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The Gila-Salt-Verde River System:
Improving River Forecasts and
Emergency Management through
Visualization
Douglas Blatchford, PE
Pennsylvania State MGIS Program
Advisors: Dr. Miller, Dr. Reed, Dr. Kollat
Geography 596A, Summer 2013
Overview

 Background
 Colorado River/Gila River Systems
 Operation and emergency management forecast web apps in
the Phoenix metropolitan area
 Visual Analytics

 Goals and objectives
 Enhance existing web-based tools through visualization

 Proposed methodology
 Develop mash-up based on Google Map API

 Project timeline
Background

 Gila is a major tributary to the Colorado River System
 Flows through southern Arizona

 Dams provide water supply and flood protection for
Phoenix metro area
 Dams operated by Salt River Project (SRP) and the
United States Army Corp of Engineers (USACE)
 Operations forecast is key to managing water
resources
Colorado River Basin
-Colorado River supplies water to

municipalities and irrigators
throughout the West
-Dams along the river are operated to
meet water user demands in Arizona
California , Nevada and Mexico
-Accessed from the Colorado River Water Users Association
(CRWUA), July 2013 from
http://crwua.org/ColoradoRiver/RiverMap.aspx
Gila River Basin
-Gila-Salt-Verde River system, New
Mexico and Arizona as related to the
Colorado River
-Flow along the Gila at Yuma affects
major operations of Colorado River
and water levels in Lake Mead,
behind Hoover Dam
Accessed July 2013 from
http://www.lifeinlakehavasu.com/lower-colorado-riverarea.html
Facilities
Gila-Salt-Verde River system drains
through Phoenix metropolitan area.
SRP facilities provide water supply
and flood control protection.
Dams include :
-Gila:
-Painted Rock and Coolidge
-Salt:
-Stewart Mountain, Mormon Flat,
Horse Mesa and Roosevelt
-Verde:
-Bartlett and Horse shoe
Operations Forecast
The Colorado River Basin Forecast Center
(CBRFC) issues forecasts online for the
Gila-Salt-Verde River system as well as
other major rivers in the basin.
Accessed July 2013 from the CBRFC (http://www.cbrfc.noaa.gov/)
Operations Forecast
River operators and emergency
managers typically access existing
and future gage data.
Accessed July 2013 from
CBRFC (http://www.cbrfc.noaa.gov/)
Operations Forecast
Gila River watershed from CBRFC
website.

Accessed July 2013 from
CBRFC (http://www.cbrfc.noaa.gov/)
Operations Forecast
USACE provides a webpage with links
to Gila-Salt-Verde River system and
USGS gage sites.

-Provides easier access to existing data
-No forecast modeling like CBRFC
Accessed July 2013 from:
USACE (http://198.17.86.43/cgibin/cgiwrap/zinger/basinStatus.cgi?gilariver)
Visual Analytics

Visual analytics is an outgrowth of the fields of:
Information visualization
Scientific visualization
Analytical reasoning
Facilitated by interactive visual interfaces

Goal is to process data for analytic discourse
Constructive evaluation, correction, and rapid
development of processes and models
This ultimately improves our knowledge and decisions
Visual “Pipeline”

Ward (2009) describes a visual pipeline as:
The process of starting with data
Generating an image or model via computer
Sequence of stages studied in terms of
Algorithms
Data Structures
Coordinate systems

Taken from Ward et. al., (2010). © 2010 by A.K. Peters, Ltd. All rights reserved. Reproduced here for
educational purposes only.
Visual Pipeline

Data modeling
Data selection
Data to visual settings
Scene parameter setting (view transformations)
Rendering or generation of the visualization

Taken from Ward et. al., (2010). © 2010 by A.K. Peters, Ltd. All rights reserved. Reproduced here for
educational purposes only.
Goals and Objectives

 Develop a “one-stop” source of web-based forecasts
for the Gila-Salt-Verde system
 Implement web-based prototype and tool using the
concepts of visual analytics
 Increase SRP and USACE operational efficiency
Proposed Methodology

 Develop mash-up to be tested by operators at USACE
and SRP
 Use a Google Map API, with Fusion Tables
 Includes gage, dam and other hydrographic information

 Visual analysis will be tested by timing access to
information
 Questionnaire developed for operators, asking to
access gage data from the prototype or from the
CBRFC or USACE websites
Proposed Mash-up

Geographic extent:
Painted Rock Dam on the west to Coolidge on the east

Designed as a prototype specific to SRP/USACE
Further work will be necessary to offer more capabilities
Anticipated outcome: will take less time to access forecast
data
Existing mash-ups already use National Climatic Database
(NCDB) such as WunderMap
(http://www.wunderground.com/wundermap/)
Existing Products

Taken from Weather Underground (accessed July 2013 from
http://www.wunderground.com/wundermap)
Proposed Mashup
Project Timeline

August 14 to September 30 – Complete Mash-up
October 1 to October 23 – Complete testing and
capstone report
May 12-14, 2014 - Present paper at American Water
Resources Association Spring Specialty Conference in
GIS and Water Resources, Decision Support in Water
Resources, Salt Lake City (permission pending)
Summary

Propose to develop prototype Mash-up based on
Google API
The intent is to enhance river operations forecasting
along the Gila-Salt-Verde River System
Concepts of visual analytics will be used to develop
the prototype
References

Andrienko, G., Andrienko, N., Dykes, J., Kraak, M., & Schumann, H. (2010). GeoVA(t)-geospatial visual analytics: focus on time.
International Journal of Geographical Information Science, 24:10, 1453-1457.
Andrienko, G., Andrienko, N., Ursaka, D., Dransch, D., Jason, D., Fabrikant, S.I., Mikail, J., Kraak, M., Schumann, H. & Tominski, C.
(2010). Space, time, and visual analytics. International Journal of Geographical Information Science, 24:10, 1577-1600.
CBRFC (accessed July 2013 from http://www.cbrfc.noaa.gov/)
Kasprzyk, J., Nataraj, S., Reed, P.M., & Lempert, R.J. (2013). Many objective robust decision making for complex environmental
systems undergoing change. Environmental Modeling & Software, 42, 55-71.
Keim, D.A. (2002). Information visualization and visual data mining. IEEE transactions on visualization and computer graphics, 8:1, 18.
Keim, D., Andrienko, G., Fekete, J., Carsten, G., Kohlhammer, J., & Melancon, G. (2008). Visual analytics: definition, process, and
challenges. Information Visualization, LNCS 4950, 154-175.
Kollat, J. B., & Reed, P.M. (2006). Comparing state-of-the-art evolutionary multi-objective algorithms for long-term groundwater
monitoring design. Advances in Water Resources, 29, 792-807.
Kollat, J.B., & Reed, P. (2007). A framework for visually interactive decision-making and design using evolutionary multi-objective
optimization (VIDEO). Environmental Modeling & Software, 22, 1691-1704.
MacEachren, A.M., & Kraak, M. (1997). Exploratory cartographic visualization: advancing the agenda. Computers & Geosciences,
23:4, 335-343.
References (cont)

Reed, P.M., Hadka, D., Herman, J.D., Kasprzyk, J.R., & Kollat, J.B. (2013). Evolutionary multiobjective optimization in water
resources: the past, present, and future. Advances in Water Resources, 51, 438-456.
Tang, Y., Reed, P.M., & Kollat, J. B. (2007). Parallelization strategies for rapid and robust evolutionary multiobjective optimization
in water resources applications. Advances in Water Resources 30, 335-353.
USACE (accessed July 2013 from http://198.17.86.43/cgi-bin/cgiwrap/zinger/basinStatus.cgi?gilariver).
Ward, M., Grinstein, G., & Keim, D. (2010). Interactive data visualization: Foundations, techniques, and applications. Natick, MA: A K
Peters, Ltd.
Xie, X., & Zhang, D. (2010). Data assimilation for distributed hydrological catchment modeling via ensemble Kalman filter. Advances
in Water Resources, 33, 678-690.
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The Gila-Salt-Verde River System: Improving River Forecasts and Emergency Management through Visualization

  • 1. The Gila-Salt-Verde River System: Improving River Forecasts and Emergency Management through Visualization Douglas Blatchford, PE Pennsylvania State MGIS Program Advisors: Dr. Miller, Dr. Reed, Dr. Kollat Geography 596A, Summer 2013
  • 2. Overview  Background  Colorado River/Gila River Systems  Operation and emergency management forecast web apps in the Phoenix metropolitan area  Visual Analytics  Goals and objectives  Enhance existing web-based tools through visualization  Proposed methodology  Develop mash-up based on Google Map API  Project timeline
  • 3. Background  Gila is a major tributary to the Colorado River System  Flows through southern Arizona  Dams provide water supply and flood protection for Phoenix metro area  Dams operated by Salt River Project (SRP) and the United States Army Corp of Engineers (USACE)  Operations forecast is key to managing water resources
  • 4. Colorado River Basin -Colorado River supplies water to municipalities and irrigators throughout the West -Dams along the river are operated to meet water user demands in Arizona California , Nevada and Mexico -Accessed from the Colorado River Water Users Association (CRWUA), July 2013 from http://crwua.org/ColoradoRiver/RiverMap.aspx
  • 5. Gila River Basin -Gila-Salt-Verde River system, New Mexico and Arizona as related to the Colorado River -Flow along the Gila at Yuma affects major operations of Colorado River and water levels in Lake Mead, behind Hoover Dam Accessed July 2013 from http://www.lifeinlakehavasu.com/lower-colorado-riverarea.html
  • 6. Facilities Gila-Salt-Verde River system drains through Phoenix metropolitan area. SRP facilities provide water supply and flood control protection. Dams include : -Gila: -Painted Rock and Coolidge -Salt: -Stewart Mountain, Mormon Flat, Horse Mesa and Roosevelt -Verde: -Bartlett and Horse shoe
  • 7. Operations Forecast The Colorado River Basin Forecast Center (CBRFC) issues forecasts online for the Gila-Salt-Verde River system as well as other major rivers in the basin. Accessed July 2013 from the CBRFC (http://www.cbrfc.noaa.gov/)
  • 8. Operations Forecast River operators and emergency managers typically access existing and future gage data. Accessed July 2013 from CBRFC (http://www.cbrfc.noaa.gov/)
  • 9. Operations Forecast Gila River watershed from CBRFC website. Accessed July 2013 from CBRFC (http://www.cbrfc.noaa.gov/)
  • 10. Operations Forecast USACE provides a webpage with links to Gila-Salt-Verde River system and USGS gage sites. -Provides easier access to existing data -No forecast modeling like CBRFC Accessed July 2013 from: USACE (http://198.17.86.43/cgibin/cgiwrap/zinger/basinStatus.cgi?gilariver)
  • 11. Visual Analytics Visual analytics is an outgrowth of the fields of: Information visualization Scientific visualization Analytical reasoning Facilitated by interactive visual interfaces Goal is to process data for analytic discourse Constructive evaluation, correction, and rapid development of processes and models This ultimately improves our knowledge and decisions
  • 12. Visual “Pipeline” Ward (2009) describes a visual pipeline as: The process of starting with data Generating an image or model via computer Sequence of stages studied in terms of Algorithms Data Structures Coordinate systems Taken from Ward et. al., (2010). © 2010 by A.K. Peters, Ltd. All rights reserved. Reproduced here for educational purposes only.
  • 13. Visual Pipeline Data modeling Data selection Data to visual settings Scene parameter setting (view transformations) Rendering or generation of the visualization Taken from Ward et. al., (2010). © 2010 by A.K. Peters, Ltd. All rights reserved. Reproduced here for educational purposes only.
  • 14. Goals and Objectives  Develop a “one-stop” source of web-based forecasts for the Gila-Salt-Verde system  Implement web-based prototype and tool using the concepts of visual analytics  Increase SRP and USACE operational efficiency
  • 15. Proposed Methodology  Develop mash-up to be tested by operators at USACE and SRP  Use a Google Map API, with Fusion Tables  Includes gage, dam and other hydrographic information  Visual analysis will be tested by timing access to information  Questionnaire developed for operators, asking to access gage data from the prototype or from the CBRFC or USACE websites
  • 16. Proposed Mash-up Geographic extent: Painted Rock Dam on the west to Coolidge on the east Designed as a prototype specific to SRP/USACE Further work will be necessary to offer more capabilities Anticipated outcome: will take less time to access forecast data Existing mash-ups already use National Climatic Database (NCDB) such as WunderMap (http://www.wunderground.com/wundermap/)
  • 17. Existing Products Taken from Weather Underground (accessed July 2013 from http://www.wunderground.com/wundermap)
  • 19. Project Timeline August 14 to September 30 – Complete Mash-up October 1 to October 23 – Complete testing and capstone report May 12-14, 2014 - Present paper at American Water Resources Association Spring Specialty Conference in GIS and Water Resources, Decision Support in Water Resources, Salt Lake City (permission pending)
  • 20. Summary Propose to develop prototype Mash-up based on Google API The intent is to enhance river operations forecasting along the Gila-Salt-Verde River System Concepts of visual analytics will be used to develop the prototype
  • 21. References Andrienko, G., Andrienko, N., Dykes, J., Kraak, M., & Schumann, H. (2010). GeoVA(t)-geospatial visual analytics: focus on time. International Journal of Geographical Information Science, 24:10, 1453-1457. Andrienko, G., Andrienko, N., Ursaka, D., Dransch, D., Jason, D., Fabrikant, S.I., Mikail, J., Kraak, M., Schumann, H. & Tominski, C. (2010). Space, time, and visual analytics. International Journal of Geographical Information Science, 24:10, 1577-1600. CBRFC (accessed July 2013 from http://www.cbrfc.noaa.gov/) Kasprzyk, J., Nataraj, S., Reed, P.M., & Lempert, R.J. (2013). Many objective robust decision making for complex environmental systems undergoing change. Environmental Modeling & Software, 42, 55-71. Keim, D.A. (2002). Information visualization and visual data mining. IEEE transactions on visualization and computer graphics, 8:1, 18. Keim, D., Andrienko, G., Fekete, J., Carsten, G., Kohlhammer, J., & Melancon, G. (2008). Visual analytics: definition, process, and challenges. Information Visualization, LNCS 4950, 154-175. Kollat, J. B., & Reed, P.M. (2006). Comparing state-of-the-art evolutionary multi-objective algorithms for long-term groundwater monitoring design. Advances in Water Resources, 29, 792-807. Kollat, J.B., & Reed, P. (2007). A framework for visually interactive decision-making and design using evolutionary multi-objective optimization (VIDEO). Environmental Modeling & Software, 22, 1691-1704. MacEachren, A.M., & Kraak, M. (1997). Exploratory cartographic visualization: advancing the agenda. Computers & Geosciences, 23:4, 335-343.
  • 22. References (cont) Reed, P.M., Hadka, D., Herman, J.D., Kasprzyk, J.R., & Kollat, J.B. (2013). Evolutionary multiobjective optimization in water resources: the past, present, and future. Advances in Water Resources, 51, 438-456. Tang, Y., Reed, P.M., & Kollat, J. B. (2007). Parallelization strategies for rapid and robust evolutionary multiobjective optimization in water resources applications. Advances in Water Resources 30, 335-353. USACE (accessed July 2013 from http://198.17.86.43/cgi-bin/cgiwrap/zinger/basinStatus.cgi?gilariver). Ward, M., Grinstein, G., & Keim, D. (2010). Interactive data visualization: Foundations, techniques, and applications. Natick, MA: A K Peters, Ltd. Xie, X., & Zhang, D. (2010). Data assimilation for distributed hydrological catchment modeling via ensemble Kalman filter. Advances in Water Resources, 33, 678-690.