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<CreaDate>20251007</CreaDate>
<CreaTime>11255300</CreaTime>
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<idCitation>
<resTitle>Fish Management Units</resTitle>
</idCitation>
<idAbs>The Watershed Boundary Dataset (WBD) is a comprehensive aggregated collection of hydrologic unit data consistent with the national criteria for delineation and resolution. It defines the areal extent of surface water drainage to a point except in coastal or lake front areas where there could be multiple outlets as stated by the "Federal Standards and Procedures for the National Watershed Boundary Dataset (WBD)" “Standard” (http://pubs.usgs.gov/tm/11/a3/). Watershed boundaries are determined solely upon science-based hydrologic principles, not favoring any administrative boundaries or special projects, nor particular program or agency. This dataset represents the hydrologic unit boundaries to the 12-digit (6th level) for the entire United States. Some areas may also include additional subdivisions representing the 14- and 16-digit hydrologic unit (HU). At a minimum, the HUs are delineated at 1:24,000-scale in the conterminous United States, 1:25,000-scale in Hawaii, Pacific basin and the Caribbean, and 1:63,360-scale in Alaska, meeting the National Map Accuracy Standards (NMAS). Higher resolution boundaries are being developed where partners and data exist and will be incorporated back into the WBD. WBD data are delivered as a dataset of polygons and corresponding lines that define the boundary of the polygon. WBD polygon attributes include hydrologic unit codes (HUC), size (in the form of acres and square kilometers), name, downstream hydrologic unit code, type of watershed, non-contributing areas, and flow modifications. The HUC describes where the unit is in the country and the level of the unit. WBD line attributes contain the highest level of hydrologic unit for each boundary, line source information and flow modifications.</idAbs>
<searchKeys>
<keyword>Fish_Management_Units</keyword>
<keyword>MapServer</keyword>
</searchKeys>
<idPurp>Fish Management Units (FMUs) are built from the best available Watershed Boundary dataset (enhanced to include select Pacific Draining watersheds from British Columbia). This feature class is joined with a table used for tracking Fish Management Unit Value Added Attributes at the HUC12 level. The inital join table is derived from a summary of Fish Distribution data at the HUC12 level. The goal is for this combination of Features and joined VAA to serve as the master feature service for deriving a series of view layers that are focused on FMUs for individual focal species. Data are stored in a user managed data store (relational enterprise geodatabase). </idPurp>
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