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<Process Date="20250709" Time="070610" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Conversion Tools.tbx\ExportFeatures">ExportFeatures TCC_MC_Block21_raster.v1 A:\00000_MNCPPC_PrinceGeorge_Landcover\06_Planimetrics\Landcover\01_Data\03_TreeCanopy\PostProcessing\Montgomery\Revised_RedownloadedData\Processed\Geodatabase\TCC_MC_20250708_PostProcessed.gdb\Data\TCC_MC_Block21 # NOT_USE_ALIAS "Class_name "Class_name" true true false 254 Text 0 0,First,#,TCC_MC_Block21_raster.v1,Class_name,0,254" #</Process>
<Process Date="20250709" Time="071029" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\Merge">Merge TCC_MC_Block21;TCC_MC_Block01to20_merge A:\00000_MNCPPC_PrinceGeorge_Landcover\06_Planimetrics\Landcover\01_Data\03_TreeCanopy\PostProcessing\Montgomery\Revised_RedownloadedData\Processed\Geodatabase\TCC_MC_20250708_PostProcessed.gdb\Data\TCC_MC_All_merge "Class_name "Class_name" true true false 254 Text 0 0,First,#,TCC_MC_Block21,Class_name,0,254,TCC_MC_Block01to20_merge,Class_name,0,254;Shape_Length "Shape_Length" false true true 8 Double 0 0,First,#,TCC_MC_Block21,Shape_Length,-1,-1,TCC_MC_Block01to20_merge,Shape_Length,-1,-1;Shape_Area "Shape_Area" false true true 8 Double 0 0,First,#,TCC_MC_Block21,Shape_Area,-1,-1,TCC_MC_Block01to20_merge,Shape_Area,-1,-1" NO_SOURCE_INFO</Process>
<Process Date="20250709" Time="081726" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Analysis Tools.tbx\PairwiseDissolve">PairwiseDissolve TCC_MC_All_merge A:\00000_MNCPPC_PrinceGeorge_Landcover\06_Planimetrics\Landcover\01_Data\03_TreeCanopy\PostProcessing\Montgomery\Revised_RedownloadedData\Processed\Geodatabase\TCC_MC_20250708_PostProcessed.gdb\Data\TCC_MC_All_merge_dissolve Class_name # SINGLE_PART #</Process>
<Process Date="20250709" Time="125737" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Analysis Tools.tbx\PairwiseDissolve">PairwiseDissolve TCC_MC_All_merge_dissolve A:\00000_MNCPPC_PrinceGeorge_Landcover\06_Planimetrics\Landcover\01_Data\03_TreeCanopy\PostProcessing\Montgomery\Revised_RedownloadedData\Processed\Geodatabase\TCC_MC_20250708_PostProcessed.gdb\Data\TCC_MC_All_merge_dissolve_v2_FINAL Class_name # SINGLE_PART #</Process>
<Process Date="20250710" Time="113347" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CopyMultiple">CopyMultiple "E:\MNCPPC\FinalData\TCC_MC_PostProcessed.gdb\Data\TCC_MC_All_20202024_PostProcessed FeatureClass" E:\MNCPPC\FinalData\TreeCanopyChangeMontgomery_2020_2024.gdb\Data TCC_MC_All_20202024_PostProcessed "TCC_MC_All_20202024_PostProcessed FeatureClass TCC_MC_All_20202024_PostProcessed #"</Process>
<Process Date="20250710" Time="115231" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\Rename">Rename E:\MNCPPC\FinalData\MontgomeryTreeCanopyChange2020_2024.gdb\Data\TCC_MC_All_20202024_PostProcessed E:\MNCPPC\FinalData\MontgomeryTreeCanopyChange2020_2024.gdb\Data\MontgomeryTreeCanopyChange2020_2024 FeatureClass</Process>
<Process Date="20250813" Time="125435" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CopyMultiple">CopyMultiple "'\\inf-file-p1\root\Services\Clients\c417.Sanborn IDWA-MNCPPC_PG\Stage 3-Deliverable Data\2-TreeCanopyChangeDetection\MontgomeryCounty\MontgomeryTreeCanopyChange2020_2024.gdb\Data\MontgomeryTreeCanopyChange2020_2024' FeatureClass" C:\ProjectData\MNCPPC\MNCPPC\MNCPPC_MC_ChangeNewV1.gdb\Inputs MontgomeryTreeCanopyChange2020_2024 "MontgomeryTreeCanopyChange2020_2024 FeatureClass MontgomeryTreeCanopyChange2020_2024 #"</Process>
<Process Date="20250813" Time="130117" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Conversion Tools.tbx\ExportFeatures">ExportFeatures MC_NewChangeMap\MontgomeryTreeCanopyChange2020_2024 C:\ProjectData\MNCPPC\MNCPPC\MNCPPC_MC_ChangeNewV1.gdb\Inputs\MontgomeryTreeCanopyChange2020_2024_G_NoCh # NOT_USE_ALIAS "Class_name "Class_name" true true false 254 Text 0 0,First,#,MC_NewChangeMap\MontgomeryTreeCanopyChange2020_2024,Class_name,0,253;Shape_Length "Shape_Length" false true true 8 Double 0 0,First,#,MC_NewChangeMap\MontgomeryTreeCanopyChange2020_2024,Shape_Length,-1,-1;Shape_Area "Shape_Area" false true true 8 Double 0 0,First,#,MC_NewChangeMap\MontgomeryTreeCanopyChange2020_2024,Shape_Area,-1,-1" #</Process>
<Process Date="20250813" Time="130521" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CopyMultiple">CopyMultiple "C:\ProjectData\MNCPPC\MNCPPC\MNCPPC_MC_ChangeNewV1.gdb\Inputs\MontgomeryTreeCanopyChange2020_2024_G_NoCh FeatureClass" C:\ProjectData\MNCPPC\MNCPPC\MNCPPC_MC_ChangeNewV1.gdb\Inputs MontgomeryTreeCanopyChange2020_2024_G_NoCh_1 "MontgomeryTreeCanopyChange2020_2024_G_NoCh FeatureClass MontgomeryTreeCanopyChange2020_2024_G_NoCh_1 #"</Process>
<Process Date="20250813" Time="130618" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\Rename">Rename C:\ProjectData\MNCPPC\MNCPPC\MNCPPC_MC_ChangeNewV1.gdb\Inputs\MontgomeryTreeCanopyChange2020_2024_G_NoCh_1 C:\ProjectData\MNCPPC\MNCPPC\MNCPPC_MC_ChangeNewV1.gdb\Inputs\MontgomeryTreeCanopyChange2020_2024_G_NoCh_TC FeatureClass</Process>
<Process Date="20250813" Time="130829" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\DeleteField">DeleteField MC_NewChangeMap\MontgomeryTreeCanopyChange2020_2024_G_NoCh_TC Class_name "Delete Fields"</Process>
<Process Date="20250813" Time="144735" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Analysis Tools.tbx\PairwiseDissolve">PairwiseDissolve MC_NewChangeMap\MontgomeryTreeCanopyChange2020_2024_G_NoCh_TC C:\ProjectData\MNCPPC\MNCPPC\MNCPPC_MC_ChangeNewV1.gdb\Inputs\MontgomeryTreeCanopyChange2020_2024_G_NoCh_TC_PD # # SINGLE_PART #</Process>
<Process Date="20250813" Time="151951" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\UpdateSchema">UpdateSchema "CIMDATA=&lt;CIMFeatureDatasetDataConnection xsi:type='typens:CIMFeatureDatasetDataConnection' xmlns:xsi='http://www.w3.org/2001/XMLSchema-instance' xmlns:xs='http://www.w3.org/2001/XMLSchema' xmlns:typens='http://www.esri.com/schemas/ArcGIS/3.3.0'&gt;&lt;FeatureDataset&gt;Inputs&lt;/FeatureDataset&gt;&lt;WorkspaceConnectionString&gt;DATABASE=C:\ProjectData\MNCPPC\MNCPPC\MNCPPC_MC_ChangeNewV1.gdb&lt;/WorkspaceConnectionString&gt;&lt;WorkspaceFactory&gt;FileGDB&lt;/WorkspaceFactory&gt;&lt;Dataset&gt;MontgomeryTreeCanopyChange2020_2024_G_NoCh_TC_PD&lt;/Dataset&gt;&lt;DatasetType&gt;esriDTFeatureClass&lt;/DatasetType&gt;&lt;/CIMFeatureDatasetDataConnection&gt;" &lt;operationSequence&gt;&lt;workflow&gt;&lt;AddField&gt;&lt;field_name&gt;Y2&lt;/field_name&gt;&lt;field_type&gt;LONG&lt;/field_type&gt;&lt;field_is_nullable&gt;True&lt;/field_is_nullable&gt;&lt;field_is_required&gt;False&lt;/field_is_required&gt;&lt;/AddField&gt;&lt;/workflow&gt;&lt;/operationSequence&gt;</Process>
<Process Date="20250813" Time="152511" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CalculateField">CalculateField MC_NewChangeMap\MontgomeryTreeCanopyChange2020_2024_G_NoCh_TC_PD Y2 2 Python # Text NO_ENFORCE_DOMAINS</Process>
<Process Date="20250813" Time="193921" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Analysis Tools.tbx\Union">Union "MC_NewChangeMap\MontgomeryTreeCanopyChange2020_2024_G_NoCh_TC_PD #;MC_NewChangeMap\treecanopychange_2018_2020_montgomery_G_NoCh_TC_PD #" C:\ProjectData\MNCPPC\MNCPPC\MNCPPC_MC_ChangeNewV1.gdb\InitialChange\MC2024ChangeMapUnion "All attributes" # GAPS</Process>
<Process Date="20250813" Time="220839" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\UpdateSchema">UpdateSchema "CIMDATA=&lt;CIMFeatureDatasetDataConnection xsi:type='typens:CIMFeatureDatasetDataConnection' xmlns:xsi='http://www.w3.org/2001/XMLSchema-instance' xmlns:xs='http://www.w3.org/2001/XMLSchema' xmlns:typens='http://www.esri.com/schemas/ArcGIS/3.3.0'&gt;&lt;FeatureDataset&gt;InitialChange&lt;/FeatureDataset&gt;&lt;WorkspaceConnectionString&gt;DATABASE=C:\ProjectData\MNCPPC\MNCPPC\MNCPPC_MC_ChangeNewV1.gdb&lt;/WorkspaceConnectionString&gt;&lt;WorkspaceFactory&gt;FileGDB&lt;/WorkspaceFactory&gt;&lt;Dataset&gt;MC2024ChangeMapUnion&lt;/Dataset&gt;&lt;DatasetType&gt;esriDTFeatureClass&lt;/DatasetType&gt;&lt;/CIMFeatureDatasetDataConnection&gt;" &lt;operationSequence&gt;&lt;workflow&gt;&lt;AddField&gt;&lt;field_name&gt;ChangeCalculation&lt;/field_name&gt;&lt;field_type&gt;LONG&lt;/field_type&gt;&lt;field_is_nullable&gt;True&lt;/field_is_nullable&gt;&lt;field_is_required&gt;False&lt;/field_is_required&gt;&lt;/AddField&gt;&lt;/workflow&gt;&lt;/operationSequence&gt;</Process>
<Process Date="20250813" Time="221308" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CalculateField">CalculateField MC_NewChangeMap\MC2024ChangeMapUnion ChangeCalculation "!Y1! + !Y2!" Python # Text NO_ENFORCE_DOMAINS</Process>
<Process Date="20250814" Time="070425" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Conversion Tools.tbx\ExportFeatures">ExportFeatures MC_NewChangeMap\MC2024ChangeMapUnion C:\ProjectData\MNCPPC\MNCPPC\MNCPPC_MC_ChangeNewV1.gdb\FinalChange\MC2024ChangeMapUnion_Final # NOT_USE_ALIAS "FID_MontgomeryTreeCanopyChange2020_2024_G_NoCh_TC_PD "FID_MontgomeryTreeCanopyChange2020_2024_G_NoCh_TC_PD" true true false 4 Long 0 0,First,#,MC_NewChangeMap\MC2024ChangeMapUnion,FID_MontgomeryTreeCanopyChange2020_2024_G_NoCh_TC_PD,-1,-1;Y2 "2024TreeCanopy" true true false 4 Long 0 0,First,#,MC_NewChangeMap\MC2024ChangeMapUnion,Y2,-1,-1;FID_treecanopychange_2018_2020_montgomery_G_NoCh_TC_PD "FID_treecanopychange_2018_2020_montgomery_G_NoCh_TC_PD" true true false 4 Long 0 0,First,#,MC_NewChangeMap\MC2024ChangeMapUnion,FID_treecanopychange_2018_2020_montgomery_G_NoCh_TC_PD,-1,-1;Y1 "2020TreeCanopy" true true false 4 Long 0 0,First,#,MC_NewChangeMap\MC2024ChangeMapUnion,Y1,-1,-1;Shape_Length "Shape_Length" false true true 8 Double 0 0,First,#,MC_NewChangeMap\MC2024ChangeMapUnion,Shape_Length,-1,-1;Shape_Area "Shape_Area" false true true 8 Double 0 0,First,#,MC_NewChangeMap\MC2024ChangeMapUnion,Shape_Area,-1,-1;ChangeCalculation "Y1+Y2" true true false 4 Long 0 0,First,#,MC_NewChangeMap\MC2024ChangeMapUnion,ChangeCalculation,-1,-1" #</Process>
<Process Date="20250814" Time="070616" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\DeleteField">DeleteField MC_NewChangeMap\MC2024ChangeMapUnion_Final FID_MontgomeryTreeCanopyChange2020_2024_G_NoCh_TC_PD "Delete Fields"</Process>
<Process Date="20250814" Time="070839" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\DeleteField">DeleteField MC_NewChangeMap\MC2024ChangeMapUnion_Final FID_treecanopychange_2018_2020_montgomery_G_NoCh_TC_PD "Delete Fields"</Process>
<Process Date="20250814" Time="071129" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\DeleteField">DeleteField MC_NewChangeMap\MC2024ChangeMapUnion_Final Y2;Y1 "Delete Fields"</Process>
<Process Date="20250814" Time="071249" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\UpdateSchema">UpdateSchema "CIMDATA=&lt;CIMFeatureDatasetDataConnection xsi:type='typens:CIMFeatureDatasetDataConnection' xmlns:xsi='http://www.w3.org/2001/XMLSchema-instance' xmlns:xs='http://www.w3.org/2001/XMLSchema' xmlns:typens='http://www.esri.com/schemas/ArcGIS/3.3.0'&gt;&lt;FeatureDataset&gt;FinalChange&lt;/FeatureDataset&gt;&lt;WorkspaceConnectionString&gt;DATABASE=C:\ProjectData\MNCPPC\MNCPPC\MNCPPC_MC_ChangeNewV1.gdb&lt;/WorkspaceConnectionString&gt;&lt;WorkspaceFactory&gt;FileGDB&lt;/WorkspaceFactory&gt;&lt;Dataset&gt;MC2024ChangeMapUnion_Final&lt;/Dataset&gt;&lt;DatasetType&gt;esriDTFeatureClass&lt;/DatasetType&gt;&lt;/CIMFeatureDatasetDataConnection&gt;" &lt;operationSequence&gt;&lt;workflow&gt;&lt;AddField&gt;&lt;field_name&gt;Class&lt;/field_name&gt;&lt;field_type&gt;TEXT&lt;/field_type&gt;&lt;field_length&gt;255&lt;/field_length&gt;&lt;field_is_nullable&gt;True&lt;/field_is_nullable&gt;&lt;field_is_required&gt;False&lt;/field_is_required&gt;&lt;/AddField&gt;&lt;/workflow&gt;&lt;/operationSequence&gt;</Process>
<Process Date="20250814" Time="071503" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CalculateField">CalculateField MC_NewChangeMap\MC2024ChangeMapUnion_Final Class 'Loss' Python # Text NO_ENFORCE_DOMAINS</Process>
<Process Date="20250814" Time="071634" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CalculateField">CalculateField MC_NewChangeMap\MC2024ChangeMapUnion_Final Class 'Gain' Python # Text NO_ENFORCE_DOMAINS</Process>
<Process Date="20250814" Time="071827" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CalculateField">CalculateField MC_NewChangeMap\MC2024ChangeMapUnion_Final Class 'No Change' Python # Text NO_ENFORCE_DOMAINS</Process>
<Process Date="20250814" Time="072154" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CopyMultiple">CopyMultiple "C:\ProjectData\MNCPPC\MNCPPC\MNCPPC_MC_ChangeNewV1.gdb\FinalChange\MC2024ChangeMapUnion_Final FeatureClass" C:\ProjectData\MNCPPC\MNCPPC\MNCPPC_MC_ChangeNewV1.gdb\FinalChange MC2024ChangeMapUnion_Final_1 "MC2024ChangeMapUnion_Final FeatureClass MC2024ChangeMapUnion_Final_1 #"</Process>
<Process Date="20250814" Time="073130" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\Toolboxes\Data Management Tools.tbx\Rename">Rename C:\ProjectData\MNCPPC\MNCPPC\MontgomeryTreeCanopyChange2020_2024.gdb\Data\MC2024ChangeMapUnion_Final_1 C:\ProjectData\MNCPPC\MNCPPC\MontgomeryTreeCanopyChange2020_2024.gdb\Data\MontgomeryTreeCanopyChange2020_2024 FeatureClass</Process>
<Process Date="20250814" Time="073311" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\Toolboxes\Data Management Tools.tbx\DeleteField">DeleteField MC_NewChangeMap\MontgomeryTreeCanopyChange2020_2024 ChangeCalculation "Delete Fields"</Process>
<Process Date="20250818" Time="134821" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CopyFeatures">CopyFeatures Z:\6-FinalDataDeliverableFolders\Arc10x_Compatible_GeoDatabase\MontgomeryTreeCanopyChange2020_2024.gdb\Data\MontgomeryTreeCanopyChange2020_2024 Z:\6-FinalDataDeliverableFolders\Arc10x_Compatible_GeoDatabase\PrinceGeorgesTreeCanopyChange2020_2024.gdb\Data\MontgomeryTreeCanopyChange2020_2024 # # # #</Process>
<Process Date="20250904" Time="205710" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\Append">Append C:\Users\Public\Nwt\cache\recv\李品\TreeCanopyChange20202024MNCPPC.gdb\Data\MontgomeryTreeCanopyChangeqiemu E:\zhc\0904\TreeCanopyChange20202024MNCPPC空.gdb\Data\MontgomeryTreeCanopyChange2020_2024 "Use the field map to reconcile field differences" "Class "Class" true true false 255 Text 0 0,First,#,C:\Users\Public\Nwt\cache\recv\李品\TreeCanopyChange20202024MNCPPC.gdb\Data\MontgomeryTreeCanopyChangeqiemu,Class,0,255" # #</Process>
<Process Date="20251024" Time="150842" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\Append">Append hyf MontgomeryTreeCanopyChange2020_2024 使用字段映射协调字段差异 "Class "Class" true true false 255 Text 0 0,First,#,D:\1024\TreeCanopyChange20202024MNCPPC_m.gdb\Data\hyf,Class,0,254" # # # NOT_UPDATE_GEOMETRY</Process>
<Process Date="20251101" Time="102926" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\Append">Append bum MontgomeryTreeCanopyChange2020_2024 使用字段映射协调字段差异 "Class "Class" true true false 255 Text 0 0,First,#,D:\bum.shp,Class,0,253" # # # NOT_UPDATE_GEOMETRY</Process>
<Process Date="20251101" Time="132811" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\Append">Append MontgomeryTreeCanop_ExportFeatures MontgomeryTreeCanopyChange2020_2024 使用字段映射协调字段差异 "Class "Class" true true false 255 Text 0 0,First,#,D:\Backup\Documents\ArcGIS\Projects\MyProject7\MyProject7.gdb\MontgomeryTreeCanop_ExportFeatures,Class,0,254" # # # NOT_UPDATE_GEOMETRY</Process>
<Process Date="20251103" Time="153330" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\Append">Append we3_Identity MontgomeryTreeCanopyChange2020_2024 使用字段映射协调字段差异 "Class "Class" true true false 255 Text 0 0,First,#,D:\we3_Identity.shp,Class,0,253" # # # NOT_UPDATE_GEOMETRY</Process>
<Process Date="20251103" Time="155627" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\Append">Append 77777777 MontgomeryTreeCanopyChange2020_2024 使用字段映射协调字段差异 "Class "Class" true true false 255 Text 0 0,First,#,D:\77777777.shp,Class,0,253" # # # NOT_UPDATE_GEOMETRY</Process>
<Process Date="20251106" Time="171244" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\DeleteFeatures">DeleteFeatures MontgomeryTreeCanopyChange2020_2024</Process>
<Process Date="20251106" Time="194106" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CalculateGeometryAttributes">CalculateGeometryAttributes MontgomeryTreeCanopyChange2020_2024 "ACRES AREA" # ACRES_US PROJCS["NAD_1983_HARN_StatePlane_Maryland_FIPS_1900_Feet",GEOGCS["GCS_North_American_1983_HARN",DATUM["D_North_American_1983_HARN",SPHEROID["GRS_1980",6378137.0,298.257222101]],PRIMEM["Greenwich",0.0],UNIT["Degree",0.0174532925199433]],PROJECTION["Lambert_Conformal_Conic"],PARAMETER["False_Easting",1312333.333333333],PARAMETER["False_Northing",0.0],PARAMETER["Central_Meridian",-77.0],PARAMETER["Standard_Parallel_1",38.3],PARAMETER["Standard_Parallel_2",39.45],PARAMETER["Latitude_Of_Origin",37.66666666666666],UNIT["Foot_US",0.3048006096012192]] SAME_AS_INPUT</Process>
<Process Date="20251113" Time="094805" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Conversion Tools.tbx\ExportFeatures">ExportFeatures MontgomeryTreeCanopyChange2020_2024 "D:\Projects\Environmental\Tree_Canopy\Tree_Canopy\New File Geodatabase.gdb\Tree_Canopy_2024" # NOT_USE_ALIAS "Class "Class" true true false 255 Text 0 0,First,#,MontgomeryTreeCanopyChange2020_2024,Class,0,254;Shape_Length "Shape_Length" false true true 8 Double 0 0,First,#,MontgomeryTreeCanopyChange2020_2024,Shape_Length,-1,-1;Shape_Area "Shape_Area" false true true 8 Double 0 0,First,#,MontgomeryTreeCanopyChange2020_2024,Shape_Area,-1,-1;ACRES "ACRES" true true false 8 Double 0 0,First,#,MontgomeryTreeCanopyChange2020_2024,ACRES,-1,-1" #</Process>
<Process Date="20251113" Time="220953" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Analysis Tools.tbx\Clip">Clip "D:\Projects\Environmental\Tree_Canopy\Tree_Canopy\New File Geodatabase.gdb\Tree_Canopy_2024" clip_layer "D:\Projects\Environmental\Tree_Canopy\Tree_Canopy\New File Geodatabase.gdb\TC_1" #</Process>
<Process Date="20251114" Name="Dissolve" Time="103952" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\Dissolve">Dissolve TC_1 C:\Default.gdb\Dissolve_OutFeatureClass_TC_1 # # SINGLE_PART DISSOLVE_LINES #</Process>
<Process Date="20251114" Time="114449" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CopyMultiple">CopyMultiple "C:\Default.gdb\Dissolve_OutFeatureClass_TC_1 FeatureClass;C:\Default.gdb\Dissolve_OutFeatureClass_TC_2 FeatureClass;C:\Default.gdb\Dissolve_OutFeatureClass_TC_3 FeatureClass;C:\Default.gdb\Dissolve_OutFeatureClass_TC_4 FeatureClass;C:\Default.gdb\Dissolve_OutFeatureClass_TC_5 FeatureClass;C:\Default.gdb\Dissolve_OutFeatureClass_TC_6 FeatureClass;C:\Default.gdb\Dissolve_OutFeatureClass_TC_7 FeatureClass;C:\Default.gdb\Dissolve_OutFeatureClass_TC_8 FeatureClass;C:\Default.gdb\Dissolve_OutFeatureClass_TC_9 FeatureClass;C:\Default.gdb\Dissolve_OutFeatureClass_TC_10 FeatureClass;C:\Default.gdb\Dissolve_OutFeatureClass_TC_11 FeatureClass" "D:\Projects\Environmental\Tree_Canopy\Tree_Canopy\New File Geodatabase.gdb" Dissolve_OutFeatureClass_TC_1;Dissolve_OutFeatureClass_TC_2;Dissolve_OutFeatureClass_TC_3;Dissolve_OutFeatureClass_TC_4;Dissolve_OutFeatureClass_TC_5;Dissolve_OutFeatureClass_TC_6;Dissolve_OutFeatureClass_TC_7;Dissolve_OutFeatureClass_TC_8;Dissolve_OutFeatureClass_TC_9;Dissolve_OutFeatureClass_TC_10;Dissolve_OutFeatureClass_TC_11 "Dissolve_OutFeatureClass_TC_1 FeatureClass Dissolve_OutFeatureClass_TC_1 #;Dissolve_OutFeatureClass_TC_2 FeatureClass Dissolve_OutFeatureClass_TC_2 #;Dissolve_OutFeatureClass_TC_3 FeatureClass Dissolve_OutFeatureClass_TC_3 #;Dissolve_OutFeatureClass_TC_4 FeatureClass Dissolve_OutFeatureClass_TC_4 #;Dissolve_OutFeatureClass_TC_5 FeatureClass Dissolve_OutFeatureClass_TC_5 #;Dissolve_OutFeatureClass_TC_6 FeatureClass Dissolve_OutFeatureClass_TC_6 #;Dissolve_OutFeatureClass_TC_7 FeatureClass Dissolve_OutFeatureClass_TC_7 #;Dissolve_OutFeatureClass_TC_8 FeatureClass Dissolve_OutFeatureClass_TC_8 #;Dissolve_OutFeatureClass_TC_9 FeatureClass Dissolve_OutFeatureClass_TC_9 #;Dissolve_OutFeatureClass_TC_10 FeatureClass Dissolve_OutFeatureClass_TC_10 #;Dissolve_OutFeatureClass_TC_11 FeatureClass Dissolve_OutFeatureClass_TC_11 #"</Process>
<Process Date="20251114" Time="140211" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Cartography Tools.tbx\SimplifyPolygon">SimplifyPolygon Dissolve_OutFeatureClass_TC_1 "D:\Projects\Environmental\Tree_Canopy\Tree_Canopy\New File Geodatabase.gdb\TC_1_simplify" POINT_REMOVE "0.5 Feet" "0.5 SquareFeetUS" NO_CHECK NO_KEEP #</Process>
<Process Date="20251114" Time="165520" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\Merge">Merge TC_1_simplify;TC_2_simplify;TC_3_simplify;TC_4_simplify;TC_5_simplify;TC_6_simplify;TC_7_simplify;TC_8_simplify;TC_9_simplify;TC_10_simplify;TC_11_simplify "D:\Projects\Environmental\Tree_Canopy\Tree_Canopy\New File Geodatabase.gdb\Tree_Canopy_2024_merge" "InPoly_FID "InPoly_FID" true true false 4 Long 0 0,First,#,TC_1_simplify,InPoly_FID,-1,-1,TC_2_simplify,InPoly_FID,-1,-1,TC_3_simplify,InPoly_FID,-1,-1,TC_4_simplify,InPoly_FID,-1,-1,TC_5_simplify,InPoly_FID,-1,-1,TC_6_simplify,InPoly_FID,-1,-1,TC_7_simplify,InPoly_FID,-1,-1,TC_8_simplify,InPoly_FID,-1,-1,TC_9_simplify,InPoly_FID,-1,-1,TC_10_simplify,InPoly_FID,-1,-1,TC_11_simplify,InPoly_FID,-1,-1;MaxSimpTol "MaxSimpTol" true true false 8 Double 0 0,First,#,TC_1_simplify,MaxSimpTol,-1,-1,TC_2_simplify,MaxSimpTol,-1,-1,TC_3_simplify,MaxSimpTol,-1,-1,TC_4_simplify,MaxSimpTol,-1,-1,TC_5_simplify,MaxSimpTol,-1,-1,TC_6_simplify,MaxSimpTol,-1,-1,TC_7_simplify,MaxSimpTol,-1,-1,TC_8_simplify,MaxSimpTol,-1,-1,TC_9_simplify,MaxSimpTol,-1,-1,TC_10_simplify,MaxSimpTol,-1,-1,TC_11_simplify,MaxSimpTol,-1,-1;MinSimpTol "MinSimpTol" true true false 8 Double 0 0,First,#,TC_1_simplify,MinSimpTol,-1,-1,TC_2_simplify,MinSimpTol,-1,-1,TC_3_simplify,MinSimpTol,-1,-1,TC_4_simplify,MinSimpTol,-1,-1,TC_5_simplify,MinSimpTol,-1,-1,TC_6_simplify,MinSimpTol,-1,-1,TC_7_simplify,MinSimpTol,-1,-1,TC_8_simplify,MinSimpTol,-1,-1,TC_9_simplify,MinSimpTol,-1,-1,TC_10_simplify,MinSimpTol,-1,-1,TC_11_simplify,MinSimpTol,-1,-1" NO_SOURCE_INFO MANUAL_EDIT</Process>
<Process Date="20251114" Time="165624" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\DeleteField">DeleteField Tree_Canopy_2024_merge InPoly_FID DELETE_FIELDS</Process>
<Process Date="20251114" Time="165644" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\DeleteField">DeleteField Tree_Canopy_2024_merge MaxSimpTol DELETE_FIELDS</Process>
<Process Date="20251114" Time="165706" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\DeleteField">DeleteField Tree_Canopy_2024_merge MinSimpTol DELETE_FIELDS</Process>
<Process Date="20251114" Time="165720" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\UpdateSchema">UpdateSchema "CIMDATA=&lt;CIMStandardDataConnection xsi:type='typens:CIMStandardDataConnection' xmlns:xsi='http://www.w3.org/2001/XMLSchema-instance' xmlns:xs='http://www.w3.org/2001/XMLSchema' xmlns:typens='http://www.esri.com/schemas/ArcGIS/3.4.0'&gt;&lt;WorkspaceConnectionString&gt;DATABASE=D:\Projects\Environmental\Tree_Canopy\Tree_Canopy\New File Geodatabase.gdb&lt;/WorkspaceConnectionString&gt;&lt;WorkspaceFactory&gt;FileGDB&lt;/WorkspaceFactory&gt;&lt;Dataset&gt;Tree_Canopy_2024_merge&lt;/Dataset&gt;&lt;DatasetType&gt;esriDTFeatureClass&lt;/DatasetType&gt;&lt;/CIMStandardDataConnection&gt;" &lt;operationSequence&gt;&lt;workflow&gt;&lt;AddField&gt;&lt;field_name&gt;ACRES&lt;/field_name&gt;&lt;field_type&gt;DOUBLE&lt;/field_type&gt;&lt;field_is_nullable&gt;True&lt;/field_is_nullable&gt;&lt;field_is_required&gt;False&lt;/field_is_required&gt;&lt;/AddField&gt;&lt;/workflow&gt;&lt;/operationSequence&gt;</Process>
<Process Date="20251114" Time="170102" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CalculateGeometryAttributes">CalculateGeometryAttributes Tree_Canopy_2024_merge "ACRES AREA" # ACRES_US PROJCS["NAD_1983_HARN_StatePlane_Maryland_FIPS_1900_Feet",GEOGCS["GCS_North_American_1983_HARN",DATUM["D_North_American_1983_HARN",SPHEROID["GRS_1980",6378137.0,298.257222101]],PRIMEM["Greenwich",0.0],UNIT["Degree",0.0174532925199433]],PROJECTION["Lambert_Conformal_Conic"],PARAMETER["False_Easting",1312333.333333333],PARAMETER["False_Northing",0.0],PARAMETER["Central_Meridian",-77.0],PARAMETER["Standard_Parallel_1",38.3],PARAMETER["Standard_Parallel_2",39.45],PARAMETER["Latitude_Of_Origin",37.66666666666666],UNIT["Foot_US",0.3048006096012192]] SAME_AS_INPUT</Process>
<Process Date="20251114" Time="170330" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\Rename">Rename "D:\Projects\Environmental\Tree_Canopy\Tree_Canopy\New File Geodatabase.gdb\Tree_Canopy_2024_merge" "D:\Projects\Environmental\Tree_Canopy\Tree_Canopy\New File Geodatabase.gdb\Tree_Canopy_2024_dissolve_merge" FeatureClass</Process>
<Process Date="20251119" Time="163342" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\RepairGeometry">RepairGeometry Tree_Canopy_2024_dissolve_merge DELETE_NULL ESRI</Process>
<Process Date="20251119" Time="164457" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CalculateGeometryAttributes">CalculateGeometryAttributes Tree_Canopy_2024_dissolve_merge "ACRES AREA" # ACRES_US PROJCS["NAD_1983_HARN_StatePlane_Maryland_FIPS_1900_Feet",GEOGCS["GCS_North_American_1983_HARN",DATUM["D_North_American_1983_HARN",SPHEROID["GRS_1980",6378137.0,298.257222101]],PRIMEM["Greenwich",0.0],UNIT["Degree",0.0174532925199433]],PROJECTION["Lambert_Conformal_Conic"],PARAMETER["False_Easting",1312333.333333333],PARAMETER["False_Northing",0.0],PARAMETER["Central_Meridian",-77.0],PARAMETER["Standard_Parallel_1",38.3],PARAMETER["Standard_Parallel_2",39.45],PARAMETER["Latitude_Of_Origin",37.66666666666666],UNIT["Foot_US",0.3048006096012192]] SAME_AS_INPUT</Process>
<Process Date="20251119" Time="165917" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\UpdateSchema">UpdateSchema "CIMDATA=&lt;CIMStandardDataConnection xsi:type='typens:CIMStandardDataConnection' xmlns:xsi='http://www.w3.org/2001/XMLSchema-instance' xmlns:xs='http://www.w3.org/2001/XMLSchema' xmlns:typens='http://www.esri.com/schemas/ArcGIS/3.4.0'&gt;&lt;WorkspaceConnectionString&gt;DATABASE=D:\Projects\Environmental\Tree_Canopy\Tree_Canopy\New File Geodatabase.gdb&lt;/WorkspaceConnectionString&gt;&lt;WorkspaceFactory&gt;FileGDB&lt;/WorkspaceFactory&gt;&lt;Dataset&gt;Tree_Canopy_2024_dissolve_merge&lt;/Dataset&gt;&lt;DatasetType&gt;esriDTFeatureClass&lt;/DatasetType&gt;&lt;/CIMStandardDataConnection&gt;" &lt;operationSequence&gt;&lt;workflow&gt;&lt;AddField&gt;&lt;field_name&gt;VCount&lt;/field_name&gt;&lt;field_type&gt;LONG&lt;/field_type&gt;&lt;field_is_nullable&gt;True&lt;/field_is_nullable&gt;&lt;field_is_required&gt;False&lt;/field_is_required&gt;&lt;/AddField&gt;&lt;/workflow&gt;&lt;/operationSequence&gt;</Process>
<Process Date="20251119" Time="170246" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CalculateField">CalculateField Tree_Canopy_2024_dissolve_merge VCount !Shape!.pointcount PYTHON3 # TEXT NO_ENFORCE_DOMAINS</Process>
<Process Date="20251119" Time="171050" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\Dice">Dice Tree_Canopy_2024_dissolve_merge C:\Default.gdb\Tree_Canopy_2024_dissolve_merge_Dice 5000</Process>
<Process Date="20251119" Time="171837" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\DeleteField">DeleteField Tree_Canopy_2024_dissolve_merge_Dice VCount DELETE_FIELDS</Process>
<Process Date="20251119" Time="172352" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CalculateGeometryAttributes">CalculateGeometryAttributes Tree_Canopy_2024_dissolve_merge_Dice "ACRES AREA" # ACRES_US PROJCS["NAD_1983_HARN_StatePlane_Maryland_FIPS_1900_Feet",GEOGCS["GCS_North_American_1983_HARN",DATUM["D_North_American_1983_HARN",SPHEROID["GRS_1980",6378137.0,298.257222101]],PRIMEM["Greenwich",0.0],UNIT["Degree",0.0174532925199433]],PROJECTION["Lambert_Conformal_Conic"],PARAMETER["False_Easting",1312333.333333333],PARAMETER["False_Northing",0.0],PARAMETER["Central_Meridian",-77.0],PARAMETER["Standard_Parallel_1",38.3],PARAMETER["Standard_Parallel_2",39.45],PARAMETER["Latitude_Of_Origin",37.66666666666666],UNIT["Foot_US",0.3048006096012192]] SAME_AS_INPUT</Process>
<Process Date="20251119" Time="172939" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CopyFeatures">CopyFeatures Tree_Canopy_2024_dissolve_merge_Dice "D:\Projects\Environmental\Tree_Canopy\Tree_Canopy\New File Geodatabase.gdb\Tree_Canopy_2024_dissolve_merge_Dice" # # # #</Process>
<Process Date="20251119" Time="173310" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\Rename">Rename "D:\Projects\Environmental\Tree_Canopy\Tree_Canopy\New File Geodatabase.gdb\Tree_Canopy_2024_dissolve_merge_Dice" "D:\Projects\Environmental\Tree_Canopy\Tree_Canopy\New File Geodatabase.gdb\Tree_Canopy_2024" FeatureClass</Process>
<Process Date="20251119" Time="173850" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\Rename">Rename "D:\Projects\Environmental\Tree_Canopy\Tree_Canopy\New File Geodatabase.gdb\Tree_Canopy_2024" "D:\Projects\Environmental\Tree_Canopy\Tree_Canopy\New File Geodatabase.gdb\tree_canopy_203" FeatureClass</Process>
<Process Date="20251119" Time="173855" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\Rename">Rename "D:\Projects\Environmental\Tree_Canopy\Tree_Canopy\New File Geodatabase.gdb\tree_canopy_203" "D:\Projects\Environmental\Tree_Canopy\Tree_Canopy\New File Geodatabase.gdb\tree_canopy_2023" FeatureClass</Process>
<Process Date="20251202" Time="103836" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\UpdateSchema">UpdateSchema "CIMDATA=&lt;CIMStandardDataConnection xsi:type='typens:CIMStandardDataConnection' xmlns:xsi='http://www.w3.org/2001/XMLSchema-instance' xmlns:xs='http://www.w3.org/2001/XMLSchema' xmlns:typens='http://www.esri.com/schemas/ArcGIS/3.4.0'&gt;&lt;WorkspaceConnectionString&gt;DATABASE=D:\Projects\Environmental\Tree_Canopy\Tree_Canopy\New File Geodatabase.gdb&lt;/WorkspaceConnectionString&gt;&lt;WorkspaceFactory&gt;FileGDB&lt;/WorkspaceFactory&gt;&lt;Dataset&gt;tree_canopy_2023&lt;/Dataset&gt;&lt;DatasetType&gt;esriDTFeatureClass&lt;/DatasetType&gt;&lt;/CIMStandardDataConnection&gt;" &lt;operationSequence&gt;&lt;workflow&gt;&lt;AddField&gt;&lt;field_name&gt;DATE&lt;/field_name&gt;&lt;field_type&gt;TEXT&lt;/field_type&gt;&lt;field_length&gt;255&lt;/field_length&gt;&lt;field_alias&gt;DATE&lt;/field_alias&gt;&lt;field_is_nullable&gt;True&lt;/field_is_nullable&gt;&lt;field_is_required&gt;False&lt;/field_is_required&gt;&lt;/AddField&gt;&lt;/workflow&gt;&lt;/operationSequence&gt;</Process>
<Process Date="20251202" Time="104325" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CalculateField">CalculateField tree_canopy_2023 DATE "TC2023" PYTHON3 # TEXT NO_ENFORCE_DOMAINS</Process>
<Process Date="20251203" Time="162350" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\UpdateSchema">UpdateSchema "CIMDATA=&lt;CIMStandardDataConnection xsi:type='typens:CIMStandardDataConnection' xmlns:xsi='http://www.w3.org/2001/XMLSchema-instance' xmlns:xs='http://www.w3.org/2001/XMLSchema' xmlns:typens='http://www.esri.com/schemas/ArcGIS/3.4.0'&gt;&lt;WorkspaceConnectionString&gt;DATABASE=D:\Projects\Environmental\Tree_Canopy\Tree_Canopy\New File Geodatabase.gdb&lt;/WorkspaceConnectionString&gt;&lt;WorkspaceFactory&gt;FileGDB&lt;/WorkspaceFactory&gt;&lt;Dataset&gt;tree_canopy_2023&lt;/Dataset&gt;&lt;DatasetType&gt;esriDTFeatureClass&lt;/DatasetType&gt;&lt;/CIMStandardDataConnection&gt;" "&lt;operationSequence&gt;&lt;workflow&gt;&lt;AddField&gt;&lt;field_name&gt;CLASS&lt;/field_name&gt;&lt;field_type&gt;TEXT&lt;/field_type&gt;&lt;field_length&gt;255&lt;/field_length&gt;&lt;field_alias&gt;Tree Canopy Change Class&lt;/field_alias&gt;&lt;field_is_nullable&gt;True&lt;/field_is_nullable&gt;&lt;field_is_required&gt;False&lt;/field_is_required&gt;&lt;/AddField&gt;&lt;/workflow&gt;&lt;/operationSequence&gt;"</Process>
<Process Date="20251203" Time="162424" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\DeleteField">DeleteField tree_canopy_2023 DATE DELETE_FIELDS</Process>
<Process Date="20251203" Time="162550" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CalculateField">CalculateField tree_canopy_2023 CLASS "No Change" PYTHON3 # TEXT NO_ENFORCE_DOMAINS</Process>
<Process Date="20251203" Time="165753" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Analysis Tools.tbx\PairwiseErase">PairwiseErase tree_canopy_2023 tree_canopy_2023_gains_gte100_clip2 D:\Projects\Environmental\Tree_Canopy\Tree_Canopy\tree_canopy_change.gdb\tree_canopy_2023_2 #</Process>
<Process Date="20251203" Time="171835" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\Append">Append tree_canopy_2023_gains_gte100_clip2 tree_canopy_2023_2 NO_TEST "ACRES "ACRES" true true false 8 Double 0 0,First,#;CLASS "Tree Canopy Change Class" true true false 255 Text 0 0,First,#,tree_canopy_2023_gains_gte100_clip2,TYPE,0,254" # # # NOT_UPDATE_GEOMETRY NO_ENFORCE_DOMAINS</Process>
<Process Date="20251203" Time="174009" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CalculateGeometryAttributes">CalculateGeometryAttributes tree_canopy_2023_2 "ACRES AREA" # ACRES_US PROJCS["NAD_1983_HARN_StatePlane_Maryland_FIPS_1900_Feet",GEOGCS["GCS_North_American_1983_HARN",DATUM["D_North_American_1983_HARN",SPHEROID["GRS_1980",6378137.0,298.257222101]],PRIMEM["Greenwich",0.0],UNIT["Degree",0.0174532925199433]],PROJECTION["Lambert_Conformal_Conic"],PARAMETER["False_Easting",1312333.333333333],PARAMETER["False_Northing",0.0],PARAMETER["Central_Meridian",-77.0],PARAMETER["Standard_Parallel_1",38.3],PARAMETER["Standard_Parallel_2",39.45],PARAMETER["Latitude_Of_Origin",37.66666666666666],UNIT["Foot_US",0.3048006096012192]] SAME_AS_INPUT</Process>
<Process Date="20251204" Time="102940" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\Toolboxes\Data Management Tools.tbx\UpdateSchema">UpdateSchema "CIMDATA=&lt;CIMStandardDataConnection xsi:type='typens:CIMStandardDataConnection' xmlns:xsi='http://www.w3.org/2001/XMLSchema-instance' xmlns:xs='http://www.w3.org/2001/XMLSchema' xmlns:typens='http://www.esri.com/schemas/ArcGIS/3.4.0'&gt;&lt;WorkspaceConnectionString&gt;DATABASE=D:\Projects\Environmental\Tree_Canopy\Tree_Canopy\tree_canopy_change.gdb&lt;/WorkspaceConnectionString&gt;&lt;WorkspaceFactory&gt;FileGDB&lt;/WorkspaceFactory&gt;&lt;Dataset&gt;tree_canopy_2023_2&lt;/Dataset&gt;&lt;DatasetType&gt;esriDTFeatureClass&lt;/DatasetType&gt;&lt;/CIMStandardDataConnection&gt;" &lt;operationSequence&gt;&lt;workflow&gt;&lt;AddField&gt;&lt;field_name&gt;NOTE&lt;/field_name&gt;&lt;field_type&gt;TEXT&lt;/field_type&gt;&lt;field_length&gt;255&lt;/field_length&gt;&lt;field_is_nullable&gt;True&lt;/field_is_nullable&gt;&lt;field_is_required&gt;False&lt;/field_is_required&gt;&lt;/AddField&gt;&lt;/workflow&gt;&lt;/operationSequence&gt;</Process>
<Process Date="20251204" Time="103411" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CalculateField">CalculateField tree_canopy_2023_2 NOTE "Tree Canopy gains were limited to areas equal to or over 100 sqft. This threshold was used to avoid classifying noise, shadows, or small shrubs as Tree Canopy." PYTHON3 # TEXT NO_ENFORCE_DOMAINS</Process>
<Process Date="20251204" Time="104403" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CalculateField">CalculateField tree_canopy_2023_2 NOTE "Tree Canopy 'Gains' were limited to areas equal to or over 100 square feet in size. This threshold, based on the 0.5 foot resolution of the source data, removes tiny fragments of noise while keeping all legitimate tree crown growth." PYTHON3 # TEXT NO_ENFORCE_DOMAINS</Process>
<Process Date="20251204" Time="111356" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\RepairGeometry">RepairGeometry tree_canopy_2023_2 DELETE_NULL ESRI</Process>
<Process Date="20251204" Time="114746" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CopyFeatures">CopyFeatures tree_canopy_2023_2 Q:\environ\TreeCanopy\2023\TreeCanopy_2023.gdb\tree_canopy_2023_2 # # # #</Process>
<Process Date="20251204" Time="155212" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\Toolboxes\Data Management Tools.tbx\Rename">Rename Z:\SVC_PUB\data\TreeCanopy_2023.gdb\tree_canopy_2023_2 Z:\SVC_PUB\data\TreeCanopy_2023.gdb\tree_canopy_2023 FeatureClass</Process>
<Process Date="20260114" Time="121607" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\RepairGeometry">RepairGeometry tree_canopy_2023 DELETE_NULL ESRI</Process>
<Process Date="20260115" Time="113155" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Conversion Tools.tbx\ExportFeatures">ExportFeatures tree_canopy_2023 \\mc-webap11\e$\SVC_PUB\data\TreeCanopy_2023_wm.gdb\tree_canopy_2023 # NOT_USE_ALIAS "ACRES "ACRES" true true false 8 Double 0 0,First,#,tree_canopy_2023,ACRES,-1,-1;CLASS "Tree Canopy Change Class" true true false 255 Text 0 0,First,#,tree_canopy_2023,CLASS,0,254;NOTE "NOTE" true true false 255 Text 0 0,First,#,tree_canopy_2023,NOTE,0,254;Shape_Length "Shape_Length" false true true 8 Double 0 0,First,#,tree_canopy_2023,Shape_Length,-1,-1;Shape_Area "Shape_Area" false true true 8 Double 0 0,First,#,tree_canopy_2023,Shape_Area,-1,-1" #</Process>
</lineage>
</DataProperties>
<SyncDate>20260115</SyncDate>
<SyncTime>11292600</SyncTime>
<ModDate>20260115</ModDate>
<ModTime>11292600</ModTime>
</Esri>
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<idAbs>Tree Canopy is defined as vegetation 8 feet tall or higher. Montgomery Planning regularly purchases LiDAR data to support various products, and the interactive tool you will see below is is one such product. Four band infrared imagery is combined with LiDAR to extract our tree canopy layers.
The 2009, 2014, and 2018 tree canopy layers used the &amp;quot;QL2&amp;quot; LiDAR standard, which captures only 4 samples per square meter. Starting with the department’s 2020 tree canopy layers, a higher quality LiDAR standard called &amp;quot;QL1&amp;quot; was used. This new technology captures 8 samples per square meter.
The new QL1 technology is better able to capture smaller saplings that the QL2 technology could have have missed. QL1 also has the ability to better detect the fringes of tree canopy. Because of the higher resolution of QL1, the overall tree canopy capture for any given area is higher than it would be if it were measured by the older QL2 today. &lt;div&gt;&lt;br /&gt;&lt;/div&gt;&lt;div&gt;For more information, contact: GIS Manager Research &amp;amp; Strategic Projects (RSP) Montgomery County Planning Department, MNCPPC T: 301-650-5620&lt;/div&gt;</idAbs>
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<keyword>Montgomery County Planning Department</keyword>
<keyword>Montgomery County</keyword>
<keyword>MNCPPC</keyword>
<keyword>Maryland</keyword>
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<idPurp>Tree Canopy (2023) in Montgomery County, MD.</idPurp>
<idCredit>Research &amp; Strategic Projects (RSP), Montgomery County Planning Department, MNCPPC
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