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<Process Date="20230412" Time="110234" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Analysis Tools.tbx\PairwiseIntersect">PairwiseIntersect 'Potential Wetland Restoration';mcd "Y:\Staff\Misiuk\GIS\ArcGIS Pro\LandCoverSummaries\LandCoverSummaries.gdb\mcd_intersect_potential_wetland_restore" "All attributes" # "Same as input"</Process>
<Process Date="20230412" Time="111600" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Conversion Tools.tbx\ExportFeatures">ExportFeatures mcd_intersect_potential_wetland_restore "Y:\Staff\Misiuk\GIS\ArcGIS Pro\LandCoverSummaries\LandCoverSummaries.gdb\mcd_intersect_potential_wetland_restore_stateplane" # NOT_USE_ALIAS "FID_L5Potential_Wetland_Restoration "FID_L5Potential_Wetland_Restoration" true true false 4 Long 0 0,First,#,mcd_intersect_potential_wetland_restore,FID_L5Potential_Wetland_Restoration,-1,-1;Acres "Acres" true true false 8 Double 0 0,First,#,mcd_intersect_potential_wetland_restore,Acres,-1,-1;RestorationSuitability "RestorationSuitability" true true false 8 Double 0 0,First,#,mcd_intersect_potential_wetland_restore,RestorationSuitability,-1,-1;FID_mcd "FID_mcd" true true false 4 Long 0 0,First,#,mcd_intersect_potential_wetland_restore,FID_mcd,-1,-1;VER "VER" true true false 3 Text 0 0,First,#,mcd_intersect_potential_wetland_restore,VER,0,3;SEMMCD "SEMMCD" true true false 4 Long 0 0,First,#,mcd_intersect_potential_wetland_restore,SEMMCD,-1,-1;NAME "NAME" true true false 50 Text 0 0,First,#,mcd_intersect_potential_wetland_restore,NAME,0,50;COUNTY "COUNTY" true true false 4 Long 0 0,First,#,mcd_intersect_potential_wetland_restore,COUNTY,-1,-1;imperv_acres "imperv_acres" true true false 8 Double 0 0,First,#,mcd_intersect_potential_wetland_restore,imperv_acres,-1,-1;imperv_pct_area "imperv_pct_area" true true false 8 Double 0 0,First,#,mcd_intersect_potential_wetland_restore,imperv_pct_area,-1,-1;tree_canopy_acres "tree_canopy_acres" true true false 8 Double 0 0,First,#,mcd_intersect_potential_wetland_restore,tree_canopy_acres,-1,-1;tree_canopy_pct_area "tree_canopy_pct_area" true true false 8 Double 0 0,First,#,mcd_intersect_potential_wetland_restore,tree_canopy_pct_area,-1,-1;Shape_Length "Shape_Length" false true true 8 Double 0 0,First,#,mcd_intersect_potential_wetland_restore,Shape_Length,-1,-1;Shape_Area "Shape_Area" false true true 8 Double 0 0,First,#,mcd_intersect_potential_wetland_restore,Shape_Area,-1,-1" #</Process>
<Process Date="20230413" Time="145416" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Conversion Tools.tbx\ExportFeatures">ExportFeatures "Y:\Staff\Misiuk\GIS\ArcGIS Pro\LandCoverSummaries\LandCoverSummaries.gdb\mcd_intersect_potential_wetland_restore_stateplane" C:\Users\misiuk\Documents\ArcGIS\Projects\wetlands_analysis\wetlands_analysis.gdb\mcd_intersect_potential_wetland_restore # NOT_USE_ALIAS "FID_L5Potential_Wetland_Restoration "FID_L5Potential_Wetland_Restoration" true true false 4 Long 0 0,First,#,Y:\Staff\Misiuk\GIS\ArcGIS Pro\LandCoverSummaries\LandCoverSummaries.gdb\mcd_intersect_potential_wetland_restore_stateplane,FID_L5Potential_Wetland_Restoration,-1,-1;Acres "Acres" true true false 8 Double 0 0,First,#,Y:\Staff\Misiuk\GIS\ArcGIS Pro\LandCoverSummaries\LandCoverSummaries.gdb\mcd_intersect_potential_wetland_restore_stateplane,Acres,-1,-1;RestorationSuitability "RestorationSuitability" true true false 8 Double 0 0,First,#,Y:\Staff\Misiuk\GIS\ArcGIS Pro\LandCoverSummaries\LandCoverSummaries.gdb\mcd_intersect_potential_wetland_restore_stateplane,RestorationSuitability,-1,-1;FID_mcd "FID_mcd" true true false 4 Long 0 0,First,#,Y:\Staff\Misiuk\GIS\ArcGIS Pro\LandCoverSummaries\LandCoverSummaries.gdb\mcd_intersect_potential_wetland_restore_stateplane,FID_mcd,-1,-1;VER "VER" true true false 3 Text 0 0,First,#,Y:\Staff\Misiuk\GIS\ArcGIS Pro\LandCoverSummaries\LandCoverSummaries.gdb\mcd_intersect_potential_wetland_restore_stateplane,VER,0,3;SEMMCD "SEMMCD" true true false 4 Long 0 0,First,#,Y:\Staff\Misiuk\GIS\ArcGIS Pro\LandCoverSummaries\LandCoverSummaries.gdb\mcd_intersect_potential_wetland_restore_stateplane,SEMMCD,-1,-1;NAME "NAME" true true false 50 Text 0 0,First,#,Y:\Staff\Misiuk\GIS\ArcGIS Pro\LandCoverSummaries\LandCoverSummaries.gdb\mcd_intersect_potential_wetland_restore_stateplane,NAME,0,50;COUNTY "COUNTY" true true false 4 Long 0 0,First,#,Y:\Staff\Misiuk\GIS\ArcGIS Pro\LandCoverSummaries\LandCoverSummaries.gdb\mcd_intersect_potential_wetland_restore_stateplane,COUNTY,-1,-1;imperv_acres "imperv_acres" true true false 8 Double 0 0,First,#,Y:\Staff\Misiuk\GIS\ArcGIS Pro\LandCoverSummaries\LandCoverSummaries.gdb\mcd_intersect_potential_wetland_restore_stateplane,imperv_acres,-1,-1;imperv_pct_area "imperv_pct_area" true true false 8 Double 0 0,First,#,Y:\Staff\Misiuk\GIS\ArcGIS Pro\LandCoverSummaries\LandCoverSummaries.gdb\mcd_intersect_potential_wetland_restore_stateplane,imperv_pct_area,-1,-1;tree_canopy_acres "tree_canopy_acres" true true false 8 Double 0 0,First,#,Y:\Staff\Misiuk\GIS\ArcGIS Pro\LandCoverSummaries\LandCoverSummaries.gdb\mcd_intersect_potential_wetland_restore_stateplane,tree_canopy_acres,-1,-1;tree_canopy_pct_area "tree_canopy_pct_area" true true false 8 Double 0 0,First,#,Y:\Staff\Misiuk\GIS\ArcGIS Pro\LandCoverSummaries\LandCoverSummaries.gdb\mcd_intersect_potential_wetland_restore_stateplane,tree_canopy_pct_area,-1,-1;Shape_Length "Shape_Length" false true true 8 Double 0 0,First,#,Y:\Staff\Misiuk\GIS\ArcGIS Pro\LandCoverSummaries\LandCoverSummaries.gdb\mcd_intersect_potential_wetland_restore_stateplane,Shape_Length,-1,-1;Shape_Area "Shape_Area" false true true 8 Double 0 0,First,#,Y:\Staff\Misiuk\GIS\ArcGIS Pro\LandCoverSummaries\LandCoverSummaries.gdb\mcd_intersect_potential_wetland_restore_stateplane,Shape_Area,-1,-1" #</Process>
<Process Date="20230425" Time="154912" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Analysis Tools.tbx\PairwiseErase">PairwiseErase mcd_intersect_potential_wetland_restore wetlands C:\Users\misiuk\Documents\ArcGIS\Projects\wetlands_analysis\wetlands_analysis.gdb\potential_wetlands_no_existing #</Process>
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