bespoke response.
A further consequence is that data suppliers have more time to focus on data analysis, periodic
reports and short-term operational reports of interest to key data users e.g. reports on unusual
flood events, groundwater level bulletins for water supply and irrigation sectors, real-time ground
water level for drought monitoring, etc. A combination of digital and hardcopy hydrological
products and online dissemination provide an effective means of demonstrating the capability of
the HIS, in particular:
• Providing information on availability of data for use in planning and design, and making
reporting and use of data more efficient by reducing the amount of published data and cost of
annual reports
• Advertising the work of the HIS and its capability, and to create interest and awareness
amongst potential data users
• Providing tangible evidence to policymakers of a return on substantial investment
• Providing feedback to data producers, and acknowledging the contribution of observers and
co-operating agencies
• Providing a clear incentive to keep archives up to data and a focus for an annual hydrometric
audit
Hence, the long-term goal of the HIS is web-based dissemination of user guidance and station
metadata (additional datasets that include items that could assist users of the data to understand
the data, their accuracy and any major influencing factor), which is usefully complemented by the
publication of catalogues or registers of hydrometric stations (e.g. Marsh & Hannaford, 2008) and
occasional reports, and by a dedicated enquiry and data retrieval service.
6.2 Annual reports
6.2.1 Groundwater yearbooks
Groundwater yearbooks should report over the hydrological year from 1 June to 31 May. The
hydrological year corresponds to a complete cycle of replenishment and depletion, so it is
appropriate to report on that basis rather than over the calendar year. Annual groundwater levels,
groundwater quality, rainfall and other climate data may be presented in a single combined report.
The groundwater quantity elements of such reports incorporate a summary of information on the
pattern of groundwater levels over the year, and information on groundwater resource availability
and how the recent year compares with past statistics. Annual reports are produced at the State
DPC and should be published within 12 months of the end of the hydrological year covered. GW8-
OM(V) presents a detailed template and instruction for a groundwater yearbook published at State
level. The following are typical contents:
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• Part I - The first part of the yearbook, which may change little from year to year includes a
preface and introduction, followed by information on drainage characteristics, geology and
structures, soil types, sub-surface lithology, and typical groundwater issues of the area, and the
administrative set-up in the groundwater agency.
• Part II – The yearbook should go on to describe the steps involved in the collection, data entry,
processing, validation, analysis and storage of data, including any agencies contributing to the
included data. The report should explain how the work is linked with other agencies collecting
or using flow data including CGWB and operational departments in irrigation. It should also set
out how data may be requested and under what terms and conditions they are supplied.
Observational networks – Maps, figures and tables should be used to summarise the salient
features of the groundwater level and hydro-meteorological observational networks, including
the objectives of the monitoring networks, the status of the networks, and a summary of data
collection during the reporting year. Maps should also show major rivers and basin boundaries,
as well as aquifer boundaries, and distinguish each site by symbol between operating
agencies. Mapped stations should be numbered so that they can be related to information
contained in tabular listings. Tables of current stations should include the latitude, longitude,
altitude, responsible agency, the full period of observational record and the period of
observation which is available in digital format. Information for each station should also include
a summary description of the type of observation well and any notable features. All additions
and closures of stations should be highlighted in the yearly report. Similarly, station upgrading
and the nature of the upgrading should be reported.
• Part III – Next, the yearbook presents semi-static data (e.g. areas of crops irrigated by
groundwater, crop water requirement, irrigation efficiency, irrigation return flow, etc) and
dynamic data, starting with reviews of rainfall (and other climate) and of surface runoff during
the reporting period, including graphs, tables and maps.
Basic groundwater statistics – This section forms the core of the report and should include a
review of groundwater level changes and groundwater flow system characteristics for the
reporting period. Maps, figures, graphs and tables should be used to summarise the salient
points. This section should also include estimation of groundwater resource availability for the
reporting year, and recommendations for sustainable development of groundwater.
• Part IV Annexes – These may include supplementary tables and information, such as a
bibliography. Data users may be interested to know of other sources of hydrogeological data,
including: concurrent annual reports from the HIS of other hydrogeological data, and previous
annual flow reports (with dates) from the HIS or other agencies; any periodic reports of
groundwater monitoring station metadata and time series statistics produced by the HIS or
other agencies; and any special reports produced by the HIS or other agencies. A brief note
on the administrative context of previous reports, methods of data compilation, and previous
report formats may be helpful.
6.2.2 Annual hydrological reviews
Shorter than groundwater yearbooks, annual reviews of the hydrological year provide users with
published assessments of the key elements of the hydrological cycle. Hence, the reports combine
rainfall, snow (where relevant), climate, flow, reservoir stocks and groundwater, and possibly also
water quality. Annual reviews are produced at the State DPC and should be published within 12
months of the end of the hydrological year covered. For an example, see
www.ceh.ac.uk/data/nrfa/nhmp/annual_review.html.
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6.3 Periodic reports
6.3.1 Metadata catalogues
Periodic reports of groundwater observation well metadata and time series statistics may be
published by the State DPC at 5-year or 10-year intervals. The reports should incorporate
temporal analysis and provide statistical summaries in tabular and graphical to make the
information accessible and interesting to data users. The following are typical contents of such a
periodic report:
• Introduction
• Data availability - maps and tabulations
• Descriptive account of annual groundwater levels since last periodic report
• Thematic maps e.g. contour maps of end of season groundwater levels
• Basic groundwater level statistics - monthly and annual means, maxima and minima: for the
standard climate normal period (1961-90) where available; for the updated decade; and for the
available period of record
• Analysis of periodicity and trend in groundwater level data
6.3.2 Monthly hydrological summaries
Routine monthly reports and statistics on the current state hydrological situation, including
assessments of rainfall, snow (where relevant), evaporation, river flow, groundwater and reservoir
stocks, provide users with a snapshot of the current situation and its historical context, and the
future outlook. Such information may provide a vital input for planning domestic or industrial water
supply, agricultural planning, hydropower and other water use sectors. Monthly summaries are
produced at the State DPC and should be published within 10 working days of the month covered.
For an example, see www.ceh.ac.uk/data/NRFA/nhmp/monthly_hs.html.
6.4 Special reports
Occasional special reports should also be published by the State DPC providing reactive analysis
in the aftermath of monsoon rains and subsequent recharge. The reports are normally combined
with reports of the resulting causative rainfall over the affected area. For an example, see
www.ceh.ac.uk/data/nrfa/nhmp/other_reports.html.
6.5 Dissemination to hydrological data users
Final (approved) groundwater quantity datasets are provided by Central/State hydrometric
agencies on a request basis. The online HIS data catalogue in e-GEMS, which shows the
availability of fully validated (approved) data, supports hydrometric agencies in disseminating their
data, and also helps hydrological data users to search available data and formulate their data
requests and the formats required and direct them to the appropriate agency. The more
comprehensive the information a data catalogue provides, the easier for users to identify the
monitoring stations of interest to them, and be aware of any limitations to exploiting the data
effectively. Users should be informed of the quality of any data supplied indicated by the data flag
(e.g. observed, estimated, suspect, etc). There may be a charge for the data which is the product
of significant investment in equipment and staff time. Data requests from users should be
processed promptly: at least 95% of queries should be dealt with within 5 working days, and the
remaining up to 5% of queries, which should be the more complex ones, within 20 working days.