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An Integrated Hydrological and Water Management Study of the Entire Nile River System – Lake Victoria to Nile Delta(IGARSS paper 1198: Session FR3-TR10)July 29, 2011Vancouver, Canada Shahid Habib, NASA Goddard Space Flight Center Ben Zaitchik, Johns Hopkins University Clement Alo, Johns Hopkins University MutluOzdogon, University of Wisconsin Martha Anderson, US Department of Agriculture Fritz Policelli, NASA Goddard Space Flight Center
Introduction ,[object Object]
NASA observations and  tools can provide consistent, reliable estimates of hydrological states and fluxes, even in remote areas.  This information can be applied to early warning systems and decision support.
Improved information on floods, droughts, and climate-induced changes in hydrology are critical for all countries.,[object Object]
The Nile Basin 3.35 million km2 6,650 km long Lower Nile Atbara Bahr el-Ghazal Sudd Blue Nile Sobat White Nile The Lakes
The Nile Basin 3.35 million km2 6,650 km long Climates range from humid tropical to hyper-arid
The Nile Basin 3.35 million km2 6,650 km long Climates range from humid tropical to hyper-arid  The vast majority or precipitation falls in the Ethiopian and Lake Victoria headwaters regions
The Nile Basin Annual flow at Aswan: 84 BCM 86% Ethiopia; 14% Equatorial Lakes Large seasonal variability in the Blue Nile and Atbara Interannual variability can affect both the Blue and the White Nile July 8, 2011 Choke Mountain gorge July 10, 2011 Bottom of Tissisat falls
The Nile Basin Lower Nile night view from satellite 190 million people 50% below the poverty line 10 nations 8 are defined as Least Developed Countries 4 are nationally water scarce today 6 are predicted to be water scarce by 2025 7 have experienced war in the past 20 years At present, there is no water sharing agreement or joint management plan
NILE Basin Countries Ref:  UNEP Project GNV011,Jan-Jun 2000, Diana Karyabwite
NASA’s Project Nile Goal:improved hydrometeorological information for research, planning, and water management Evapotraspiration Land Cover Mapping Components:  Customized Land Data Assimilation System Land cover mapping and simulation Satellite-derived evapotranspiration Integration to Decision Support LDAS Decision Support System
LDAS Output Land Surface Model A Land Data Assimilation System (LDAS) is a computational system that merges observations with numerical models to produce optimal estimates of land surface states and fluxes. Update Observations Landscape Information Meteorological Data SM	ET	Runoff
LDAS Early Results - 2001-2009 climatology (Using Noah Land Surface Model) Precipitation input:  Rain Fall Estimate at 10 km-3 hourly, WMO Stations Evapotranspiration at 5 km resolution Precipitation – Evapotranspiration = Surface and Subsurface runoff -5 km
LDAS Early ResultsUsing last 30 years (1980-2010) ENSO data El Nino years 4 months precipitation- Jun, Jul, Aug, & Sep La Nina years 4 months precipitation- Jun, Jul, Aug, & Sep Warmer years produce less precipitation over E. Africa Cooler years produce more precipitation over E. Africa C. Alo, JHU
Land Cover Mapping A Nested Approach: Continental scale maps (from MODIS) with general land cover categories (used for deriving the model) Usedfor landscape scale sampling  Regional maps (from Landsat - agriculture) with detailed land use categories 1:25,000 scale Detailed description of the land cover Local scale mapping (commercial) For detailed analyses and true area estimation M. Ozdogan, Univ. of Wisconsin
MODIS-based regional map(VIS to 2.4 micron – reflected domain)Friedlet.al., 1999 IEEE TGARS Collect one year of 8-day composited MODIS surface reflectance data Identify representative temporal profiles for general land cover classes Apply an automated Decision Tree algorithm (using band comparison) to classify each pixel Use this map as a guide for sampling the landscape for detailed analyses Root Data Internal nodes Decision criteria Final classified label Leaf nodes M. Ozdogan, Univ. of Wisconsin
forest shrubland grassland agriculture barren Yearly product based on MODIS 8-day composite at continental scale - 2005 M. Ozdogan, Univ. of Wisconsin
forest shrubland grassland agriculture barren Landsat footprint for regional mapping
Landsat – 30M Scale - 2005 Topographic view Winter - December Choke Mountain Caldera Shrubs Agriculture Clouds MODIS Landsat Forest Northern Ethiopia heterogeneous landscape requires high resolution imagery  Commercial with 0.5 m resolution Spring, Summer, Fall and Winter averaged
SURFACE TEMPERATURE Tsoil & Tveg  transpiration &         evaporation  Tveg TSoil soil evaporation Given known radiative energy inputs, how much water loss is required to keep the soil and vegetation at the observed temperatures? Satellite-derived Evapotranspiration M. Anderson, USDA
ET: The Atmosphere-Land Exchange Inverse (ALEXI) Model (Atmospheric Boundary Layer) Sensible Heat: (from Landsat thermal band 100m) Canopy Heat: Landscape scale TRAD	- TM, ASTER, MODIS fc     	- TM, ASTER, MODIS Regional scale ΔTRAD	- Geostationary fc - MODIS (vegetation cover function) Surface temp: Cover fraction:
Early Results: clear-sky ET composites (2008) (~ 6 km resolution) June July Wm-2 M. Anderson, USDA
2009 FEBRUARY Note ET from Sudd and Nile Delta in ALEXI, not captured in LDAS. Average ALEXI ET  Average LDAS ET (MJ m-2 d-1)
2009 JANUARY-DECEMBER Average ALEXI ET (MJ m-2 d-1)  Average ALEXI ET/PET
Applications: Decision Support Nile-LDAS Land Cover Maps Management and DSS Satellite ET ,[object Object]

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Habib-IGARSS 2011 FR3-TR10.pptx

  • 1. An Integrated Hydrological and Water Management Study of the Entire Nile River System – Lake Victoria to Nile Delta(IGARSS paper 1198: Session FR3-TR10)July 29, 2011Vancouver, Canada Shahid Habib, NASA Goddard Space Flight Center Ben Zaitchik, Johns Hopkins University Clement Alo, Johns Hopkins University MutluOzdogon, University of Wisconsin Martha Anderson, US Department of Agriculture Fritz Policelli, NASA Goddard Space Flight Center
  • 2.
  • 3. NASA observations and tools can provide consistent, reliable estimates of hydrological states and fluxes, even in remote areas. This information can be applied to early warning systems and decision support.
  • 4.
  • 5. The Nile Basin 3.35 million km2 6,650 km long Lower Nile Atbara Bahr el-Ghazal Sudd Blue Nile Sobat White Nile The Lakes
  • 6. The Nile Basin 3.35 million km2 6,650 km long Climates range from humid tropical to hyper-arid
  • 7. The Nile Basin 3.35 million km2 6,650 km long Climates range from humid tropical to hyper-arid The vast majority or precipitation falls in the Ethiopian and Lake Victoria headwaters regions
  • 8. The Nile Basin Annual flow at Aswan: 84 BCM 86% Ethiopia; 14% Equatorial Lakes Large seasonal variability in the Blue Nile and Atbara Interannual variability can affect both the Blue and the White Nile July 8, 2011 Choke Mountain gorge July 10, 2011 Bottom of Tissisat falls
  • 9. The Nile Basin Lower Nile night view from satellite 190 million people 50% below the poverty line 10 nations 8 are defined as Least Developed Countries 4 are nationally water scarce today 6 are predicted to be water scarce by 2025 7 have experienced war in the past 20 years At present, there is no water sharing agreement or joint management plan
  • 10. NILE Basin Countries Ref: UNEP Project GNV011,Jan-Jun 2000, Diana Karyabwite
  • 11. NASA’s Project Nile Goal:improved hydrometeorological information for research, planning, and water management Evapotraspiration Land Cover Mapping Components: Customized Land Data Assimilation System Land cover mapping and simulation Satellite-derived evapotranspiration Integration to Decision Support LDAS Decision Support System
  • 12. LDAS Output Land Surface Model A Land Data Assimilation System (LDAS) is a computational system that merges observations with numerical models to produce optimal estimates of land surface states and fluxes. Update Observations Landscape Information Meteorological Data SM ET Runoff
  • 13. LDAS Early Results - 2001-2009 climatology (Using Noah Land Surface Model) Precipitation input: Rain Fall Estimate at 10 km-3 hourly, WMO Stations Evapotranspiration at 5 km resolution Precipitation – Evapotranspiration = Surface and Subsurface runoff -5 km
  • 14. LDAS Early ResultsUsing last 30 years (1980-2010) ENSO data El Nino years 4 months precipitation- Jun, Jul, Aug, & Sep La Nina years 4 months precipitation- Jun, Jul, Aug, & Sep Warmer years produce less precipitation over E. Africa Cooler years produce more precipitation over E. Africa C. Alo, JHU
  • 15. Land Cover Mapping A Nested Approach: Continental scale maps (from MODIS) with general land cover categories (used for deriving the model) Usedfor landscape scale sampling Regional maps (from Landsat - agriculture) with detailed land use categories 1:25,000 scale Detailed description of the land cover Local scale mapping (commercial) For detailed analyses and true area estimation M. Ozdogan, Univ. of Wisconsin
  • 16. MODIS-based regional map(VIS to 2.4 micron – reflected domain)Friedlet.al., 1999 IEEE TGARS Collect one year of 8-day composited MODIS surface reflectance data Identify representative temporal profiles for general land cover classes Apply an automated Decision Tree algorithm (using band comparison) to classify each pixel Use this map as a guide for sampling the landscape for detailed analyses Root Data Internal nodes Decision criteria Final classified label Leaf nodes M. Ozdogan, Univ. of Wisconsin
  • 17. forest shrubland grassland agriculture barren Yearly product based on MODIS 8-day composite at continental scale - 2005 M. Ozdogan, Univ. of Wisconsin
  • 18. forest shrubland grassland agriculture barren Landsat footprint for regional mapping
  • 19. Landsat – 30M Scale - 2005 Topographic view Winter - December Choke Mountain Caldera Shrubs Agriculture Clouds MODIS Landsat Forest Northern Ethiopia heterogeneous landscape requires high resolution imagery Commercial with 0.5 m resolution Spring, Summer, Fall and Winter averaged
  • 20. SURFACE TEMPERATURE Tsoil & Tveg transpiration & evaporation Tveg TSoil soil evaporation Given known radiative energy inputs, how much water loss is required to keep the soil and vegetation at the observed temperatures? Satellite-derived Evapotranspiration M. Anderson, USDA
  • 21. ET: The Atmosphere-Land Exchange Inverse (ALEXI) Model (Atmospheric Boundary Layer) Sensible Heat: (from Landsat thermal band 100m) Canopy Heat: Landscape scale TRAD - TM, ASTER, MODIS fc - TM, ASTER, MODIS Regional scale ΔTRAD - Geostationary fc - MODIS (vegetation cover function) Surface temp: Cover fraction:
  • 22. Early Results: clear-sky ET composites (2008) (~ 6 km resolution) June July Wm-2 M. Anderson, USDA
  • 23. 2009 FEBRUARY Note ET from Sudd and Nile Delta in ALEXI, not captured in LDAS. Average ALEXI ET Average LDAS ET (MJ m-2 d-1)
  • 24. 2009 JANUARY-DECEMBER Average ALEXI ET (MJ m-2 d-1) Average ALEXI ET/PET
  • 25.
  • 26. Water resource analysis
  • 27. Early warning systems
  • 28. Planning for changePrecipitation
  • 29. Summary Many researchers have studied this region over the last three decades NASA is taking another integrated look at the entire region using satellite observations and multitude of land surface/hydrological models The most significant aspect of this work is to validate using in situ measurements and depends on the regional partners willingness to share in situ data As a starting point, we are working with Ethiopian hydrology and Meteorology offices to get such data for the Blue Nile head waters We also plan to simulate future climate impact on hydrology using IPCC scenarios Our work will be published on a scientific basis Ancient map drawn by Ptolemy

Editor's Notes

  1. Location of Landsat footprint
  2. Landsat data from winter 2005
  3. Note ET from Sudd and Nile Delta in ALEXI, not captured in LDAS.
  4. Note ET from Sudd and Nile Delta in ALEXI, not captured in LDAS.