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<CreaDate>20250523</CreaDate>
<CreaTime>12504400</CreaTime>
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<Process Date="20250523" Time="125044" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Spatial Analyst Tools.tbx\ExtractByAttributes">ExtractByAttributes nlcd_2023_land_cover_MA_with_desc.img "Value = 41 Or Value = 42 Or Value = 43" "C:\Nique\projects\forest reserves\forest_reserves_APRX\rasters\NLCD_forest.tif"</Process>
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<keyword>forest</keyword>
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<idPurp>This is an extraction of forest land cover from the NLCD. The Annual National Land Cover Database has harnessed the full Landsat data record to provide timely, long-term, and detailed land surface change information. Annual NLCD uses an ensemble of classification and change algorithms to map, monitor, and synthesize the complexities of land use, cover, and condition change through time. The Annual NLCD product suite offers data that describe nationwide land cover and land change over nearly four decades. A new generation of USGS Land Cover mapping, introduced in the Annual NLCD Collection 1 release, leverages advancements in artificial intelligence and machine learning techniques and runs within high-performance computing and cloud processing environments.</idPurp>
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<resTitle>NLCD_forest_tif</resTitle>
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