Parameter estimation at the conterminous United States scale and streamflow routing enhancements for the National Hydrologic Model infrastructure application of the Precipitation-Runoff Modeling System (NHM-PRMS)
Author:
Hay Lauren E.ORCID, LaFontaine Jacob H.ORCID, Van Beusekom Ashley E.ORCID, Norton Parker A.ORCID, Farmer William H.ORCID, Regan R. SteveORCID, Markstrom Steven L.ORCID, Dickinson Jesse E.ORCID
Publisher
US Geological Survey
Reference74 articles.
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