<?xml version="1.0" encoding="UTF-8" standalone="no"?>
<metadata xml:lang="en">
<Esri>
<CreaDate>20190930</CreaDate>
<CreaTime>10095400</CreaTime>
<ArcGISFormat>1.0</ArcGISFormat>
<SyncOnce>TRUE</SyncOnce>
</Esri>
<dataIdInfo>
<idAbs>HydroSHEDS provides hydrographic information in a consistent and comprehensive format for regional and global-scale applications. These data layers are available to support watershed analyses, hydrological modeling, and freshwater conservation planning at a quality, resolution, and extent that had previously been unachievable in many parts of the world.
Global Lakes and Wetlands Database
Drawing upon a variety of existing maps, data and information, WWF and the Center for Environmental Systems Research, University of Kassel, Germany created the Global Lakes and Wetlands Database (GLWD). The combination of best available sources for lakes and wetlands on a global scale (1:1 to 1:3 million resolution), and the application of GIS functionality enabled the generation of a database which focuses in three coordinated levels on (1) large lakes and reservoirs, (2) smaller water bodies, and (3) wetlands.</idAbs>
<searchKeys>
<keyword>Africa</keyword>
<keyword>ALES</keyword>
<keyword>GLOBIL</keyword>
<keyword>Kenya</keyword>
<keyword>Lakes</keyword>
<keyword>Madagascar</keyword>
<keyword>Mozambique</keyword>
<keyword>Rivers</keyword>
<keyword>Tanzania</keyword>
<keyword>Water</keyword>
<keyword>Wetlands</keyword>
<keyword>WWF</keyword>
<keyword>WWF Norway</keyword>
<keyword>Hydrology</keyword>
</searchKeys>
<idPurp>East Africa hydrology</idPurp>
<idCredit>WWF</idCredit>
<resConst>
<Consts>
<useLimit/>
</Consts>
</resConst>
<idCitation>
<resTitle>Hydrology</resTitle>
</idCitation>
</dataIdInfo>
<Binary>
<Thumbnail>
<Data EsriPropertyType="PictureX">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</Data>
</Thumbnail>
</Binary>
</metadata>
