SlideShare a Scribd company logo
1 of 26
What is disaster? 
A Disaster is a situation in which the community is incapable of 
coping. It is a natural or human-caused event which causes intense 
negative impacts on people, goods, services and/or the 
environment, exceeding the affected community’s capability to 
respond
What is disaster management? 
 Disaster management can be defined as the discipline and 
profession of applying science, technology, planning and 
management to deal with extreme events. 
 The emphasis of disaster management is prevention and loss 
reduction 
Disaster management activity is divided into the following phases 
as 
 Planning 
 Mitigation 
 Preparedness 
 Response 
 Recovery
ROLES THAT REMOTE SENSING AND GIS PLAY IN 
DISASTER MANAGEMENT PHRRASES 
 Planning 
• GIS is useful in helping with forward planning. 
• It provides the framework for planners and disaster managers to view spatial data by 
way of computer based maps. 
Mitigation 
•Representation of High risk areas 
•Facilitates the implementation of necessary mechanism to lessen the impact. 
Preparedness 
•Identification of emergency areas 
•Positions of related departments, Agencies, and Human Resources 
•Make it easier for security and shelters provides to plan the strategies 
Response 
•Provide accurate information on exact location of an emergency situation 
•Time saving during the determination of trouble areas (Quick Response) 
•Used as floor guide for evacuation routes
Recovery 
Mapping level of damage 
Information related to disrupted infrastructure, number of 
persons died or injured and impact on Environment. 
GIS and data gathering- 
The data required for disaster management is coming from different 
scientific disciplines, and should be integrated 
Data integration is one of the strongest points of GIS. In general the 
following types of data are required: 
• Data on the disastrous phenomena (e.g. landslides, floods, 
earthquakes), their location, frequency, magnitude etc. 
• Data on the environment in which the disastrous events might take 
place: topography, geology, geo-morphology, soils, hydrology, land 
use, vegetation etc. 
• Data on the elements that might be destroyed if the event takes 
place: infrastructure, settlements , population, socio-economic data
Role of remote sensing in CYCLONE-MITIGATION 
PREPAREDNESS RESCUE RECOVERY SATELLITES USED: 
Risk modelling; 
vulnerability analysis. 
Early warning; 
long-range climate 
modelling 
Identifying escape 
routes; 
crisis mapping; 
impact assessment; 
cyclone monitoring; 
storm surge 
predictions. 
Damage assessment; 
spatial planning. 
KALPANA-1; 
INSAT-3A; QuikScat 
radar; Meteosat 
Fig: Movement of cyclone
. 
Through these pictures one can estimate the storm's position, 
direction and speed, maximum wind speeds, areas likely to be 
affected, and likely storm surges. The programme issues these to 
government officials, river port authorities, the general public, coast 
guard, non-governmental organisations and cyclone preparedness 
programmes across the world
CASE STUDY ON PHALIN CYCLONE- 
7th oct,2013 
 8th oct,2013 
10th oct,2013 
12th oct,2013
7th October, 2013: Indian Meteorological Department received 
information from KALPANA I, OCEANSAT and INSAT 3A Doppler radars 
deployed at vulnerable places, with over-lap, sensors in the sea and 
through the ships, about a cyclone forming in the gulf between 
Andaman Nicobar and Thailand named PHAILIN (Thai for “Sapphire”). 
8th October, 2013: IMD confirmed cyclone formation and predicted it 
as “severe cyclone” and its effects would be felt from Kalingapatnam 
in Andhra Pradesh to Paradeep in Odisha, and that it would probably 
first strikethe port of Gopalpur in Ganjam district at about 5 pm on 12 
October. The wind speed could touch 200(km/h). 
10th October, 2013: IMD prediction of a severe cyclone was 
converted to a “very severe cyclonic storm” with wind speeds up to 
220 kmph. the US Navy’s Joint Typhoon Warning Centre predicted it 
would have wind speeds up to 315 km/h. 
12th October, 2013: The “very severe” cyclonic storm had its landfall 
at Gopalpur port at about 9 pm with a wind speed of 200 km/h.
MITIGATION PREPAREDNESS RESPONSE RECOVERY 
GIS: Risk modelling; 
vulnerability analysis; 
Strengthening EWS; 
Disaster Response 
Infrastructures; Disaster Drills 
Early Warning System; 
Constant updates from 
ISRO, IMD and USNJTWC 
etc.; 
Distribution of Satellite 
Phones , VHF and 
HAMRADIO to DMs, 
BDO’s, Sarpanch etc.; 
Mass Evacuation on the 
basis of cyclone’s path 
over the state. 
Google Crisis Map; Google 
People Finder; 
ODRAF & NDRF Deployment; 
Relief Operations 
coordinated by 
Navy & Air Force; 
Disaster 
Assessment; 
Logistics 
Coordinated by 
Centrally Operated 
Units; 
Spatial planning;
MITIGATION PREPAREDNESS RESCUE RECOVERY SATELLITES USED 
Mapping flood-prone 
areas; 
delineating flood-plains; 
land-use mapping. 
Flood detection; 
early warning; 
rainfall mapping. 
Flood mapping; 
evacuation 
planning; 
damage 
assessment. 
Damage 
assessment; 
spatial planning. 
Tropical Rainfall 
Monitoring 
Mission; 
AMSR-E; KALPANA 
I; 
Role of GIS in floods
CASE STUDY 
TITLE: GIS-based disaster management, A case study for Allahabad 
Sadar sub-district(India) by S.H. Abbas, R.K. Srivastava and R.P. 
Tiwari ( 2009) 
JOURNAL :Management of Environmental Quality: An 
International Journal,2009 
OBJECTIVE 
To demonstrate a Geographic Information System (GIS)-based study 
on development of District Disaster Management System for floods 
for Allahabad Sadar Sub-District(India)
STUDY AREA 
The study area is Sadar, sub-district of Allahabad (India) which is 
surrounded by river Ganga and Yamuna 
located between 81Âş 45Í´ to 82Âş latitude and 25Âş 15Í´ to 25Âş 30Í´ longitude 
METHODOLOGY 
•An approach has been designed to explore the scope for the 
combination of Disaster Management and GIS. 
•The flood-prone areas have been identified and their positions are 
marked using Arc View. 
• GIS has been exploited to obtain the spatial information for the 
effective Disaster Management for flood-affected areas
Fig: Map showing Ganga and Yamuna river around the study area
GIS-based maps for Disaster Management 
Various maps were generated for the analysis in the GIS platform 
like- 
• Flood-affected areas of Sadar sub-district 
• Population density distribution in flood prone areas 
• Villages having road connectivity ,hospital facility in flood 
affected areas 
• Route map for the disaster prone area
and Yamuna river both 
Fig: Map showing areas affected by flood by Ganga and Yamuna river
• If any government agency or any non-governmental organization 
wants to provide any type of help to the affected people, they can 
follow above generated map for having idea about the requirement. 
•Village administrator can monitor all flood management operations 
using GIS data base 
Fig: Map showing road connectivity
• Previous shows the road network of villages that are more 
vulnerable and are not been connected by main road as well as 
metal road. 
•The villages that are not having transport connectivity can be 
identified. 
•With the help of above information, one can 
provide rescue first to those villages not connected through metal 
road and after that provide transportation to metal road connected 
villages.
SUMMARY- 
• It shows that in that sub-district Sadar of Allahabad 54 villages are 
affected by flood when high flood level reaches up to 84.50 meters. 
• The GIS generated map shows that out of 54 villages only seven 
villages have mud road and 47 villages have paved road. 
•Thus, GIS tool can be beneficial for getting all the relevant 
information at the time of occurrence of the disaster, and can help in 
planning and management.
Role of GIS in Drought 
DISASTER MITIGATION PREPAREDNESS RECOVERY RESCUE SATELLITES USED 
DROUGHT Risk modelling; 
vulnerability 
analysis; 
land and water 
management 
planning. 
Weather 
forecasting; 
vegetation 
monitoring; 
crop water 
requirement 
mapping; 
early warning. 
Monitoring 
vegetation; 
damage 
assessment. 
Informing 
drought 
mitigation. 
FEWS NET; 
AVHRR; 
MODIS; SPOT 
NDVI (is calculated from the visible and near-infrared light reflected 
by vegetation . Healthy vegetation absorbs most of the visible light 
that hits it, and reflects a large portion of the near-infrared light. 
Unhealthy or sparse vegetation reflects more visible light and less 
near-infrared light
Calculations of NDVI for a given pixel always result in a number that 
ranges from minus one (-1) to plus one (+1); however, no green leaves 
gives a value close to zero. A zero means no vegetation and close to +1 
(0.8 - 0.9) indicates the highest possible density of green leaves. 
NDVI= (NIR+RED)/(NIR-RED) 
where: 
NIR= reflectance in near 
infrared band 
RED= reflectance in red band
Fig: Pictures showing difference between densely vegetation 
area and drought areas
ROLE OF Remote sensing in earthquake- 
MITIGATION PREPAREDNESS RESCUE RECOVERY SATELLITES USED 
Building stock 
assessment; 
hazard mapping. 
Measuring strain 
accumulation. 
Planning routes for 
search and rescue; 
damage assessment; 
evacuation planning; 
deformation 
mapping. 
Damage assessment; 
identifying sites for 
rehabilitation. 
PALSAR; 
IKONOS 2; 
InSAR; SPOT; IRS
Picture showing predicted Tsunami wave amplitude 
Picture showing collapsed building
Disaster management using Remote sensing and GIS

More Related Content

What's hot

GIS application in Natural Resource Management
GIS application in Natural Resource ManagementGIS application in Natural Resource Management
GIS application in Natural Resource Management
Achal Gupta
 
Natural Hazards & ROLE of satellite remote sensing
Natural Hazards & ROLE of satellite remote sensingNatural Hazards & ROLE of satellite remote sensing
Natural Hazards & ROLE of satellite remote sensing
ABU UMEER BANBHAN
 

What's hot (20)

Remote Sensing and GIS in Land Use / Land Cover Mapping
Remote Sensing and GIS in Land Use / Land Cover MappingRemote Sensing and GIS in Land Use / Land Cover Mapping
Remote Sensing and GIS in Land Use / Land Cover Mapping
 
drought monitoring and management using remote sensing
drought monitoring and management using remote sensingdrought monitoring and management using remote sensing
drought monitoring and management using remote sensing
 
Land use cover pptx.
Land use cover pptx.Land use cover pptx.
Land use cover pptx.
 
landslides resilient planning ppt
landslides resilient planning pptlandslides resilient planning ppt
landslides resilient planning ppt
 
Microwave remote sensing
Microwave remote sensingMicrowave remote sensing
Microwave remote sensing
 
Landslide hazard zonation mapping
Landslide hazard zonation mappingLandslide hazard zonation mapping
Landslide hazard zonation mapping
 
Role of RS & GIS; gis in disaster management prepared by er. bishnu khatri
Role of RS & GIS; gis in disaster management prepared by er. bishnu khatriRole of RS & GIS; gis in disaster management prepared by er. bishnu khatri
Role of RS & GIS; gis in disaster management prepared by er. bishnu khatri
 
Remote Sensing and GIS for Natural Hazards Assessment and Disaster Risk Manag...
Remote Sensing and GIS for Natural Hazards Assessment and Disaster Risk Manag...Remote Sensing and GIS for Natural Hazards Assessment and Disaster Risk Manag...
Remote Sensing and GIS for Natural Hazards Assessment and Disaster Risk Manag...
 
International Decades for Natural Disaster Reduction ( IDNDR )
International Decades for Natural Disaster 		          Reduction ( IDNDR )International Decades for Natural Disaster 		          Reduction ( IDNDR )
International Decades for Natural Disaster Reduction ( IDNDR )
 
GIS application in Natural Resource Management
GIS application in Natural Resource ManagementGIS application in Natural Resource Management
GIS application in Natural Resource Management
 
Digital Elevation Model (DEM)
Digital Elevation Model (DEM)Digital Elevation Model (DEM)
Digital Elevation Model (DEM)
 
Basics of Remote Sensing
Basics of Remote SensingBasics of Remote Sensing
Basics of Remote Sensing
 
National disaster management framework 2005
National disaster management framework 2005National disaster management framework 2005
National disaster management framework 2005
 
Application of remote sensing and gis for groundwater
Application of remote sensing and gis for groundwaterApplication of remote sensing and gis for groundwater
Application of remote sensing and gis for groundwater
 
Remote sensing - Sensors, Platforms and Satellite orbits
Remote sensing - Sensors, Platforms and Satellite orbitsRemote sensing - Sensors, Platforms and Satellite orbits
Remote sensing - Sensors, Platforms and Satellite orbits
 
Natural Hazards & ROLE of satellite remote sensing
Natural Hazards & ROLE of satellite remote sensingNatural Hazards & ROLE of satellite remote sensing
Natural Hazards & ROLE of satellite remote sensing
 
Microwave remote sensing
Microwave remote sensingMicrowave remote sensing
Microwave remote sensing
 
geo information ppt in disaster management
geo information ppt in disaster managementgeo information ppt in disaster management
geo information ppt in disaster management
 
Disaster management framework in India
Disaster management framework in IndiaDisaster management framework in India
Disaster management framework in India
 
Remote Sensing Platforms and Sensors
Remote Sensing Platforms and SensorsRemote Sensing Platforms and Sensors
Remote Sensing Platforms and Sensors
 

Similar to Disaster management using Remote sensing and GIS

Santillan assessing the-impacts_of_flooding_caused_by_extreme_rainfall_events...
Santillan assessing the-impacts_of_flooding_caused_by_extreme_rainfall_events...Santillan assessing the-impacts_of_flooding_caused_by_extreme_rainfall_events...
Santillan assessing the-impacts_of_flooding_caused_by_extreme_rainfall_events...
Vanrosco
 
Detection of hazard prone areas in the upper himalayan region in gis environment
Detection of hazard prone areas in the upper himalayan region in gis environmentDetection of hazard prone areas in the upper himalayan region in gis environment
Detection of hazard prone areas in the upper himalayan region in gis environment
eSAT Publishing House
 
Abstract Shuvra
Abstract ShuvraAbstract Shuvra
Abstract Shuvra
065msw418
 
MODELLING THE IMPACT OF FLOODING USING GEOGRAPHIC INFORMATION SYSTEM AND REMO...
MODELLING THE IMPACT OF FLOODING USING GEOGRAPHIC INFORMATION SYSTEM AND REMO...MODELLING THE IMPACT OF FLOODING USING GEOGRAPHIC INFORMATION SYSTEM AND REMO...
MODELLING THE IMPACT OF FLOODING USING GEOGRAPHIC INFORMATION SYSTEM AND REMO...
International Journal of Technical Research & Application
 
APPLICATIONS OF REMOTE SENSING AND GIS TECHNOLOGIES IN FLOOD RISK MANAGEMENT
APPLICATIONS OF REMOTE SENSING AND GIS TECHNOLOGIES IN FLOOD RISK MANAGEMENTAPPLICATIONS OF REMOTE SENSING AND GIS TECHNOLOGIES IN FLOOD RISK MANAGEMENT
APPLICATIONS OF REMOTE SENSING AND GIS TECHNOLOGIES IN FLOOD RISK MANAGEMENT
rsmahabir
 
Remote Sensing Method for Flood Management System
 Remote Sensing Method for Flood Management System Remote Sensing Method for Flood Management System
Remote Sensing Method for Flood Management System
IJMREMJournal
 

Similar to Disaster management using Remote sensing and GIS (20)

Basics of Disater And its Management.pdf
Basics of Disater And its Management.pdfBasics of Disater And its Management.pdf
Basics of Disater And its Management.pdf
 
Disaster management Past, Present, and Future
Disaster management Past, Present, and FutureDisaster management Past, Present, and Future
Disaster management Past, Present, and Future
 
Flood Inundated Agricultural Damage and Loss Assessment Using Earth Observati...
Flood Inundated Agricultural Damage and Loss Assessment Using Earth Observati...Flood Inundated Agricultural Damage and Loss Assessment Using Earth Observati...
Flood Inundated Agricultural Damage and Loss Assessment Using Earth Observati...
 
Presentation of Academic Writting .pdf
Presentation of Academic Writting .pdfPresentation of Academic Writting .pdf
Presentation of Academic Writting .pdf
 
Santillan assessing the-impacts_of_flooding_caused_by_extreme_rainfall_events...
Santillan assessing the-impacts_of_flooding_caused_by_extreme_rainfall_events...Santillan assessing the-impacts_of_flooding_caused_by_extreme_rainfall_events...
Santillan assessing the-impacts_of_flooding_caused_by_extreme_rainfall_events...
 
Detection of hazard prone areas in the upper himalayan region in gis environment
Detection of hazard prone areas in the upper himalayan region in gis environmentDetection of hazard prone areas in the upper himalayan region in gis environment
Detection of hazard prone areas in the upper himalayan region in gis environment
 
PROJECT AND THESIS slide.pptx
PROJECT AND THESIS slide.pptxPROJECT AND THESIS slide.pptx
PROJECT AND THESIS slide.pptx
 
Application Of Deep Learning On UAV-Based Aerial Images For Flood Detection
Application Of Deep Learning On UAV-Based Aerial Images For Flood DetectionApplication Of Deep Learning On UAV-Based Aerial Images For Flood Detection
Application Of Deep Learning On UAV-Based Aerial Images For Flood Detection
 
Flood Evaluation, Livelihood Implications and Adaptation Measures in Sri Lanka
Flood Evaluation, Livelihood Implications and Adaptation Measures in Sri LankaFlood Evaluation, Livelihood Implications and Adaptation Measures in Sri Lanka
Flood Evaluation, Livelihood Implications and Adaptation Measures in Sri Lanka
 
Rahul Bajpai M.tech Remote sensing & GIS RSACUP
Rahul Bajpai M.tech Remote sensing & GIS RSACUPRahul Bajpai M.tech Remote sensing & GIS RSACUP
Rahul Bajpai M.tech Remote sensing & GIS RSACUP
 
Abstract Shuvra
Abstract ShuvraAbstract Shuvra
Abstract Shuvra
 
Geographic Information System unit 5
Geographic Information System   unit 5Geographic Information System   unit 5
Geographic Information System unit 5
 
DELINEATION OF LANDSLIDE AREA USING SAR INTERFEROMETRY AND D-INSAR :A CASE ST...
DELINEATION OF LANDSLIDE AREA USING SAR INTERFEROMETRY AND D-INSAR :A CASE ST...DELINEATION OF LANDSLIDE AREA USING SAR INTERFEROMETRY AND D-INSAR :A CASE ST...
DELINEATION OF LANDSLIDE AREA USING SAR INTERFEROMETRY AND D-INSAR :A CASE ST...
 
Landslide Susceptibility Map using Remote Sensing and GIS
Landslide Susceptibility Map using Remote Sensing and GISLandslide Susceptibility Map using Remote Sensing and GIS
Landslide Susceptibility Map using Remote Sensing and GIS
 
disaster management in Nepal with application of Remote Sensing
disaster management in Nepal with application of Remote Sensingdisaster management in Nepal with application of Remote Sensing
disaster management in Nepal with application of Remote Sensing
 
MODELLING THE IMPACT OF FLOODING USING GEOGRAPHIC INFORMATION SYSTEM AND REMO...
MODELLING THE IMPACT OF FLOODING USING GEOGRAPHIC INFORMATION SYSTEM AND REMO...MODELLING THE IMPACT OF FLOODING USING GEOGRAPHIC INFORMATION SYSTEM AND REMO...
MODELLING THE IMPACT OF FLOODING USING GEOGRAPHIC INFORMATION SYSTEM AND REMO...
 
APPLICATIONS OF REMOTE SENSING AND GIS TECHNOLOGIES IN FLOOD RISK MANAGEMENT
APPLICATIONS OF REMOTE SENSING AND GIS TECHNOLOGIES IN FLOOD RISK MANAGEMENTAPPLICATIONS OF REMOTE SENSING AND GIS TECHNOLOGIES IN FLOOD RISK MANAGEMENT
APPLICATIONS OF REMOTE SENSING AND GIS TECHNOLOGIES IN FLOOD RISK MANAGEMENT
 
IRJET- Preparation of Flood Model and Hazard Estimation on Yamuna River (...
IRJET-  	  Preparation of Flood Model and Hazard Estimation on Yamuna River (...IRJET-  	  Preparation of Flood Model and Hazard Estimation on Yamuna River (...
IRJET- Preparation of Flood Model and Hazard Estimation on Yamuna River (...
 
Remote Sensing Method for Flood Management System
 Remote Sensing Method for Flood Management System Remote Sensing Method for Flood Management System
Remote Sensing Method for Flood Management System
 
Flood risk mapping using GIS and remote sensing and SAR
Flood risk mapping using GIS and remote sensing and SARFlood risk mapping using GIS and remote sensing and SAR
Flood risk mapping using GIS and remote sensing and SAR
 

Recently uploaded

"Lesotho Leaps Forward: A Chronicle of Transformative Developments"
"Lesotho Leaps Forward: A Chronicle of Transformative Developments""Lesotho Leaps Forward: A Chronicle of Transformative Developments"
"Lesotho Leaps Forward: A Chronicle of Transformative Developments"
mphochane1998
 
Call Girls in South Ex (delhi) call me [🔝9953056974🔝] escort service 24X7
Call Girls in South Ex (delhi) call me [🔝9953056974🔝] escort service 24X7Call Girls in South Ex (delhi) call me [🔝9953056974🔝] escort service 24X7
Call Girls in South Ex (delhi) call me [🔝9953056974🔝] escort service 24X7
9953056974 Low Rate Call Girls In Saket, Delhi NCR
 
1_Introduction + EAM Vocabulary + how to navigate in EAM.pdf
1_Introduction + EAM Vocabulary + how to navigate in EAM.pdf1_Introduction + EAM Vocabulary + how to navigate in EAM.pdf
1_Introduction + EAM Vocabulary + how to navigate in EAM.pdf
AldoGarca30
 
Verification of thevenin's theorem for BEEE Lab (1).pptx
Verification of thevenin's theorem for BEEE Lab (1).pptxVerification of thevenin's theorem for BEEE Lab (1).pptx
Verification of thevenin's theorem for BEEE Lab (1).pptx
chumtiyababu
 
DeepFakes presentation : brief idea of DeepFakes
DeepFakes presentation : brief idea of DeepFakesDeepFakes presentation : brief idea of DeepFakes
DeepFakes presentation : brief idea of DeepFakes
MayuraD1
 
Integrated Test Rig For HTFE-25 - Neometrix
Integrated Test Rig For HTFE-25 - NeometrixIntegrated Test Rig For HTFE-25 - Neometrix
Integrated Test Rig For HTFE-25 - Neometrix
Neometrix_Engineering_Pvt_Ltd
 

Recently uploaded (20)

HAND TOOLS USED AT ELECTRONICS WORK PRESENTED BY KOUSTAV SARKAR
HAND TOOLS USED AT ELECTRONICS WORK PRESENTED BY KOUSTAV SARKARHAND TOOLS USED AT ELECTRONICS WORK PRESENTED BY KOUSTAV SARKAR
HAND TOOLS USED AT ELECTRONICS WORK PRESENTED BY KOUSTAV SARKAR
 
Orlando’s Arnold Palmer Hospital Layout Strategy-1.pptx
Orlando’s Arnold Palmer Hospital Layout Strategy-1.pptxOrlando’s Arnold Palmer Hospital Layout Strategy-1.pptx
Orlando’s Arnold Palmer Hospital Layout Strategy-1.pptx
 
Computer Networks Basics of Network Devices
Computer Networks  Basics of Network DevicesComputer Networks  Basics of Network Devices
Computer Networks Basics of Network Devices
 
kiln thermal load.pptx kiln tgermal load
kiln thermal load.pptx kiln tgermal loadkiln thermal load.pptx kiln tgermal load
kiln thermal load.pptx kiln tgermal load
 
"Lesotho Leaps Forward: A Chronicle of Transformative Developments"
"Lesotho Leaps Forward: A Chronicle of Transformative Developments""Lesotho Leaps Forward: A Chronicle of Transformative Developments"
"Lesotho Leaps Forward: A Chronicle of Transformative Developments"
 
Tamil Call Girls Bhayandar WhatsApp +91-9930687706, Best Service
Tamil Call Girls Bhayandar WhatsApp +91-9930687706, Best ServiceTamil Call Girls Bhayandar WhatsApp +91-9930687706, Best Service
Tamil Call Girls Bhayandar WhatsApp +91-9930687706, Best Service
 
Thermal Engineering -unit - III & IV.ppt
Thermal Engineering -unit - III & IV.pptThermal Engineering -unit - III & IV.ppt
Thermal Engineering -unit - III & IV.ppt
 
Introduction to Serverless with AWS Lambda
Introduction to Serverless with AWS LambdaIntroduction to Serverless with AWS Lambda
Introduction to Serverless with AWS Lambda
 
NO1 Top No1 Amil Baba In Azad Kashmir, Kashmir Black Magic Specialist Expert ...
NO1 Top No1 Amil Baba In Azad Kashmir, Kashmir Black Magic Specialist Expert ...NO1 Top No1 Amil Baba In Azad Kashmir, Kashmir Black Magic Specialist Expert ...
NO1 Top No1 Amil Baba In Azad Kashmir, Kashmir Black Magic Specialist Expert ...
 
Unleashing the Power of the SORA AI lastest leap
Unleashing the Power of the SORA AI lastest leapUnleashing the Power of the SORA AI lastest leap
Unleashing the Power of the SORA AI lastest leap
 
COST-EFFETIVE and Energy Efficient BUILDINGS ptx
COST-EFFETIVE  and Energy Efficient BUILDINGS ptxCOST-EFFETIVE  and Energy Efficient BUILDINGS ptx
COST-EFFETIVE and Energy Efficient BUILDINGS ptx
 
A CASE STUDY ON CERAMIC INDUSTRY OF BANGLADESH.pptx
A CASE STUDY ON CERAMIC INDUSTRY OF BANGLADESH.pptxA CASE STUDY ON CERAMIC INDUSTRY OF BANGLADESH.pptx
A CASE STUDY ON CERAMIC INDUSTRY OF BANGLADESH.pptx
 
Call Girls in South Ex (delhi) call me [🔝9953056974🔝] escort service 24X7
Call Girls in South Ex (delhi) call me [🔝9953056974🔝] escort service 24X7Call Girls in South Ex (delhi) call me [🔝9953056974🔝] escort service 24X7
Call Girls in South Ex (delhi) call me [🔝9953056974🔝] escort service 24X7
 
1_Introduction + EAM Vocabulary + how to navigate in EAM.pdf
1_Introduction + EAM Vocabulary + how to navigate in EAM.pdf1_Introduction + EAM Vocabulary + how to navigate in EAM.pdf
1_Introduction + EAM Vocabulary + how to navigate in EAM.pdf
 
Verification of thevenin's theorem for BEEE Lab (1).pptx
Verification of thevenin's theorem for BEEE Lab (1).pptxVerification of thevenin's theorem for BEEE Lab (1).pptx
Verification of thevenin's theorem for BEEE Lab (1).pptx
 
Double Revolving field theory-how the rotor develops torque
Double Revolving field theory-how the rotor develops torqueDouble Revolving field theory-how the rotor develops torque
Double Revolving field theory-how the rotor develops torque
 
DeepFakes presentation : brief idea of DeepFakes
DeepFakes presentation : brief idea of DeepFakesDeepFakes presentation : brief idea of DeepFakes
DeepFakes presentation : brief idea of DeepFakes
 
HOA1&2 - Module 3 - PREHISTORCI ARCHITECTURE OF KERALA.pptx
HOA1&2 - Module 3 - PREHISTORCI ARCHITECTURE OF KERALA.pptxHOA1&2 - Module 3 - PREHISTORCI ARCHITECTURE OF KERALA.pptx
HOA1&2 - Module 3 - PREHISTORCI ARCHITECTURE OF KERALA.pptx
 
S1S2 B.Arch MGU - HOA1&2 Module 3 -Temple Architecture of Kerala.pptx
S1S2 B.Arch MGU - HOA1&2 Module 3 -Temple Architecture of Kerala.pptxS1S2 B.Arch MGU - HOA1&2 Module 3 -Temple Architecture of Kerala.pptx
S1S2 B.Arch MGU - HOA1&2 Module 3 -Temple Architecture of Kerala.pptx
 
Integrated Test Rig For HTFE-25 - Neometrix
Integrated Test Rig For HTFE-25 - NeometrixIntegrated Test Rig For HTFE-25 - Neometrix
Integrated Test Rig For HTFE-25 - Neometrix
 

Disaster management using Remote sensing and GIS

  • 1. What is disaster? A Disaster is a situation in which the community is incapable of coping. It is a natural or human-caused event which causes intense negative impacts on people, goods, services and/or the environment, exceeding the affected community’s capability to respond
  • 2. What is disaster management?  Disaster management can be defined as the discipline and profession of applying science, technology, planning and management to deal with extreme events.  The emphasis of disaster management is prevention and loss reduction Disaster management activity is divided into the following phases as  Planning  Mitigation  Preparedness  Response  Recovery
  • 3. ROLES THAT REMOTE SENSING AND GIS PLAY IN DISASTER MANAGEMENT PHRRASES  Planning • GIS is useful in helping with forward planning. • It provides the framework for planners and disaster managers to view spatial data by way of computer based maps. Mitigation •Representation of High risk areas •Facilitates the implementation of necessary mechanism to lessen the impact. Preparedness •Identification of emergency areas •Positions of related departments, Agencies, and Human Resources •Make it easier for security and shelters provides to plan the strategies Response •Provide accurate information on exact location of an emergency situation •Time saving during the determination of trouble areas (Quick Response) •Used as floor guide for evacuation routes
  • 4. Recovery Mapping level of damage Information related to disrupted infrastructure, number of persons died or injured and impact on Environment. GIS and data gathering- The data required for disaster management is coming from different scientific disciplines, and should be integrated Data integration is one of the strongest points of GIS. In general the following types of data are required: • Data on the disastrous phenomena (e.g. landslides, floods, earthquakes), their location, frequency, magnitude etc. • Data on the environment in which the disastrous events might take place: topography, geology, geo-morphology, soils, hydrology, land use, vegetation etc. • Data on the elements that might be destroyed if the event takes place: infrastructure, settlements , population, socio-economic data
  • 5. Role of remote sensing in CYCLONE-MITIGATION PREPAREDNESS RESCUE RECOVERY SATELLITES USED: Risk modelling; vulnerability analysis. Early warning; long-range climate modelling Identifying escape routes; crisis mapping; impact assessment; cyclone monitoring; storm surge predictions. Damage assessment; spatial planning. KALPANA-1; INSAT-3A; QuikScat radar; Meteosat Fig: Movement of cyclone
  • 6. . Through these pictures one can estimate the storm's position, direction and speed, maximum wind speeds, areas likely to be affected, and likely storm surges. The programme issues these to government officials, river port authorities, the general public, coast guard, non-governmental organisations and cyclone preparedness programmes across the world
  • 7. CASE STUDY ON PHALIN CYCLONE- 7th oct,2013  8th oct,2013 10th oct,2013 12th oct,2013
  • 8. 7th October, 2013: Indian Meteorological Department received information from KALPANA I, OCEANSAT and INSAT 3A Doppler radars deployed at vulnerable places, with over-lap, sensors in the sea and through the ships, about a cyclone forming in the gulf between Andaman Nicobar and Thailand named PHAILIN (Thai for “Sapphire”). 8th October, 2013: IMD confirmed cyclone formation and predicted it as “severe cyclone” and its effects would be felt from Kalingapatnam in Andhra Pradesh to Paradeep in Odisha, and that it would probably first strikethe port of Gopalpur in Ganjam district at about 5 pm on 12 October. The wind speed could touch 200(km/h). 10th October, 2013: IMD prediction of a severe cyclone was converted to a “very severe cyclonic storm” with wind speeds up to 220 kmph. the US Navy’s Joint Typhoon Warning Centre predicted it would have wind speeds up to 315 km/h. 12th October, 2013: The “very severe” cyclonic storm had its landfall at Gopalpur port at about 9 pm with a wind speed of 200 km/h.
  • 9. MITIGATION PREPAREDNESS RESPONSE RECOVERY GIS: Risk modelling; vulnerability analysis; Strengthening EWS; Disaster Response Infrastructures; Disaster Drills Early Warning System; Constant updates from ISRO, IMD and USNJTWC etc.; Distribution of Satellite Phones , VHF and HAMRADIO to DMs, BDO’s, Sarpanch etc.; Mass Evacuation on the basis of cyclone’s path over the state. Google Crisis Map; Google People Finder; ODRAF & NDRF Deployment; Relief Operations coordinated by Navy & Air Force; Disaster Assessment; Logistics Coordinated by Centrally Operated Units; Spatial planning;
  • 10. MITIGATION PREPAREDNESS RESCUE RECOVERY SATELLITES USED Mapping flood-prone areas; delineating flood-plains; land-use mapping. Flood detection; early warning; rainfall mapping. Flood mapping; evacuation planning; damage assessment. Damage assessment; spatial planning. Tropical Rainfall Monitoring Mission; AMSR-E; KALPANA I; Role of GIS in floods
  • 11.
  • 12. CASE STUDY TITLE: GIS-based disaster management, A case study for Allahabad Sadar sub-district(India) by S.H. Abbas, R.K. Srivastava and R.P. Tiwari ( 2009) JOURNAL :Management of Environmental Quality: An International Journal,2009 OBJECTIVE To demonstrate a Geographic Information System (GIS)-based study on development of District Disaster Management System for floods for Allahabad Sadar Sub-District(India)
  • 13. STUDY AREA The study area is Sadar, sub-district of Allahabad (India) which is surrounded by river Ganga and Yamuna located between 81Âş 45Í´ to 82Âş latitude and 25Âş 15Í´ to 25Âş 30Í´ longitude METHODOLOGY •An approach has been designed to explore the scope for the combination of Disaster Management and GIS. •The flood-prone areas have been identified and their positions are marked using Arc View. • GIS has been exploited to obtain the spatial information for the effective Disaster Management for flood-affected areas
  • 14. Fig: Map showing Ganga and Yamuna river around the study area
  • 15. GIS-based maps for Disaster Management Various maps were generated for the analysis in the GIS platform like- • Flood-affected areas of Sadar sub-district • Population density distribution in flood prone areas • Villages having road connectivity ,hospital facility in flood affected areas • Route map for the disaster prone area
  • 16. and Yamuna river both Fig: Map showing areas affected by flood by Ganga and Yamuna river
  • 17. • If any government agency or any non-governmental organization wants to provide any type of help to the affected people, they can follow above generated map for having idea about the requirement. •Village administrator can monitor all flood management operations using GIS data base Fig: Map showing road connectivity
  • 18. • Previous shows the road network of villages that are more vulnerable and are not been connected by main road as well as metal road. •The villages that are not having transport connectivity can be identified. •With the help of above information, one can provide rescue first to those villages not connected through metal road and after that provide transportation to metal road connected villages.
  • 19. SUMMARY- • It shows that in that sub-district Sadar of Allahabad 54 villages are affected by flood when high flood level reaches up to 84.50 meters. • The GIS generated map shows that out of 54 villages only seven villages have mud road and 47 villages have paved road. •Thus, GIS tool can be beneficial for getting all the relevant information at the time of occurrence of the disaster, and can help in planning and management.
  • 20. Role of GIS in Drought DISASTER MITIGATION PREPAREDNESS RECOVERY RESCUE SATELLITES USED DROUGHT Risk modelling; vulnerability analysis; land and water management planning. Weather forecasting; vegetation monitoring; crop water requirement mapping; early warning. Monitoring vegetation; damage assessment. Informing drought mitigation. FEWS NET; AVHRR; MODIS; SPOT NDVI (is calculated from the visible and near-infrared light reflected by vegetation . Healthy vegetation absorbs most of the visible light that hits it, and reflects a large portion of the near-infrared light. Unhealthy or sparse vegetation reflects more visible light and less near-infrared light
  • 21. Calculations of NDVI for a given pixel always result in a number that ranges from minus one (-1) to plus one (+1); however, no green leaves gives a value close to zero. A zero means no vegetation and close to +1 (0.8 - 0.9) indicates the highest possible density of green leaves. NDVI= (NIR+RED)/(NIR-RED) where: NIR= reflectance in near infrared band RED= reflectance in red band
  • 22. Fig: Pictures showing difference between densely vegetation area and drought areas
  • 23. ROLE OF Remote sensing in earthquake- MITIGATION PREPAREDNESS RESCUE RECOVERY SATELLITES USED Building stock assessment; hazard mapping. Measuring strain accumulation. Planning routes for search and rescue; damage assessment; evacuation planning; deformation mapping. Damage assessment; identifying sites for rehabilitation. PALSAR; IKONOS 2; InSAR; SPOT; IRS
  • 24.
  • 25. Picture showing predicted Tsunami wave amplitude Picture showing collapsed building