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<CreaDate>20180312</CreaDate>
<CreaTime>12530900</CreaTime>
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<idAbs>This project seeks to understand and map the senstivity of montane meadow and riparian to incision and downcutting. To achieve that goal we've assembled a large number of geomorphic, geologic, and hydrologic metrics for entire watersheds across the Great Basin. Only watersheds with mapped perennial water were included in this dataset. This dataset features 1479 watersheds form across the Great Basin.</idAbs>
<searchKeys>
<keyword>watershed</keyword>
<keyword>mountain</keyword>
<keyword>montane</keyword>
<keyword>Great Basin</keyword>
<keyword>hydrology</keyword>
<keyword>geomorphology</keyword>
<keyword>geology</keyword>
</searchKeys>
<idPurp>GIS database of geologic, geomorphic, and shape characteristics for 1,479 watersheds in the Great Basin with perennial water.</idPurp>
<idCredit>Dilts,T., Board, D., Knight, A., Wesely, N., Wedge, L., Lord, M., Miller, J., Carroll, R., Snyder, K., Weisberg, P., and Chambers, J. (2018) GIS database of geologic, geomorphic, and shape characteristics for 1,479 watersheds in the Great Basin with perennial water. As part of: A multi-scale resilience-based framework for restoring and conserving Great Basin wet meadows and riparian ecosystems. U.S. Forest Service, University of Nevada Reno, Desert Research Institute, and Western Carolina University. Digital spatial data (map package).</idCredit>
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<useLimit>Please cite if you use these data in a publication</useLimit>
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