<?xml version="1.0" encoding="UTF-8" standalone="no"?>
<metadata xml:lang="en">
<Esri>
<CreaDate>20210813</CreaDate>
<CreaTime>07092900</CreaTime>
<ArcGISFormat>1.0</ArcGISFormat>
<SyncOnce>FALSE</SyncOnce>
<DataProperties>
<lineage>
<Process Date="20210416" Name="" Time="095851" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\UpdateSchema" export="">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/2.5.0'&gt;&lt;WorkspaceConnectionString&gt;DATABASE=C:\Users\KIMS\Desktop\Projects_2021\LakeOntarioBHS_20210308\Streams stats in watersheds\working.gdb&lt;/WorkspaceConnectionString&gt;&lt;WorkspaceFactory&gt;FileGDB&lt;/WorkspaceFactory&gt;&lt;Dataset&gt;EnhancedWatercourse_Inland_MERGED_JOIN&lt;/Dataset&gt;&lt;DatasetType&gt;esriDTFeatureClass&lt;/DatasetType&gt;&lt;/CIMStandardDataConnection&gt;" &lt;operationSequence&gt;&lt;workflow&gt;&lt;DeleteField&gt;&lt;field_name&gt;STREAM_ID&lt;/field_name&gt;&lt;field_name&gt;OUTFLOW_ID&lt;/field_name&gt;&lt;field_name&gt;Unit_Name&lt;/field_name&gt;&lt;field_name&gt;Unit_Num&lt;/field_name&gt;&lt;field_name&gt;OGF_ID_1&lt;/field_name&gt;&lt;/DeleteField&gt;&lt;/workflow&gt;&lt;/operationSequence&gt;</Process>
<Process Date="20210416" Name="" Time="100032" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\Dissolve" export="">Dissolve EnhancedWatercourse_Inland_MERGED_JOIN C:\Users\KIMS\AppData\Local\Temp\2\ArcGISProTemp15856\f9daf552-a903-49da-bff6-c52168d46175\Default.gdb\EnhancedWatercourse_Inland_M SHREVE;OUTFLOW_ID_1;STREAM_ID_1;Unit_Name_1;Unit_Num_1 # MULTI_PART DISSOLVE_LINES</Process>
<Process Date="20210416" Name="" Time="161150" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Conversion Tools.tbx\FeatureClassToFeatureClass" export="">FeatureClassToFeatureClass EnhancedWatercourse_Inland_M "C:\Users\KIMS\Desktop\Projects_2021\LakeOntarioBHS_20210308\Streams stats in watersheds\Stats.gdb" EnhancedWatercourse_watershed # "SHREVE "SHREVE" true true false 4 Long 0 0,First,#,EnhancedWatercourse_Inland_M,SHREVE,-1,-1;OUTFLOW_ID_1 "OUTFLOW_ID" true true false 8 Double 0 0,First,#,EnhancedWatercourse_Inland_M,OUTFLOW_ID_1,-1,-1;STREAM_ID_1 "STREAM_ID" true true false 8 Double 0 0,First,#,EnhancedWatercourse_Inland_M,STREAM_ID_1,-1,-1;Unit_Name_1 "Unit_Name" true true false 8000 Text 0 0,First,#,EnhancedWatercourse_Inland_M,Unit_Name_1,0,8000;Unit_Num_1 "Unit_Num" true true false 8 Double 0 0,First,#,EnhancedWatercourse_Inland_M,Unit_Num_1,-1,-1;Shape_Length "Shape_Length" false true true 8 Double 0 0,First,#,EnhancedWatercourse_Inland_M,Shape_Length,-1,-1" #</Process>
<Process Date="20210505" Name="" Time="104837" ToolSource="c:\program files (x86)\arcgis\desktop10.6\ArcToolbox\Toolboxes\Data Management Tools.tbx\CalculateField" export="">CalculateField "Contributing Tributary" unitNum [unitNum] VB #</Process>
<Process Date="20210505" Name="" Time="104953" ToolSource="c:\program files (x86)\arcgis\desktop10.6\ArcToolbox\Toolboxes\Data Management Tools.tbx\CalculateField" export="">CalculateField "Contributing Tributary" unitNum [Unit_Num_1] VB #</Process>
<Process Date="20210813" Name="" Time="070931" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\Toolboxes\Data Management Tools.tbx\CopyMultiple" export="">CopyMultiple "C:\Users\doolittlea\Desktop\LKO_BHS_DataPackage_20210806\forAndrewD\LKO_BHS_20210812\geodata_UPDATE_20210812\LKO_BHS_dataPackage_UPDATE_20210812.gdb\Contributing_Tributaries FeatureClass" C:\Users\doolittlea\Desktop\LKO_BHS_DataPackage_20210806\BHS_LKO_dataPackage.gdb Contributing_Tributaries "Contributing_Tributaries FeatureClass Contributing_Tributaries #"</Process>
<Process Date="20210813" Name="" Time="071829" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\Rename" export="">Rename C:\Users\doolittlea\Desktop\LKO_BHS_DataPackage_20210806\BHS_LKO_dataPackage.gdb\Contributing_Tributaries C:\Users\doolittlea\Desktop\LKO_BHS_DataPackage_20210806\BHS_LKO_dataPackage.gdb\BHS_LKO_Tributaries_Contributing FeatureClass</Process>
<Process Date="20210813" Name="" Time="074549" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\UpdateSchema" export="">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/2.7.0'&gt;&lt;WorkspaceConnectionString&gt;DATABASE=C:\Users\doolittlea\Desktop\LKO_BHS_DataPackage_20210806\BHS_LKO_dataPackage.gdb&lt;/WorkspaceConnectionString&gt;&lt;WorkspaceFactory&gt;FileGDB&lt;/WorkspaceFactory&gt;&lt;Dataset&gt;BHS_LKO_Tributaries_Contributing&lt;/Dataset&gt;&lt;DatasetType&gt;esriDTFeatureClass&lt;/DatasetType&gt;&lt;/CIMStandardDataConnection&gt;" &lt;operationSequence&gt;&lt;workflow&gt;&lt;AlterField&gt;&lt;field_name&gt;OUTFLOW_ID_1&lt;/field_name&gt;&lt;new_field_name&gt;OUTFLOW_ID&lt;/new_field_name&gt;&lt;field_is_nullable&gt;True&lt;/field_is_nullable&gt;&lt;clear_field_alias&gt;False&lt;/clear_field_alias&gt;&lt;/AlterField&gt;&lt;/workflow&gt;&lt;workflow&gt;&lt;AlterField&gt;&lt;field_name&gt;STREAM_ID_1&lt;/field_name&gt;&lt;new_field_name&gt;STREAM_ID&lt;/new_field_name&gt;&lt;field_is_nullable&gt;True&lt;/field_is_nullable&gt;&lt;clear_field_alias&gt;False&lt;/clear_field_alias&gt;&lt;/AlterField&gt;&lt;/workflow&gt;&lt;workflow&gt;&lt;AlterField&gt;&lt;field_name&gt;Unit_Name_1&lt;/field_name&gt;&lt;new_field_name&gt;Unit_Name&lt;/new_field_name&gt;&lt;field_type&gt;TEXT&lt;/field_type&gt;&lt;field_is_nullable&gt;True&lt;/field_is_nullable&gt;&lt;clear_field_alias&gt;False&lt;/clear_field_alias&gt;&lt;/AlterField&gt;&lt;/workflow&gt;&lt;/operationSequence&gt;</Process>
<Process Date="20210816" Name="" Time="145459" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\UpdateSchema" export="">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/2.7.0'&gt;&lt;WorkspaceConnectionString&gt;DATABASE=D:\GreatLakes_Job\Data_Catalogue\Lake_Ontario\BHS_LKO_dataPackage.gdb\BHS_LKO_dataPackage.gdb&lt;/WorkspaceConnectionString&gt;&lt;WorkspaceFactory&gt;FileGDB&lt;/WorkspaceFactory&gt;&lt;Dataset&gt;BHS_LKO_Tributaries_Contributing&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;Unit_Num&lt;/field_name&gt;&lt;field_type&gt;LONG&lt;/field_type&gt;&lt;field_alias&gt;Unit_Num&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="20210816" Name="" Time="150833" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CalculateField" export="">CalculateField BHS_LKO_Tributaries_Contributing Unit_Num reclass(!Unit_Name!) "Python 3" "def reclass(name):
if name == "Niagara River CDN":
return 1
elif name == "Niagara River to Hamilton Harbour":
return 2
elif name == "Hamilton Harbour":
return 3
elif name == "Burlington to Mississaugua":
return 4
elif name == "Toronto and Region":
return 5
elif name == "Pickering to Bowmanville":
return 6
elif name == "Bowmanville to Cobourg":
return 7
elif name == "Cobourg Presqu'ile":
return 8
elif name == "Presqu'ile":
return 9
elif name == "Murray Canal to Point Petre":
return 10
elif name == "Point Petre to Bay of Quinte":
return 11
elif name == "Bay of Quinte South":
return 12
elif name == "Bay of Quinte North":
return 13
elif name == "Kingston to Gananoque":
return 14
elif name == "Gananoque to Brockville":
return 15
elif name == "Brockville to Cornwall":
return 16
elif name == "St.Lawrence":
return 17" Text</Process>
<Process Date="20210816" Name="" Time="150854" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CalculateField" export="">CalculateField BHS_LKO_Tributaries_Contributing Unit_Num reclass(!Unit_Name!) "Python 3" "def reclass(name):
if name == "Niagara River CDN":
return 1
elif name == "Niagara River to Hamilton Harbour":
return 2
elif name == "Hamilton Harbour":
return 3
elif name == "Burlington to Mississaugua":
return 4
elif name == "Toronto and Region":
return 5
elif name == "Pickering to Bowmanville":
return 6
elif name == "Bowmanville to Cobourg":
return 7
elif name == "Cobourg Presqu'ile":
return 8
elif name == "Presqu'ile":
return 9
elif name == "Murray Canal to Point Petre":
return 10
elif name == "Point Petre to Bay of Quinte":
return 11
elif name == "Bay of Quinte South":
return 12
elif name == "Bay of Quinte North":
return 13
elif name == "Kingston to Gananoque":
return 14
elif name == "Gananoque to Brockville":
return 15
elif name == "Brockville to Cornwall":
return 16
elif name == "St.Lawrence":
return 17" Text</Process>
<Process Date="20210816" Name="" Time="151321" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CalculateField" export="">CalculateField BHS_LKO_Tributaries_Contributing Unit_Num 17 "Python 3" # Text</Process>
<Process Date="20210816" Name="" Time="151402" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CalculateField" export="">CalculateField BHS_LKO_Tributaries_Contributing Unit_Num 4 "Python 3" # Text</Process>
<Process Date="20210816" Name="" Time="151441" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CalculateField" export="">CalculateField BHS_LKO_Tributaries_Contributing Unit_Num 8 "Python 3" # Text</Process>
<Process Date="20210817" Name="" Time="090153" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Conversion Tools.tbx\FeatureClassToFeatureClass" export="">FeatureClassToFeatureClass BHS_LKO_Tributaries_Contributing D:\GreatLakes_Job\Data_Catalogue\Lake_Ontario\LKO_Data_Catalogue_EN.gdb BHS_LKO_Tributaries_Contributing # "OUTFLOW_ID "OUTFLOW_ID" true true false 8 Double 0 0,First,#,BHS_LKO_Tributaries_Contributing,OUTFLOW_ID,-1,-1;STREAM_ID "STREAM_ID" true true false 8 Double 0 0,First,#,BHS_LKO_Tributaries_Contributing,STREAM_ID,-1,-1;Unit_Name "Unit_Name" true true false 8000 Text 0 0,First,#,BHS_LKO_Tributaries_Contributing,Unit_Name,0,8000;Shape_Length "Shape_Length" false true true 8 Double 0 0,First,#,BHS_LKO_Tributaries_Contributing,Shape_Length,-1,-1;Unit_Num "Unit_Num" true true false 4 Long 0 0,First,#,BHS_LKO_Tributaries_Contributing,Unit_Num,-1,-1" #</Process>
<Process Date="20210818" Name="" Time="141920" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\Sort" export="">Sort BHS_LKO_Tributaries_Contributing D:\GreatLakes_Job\Data_Catalogue\Lake_Ontario\LKO_Data_Catalogue_EN.gdb\BHS_LKO_Tributaries_Contributing_sort "Unit_Num ASCENDING" "Upper right"</Process>
<Process Date="20210818" Name="" Time="142019" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\Rename" export="">Rename D:\GreatLakes_Job\Data_Catalogue\Lake_Ontario\LKO_Data_Catalogue_EN.gdb\BHS_LKO_Tributaries_Contributing_sort D:\GreatLakes_Job\Data_Catalogue\Lake_Ontario\LKO_Data_Catalogue_EN.gdb\BHS_LKO_Tributaries_Contributing FeatureClass</Process>
<Process Date="20210819" Name="" Time="110806" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\Toolboxes\Data Management Tools.tbx\Rename" export="">Rename "D:\GIS Projects\BHS_LKO_DataCatalogue\LKO_Data_Catalogue_EN.gdb\BHS_LKO_Tributaries_Contributing" "D:\GIS Projects\BHS_LKO_DataCatalogue\LKO_Data_Catalogue_EN.gdb\BHS_LKO_Tributaries_Contributing_old" FeatureClass</Process>
<Process Date="20210819" Name="" Time="111422" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Conversion Tools.tbx\FeatureClassToFeatureClass" export="">FeatureClassToFeatureClass BHS_LKO_Tributaries_Contributing_old "D:\GIS Projects\BHS_LKO_DataCatalogue\BHS_LKO_DC\BHS_LKO_DC.gdb" BHS_LKO_Tributaries_Contributing # "Unit_Num "Unit_Num" true true false 4 Long 0 0,First,#,BHS_LKO_Tributaries_Contributing_old,Unit_Num,-1,-1;Unit_Name "Unit_Name" true true false 8000 Text 0 0,First,#,BHS_LKO_Tributaries_Contributing_old,Unit_Name,0,8000;OUTFLOW_ID "OUTFLOW_ID" true true false 8 Double 0 0,First,#,BHS_LKO_Tributaries_Contributing_old,OUTFLOW_ID,-1,-1;STREAM_ID "STREAM_ID" true true false 8 Double 0 0,First,#,BHS_LKO_Tributaries_Contributing_old,STREAM_ID,-1,-1;Shape_Length "Shape_Length" false true true 8 Double 0 0,First,#,BHS_LKO_Tributaries_Contributing_old,Shape_Length,-1,-1" #</Process>
<Process Date="20210819" Name="" Time="111837" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CopyFeatures" export="">CopyFeatures BHS_LKO_Tributaries_Contributing "D:\GIS Projects\BHS_LKO_DataCatalogue\LKO_Data_Catalogue_EN.gdb\BHS_LKO_Tributaries_Contributing" # # # #</Process>
<Process Date="20210819" Name="" Time="154648" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\Toolboxes\Data Management Tools.tbx\UpdateSchema" export="">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/2.7.0'&gt;&lt;WorkspaceConnectionString&gt;DATABASE=D:\GreatLakes_Job\Data_Catalogue\Lake_Ontario\LKO_Data_Catalogue_EN.gdb&lt;/WorkspaceConnectionString&gt;&lt;WorkspaceFactory&gt;FileGDB&lt;/WorkspaceFactory&gt;&lt;Dataset&gt;BHS_LKO_Tributaries_Contributing&lt;/Dataset&gt;&lt;DatasetType&gt;esriDTFeatureClass&lt;/DatasetType&gt;&lt;/CIMStandardDataConnection&gt;" &lt;operationSequence&gt;&lt;workflow&gt;&lt;AlterField&gt;&lt;field_name&gt;Unit_Num&lt;/field_name&gt;&lt;field_alias&gt;Unit_Number&lt;/field_alias&gt;&lt;field_is_nullable&gt;True&lt;/field_is_nullable&gt;&lt;clear_field_alias&gt;False&lt;/clear_field_alias&gt;&lt;/AlterField&gt;&lt;/workflow&gt;&lt;workflow&gt;&lt;AlterField&gt;&lt;field_name&gt;OUTFLOW_ID&lt;/field_name&gt;&lt;field_alias&gt;Outflow_ID&lt;/field_alias&gt;&lt;field_is_nullable&gt;True&lt;/field_is_nullable&gt;&lt;clear_field_alias&gt;False&lt;/clear_field_alias&gt;&lt;/AlterField&gt;&lt;/workflow&gt;&lt;workflow&gt;&lt;AlterField&gt;&lt;field_name&gt;STREAM_ID&lt;/field_name&gt;&lt;field_alias&gt;Stream_ID&lt;/field_alias&gt;&lt;field_is_nullable&gt;True&lt;/field_is_nullable&gt;&lt;clear_field_alias&gt;False&lt;/clear_field_alias&gt;&lt;/AlterField&gt;&lt;/workflow&gt;&lt;/operationSequence&gt;</Process>
<Process Date="20220126" Name="" Time="164519" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\Rename" export="">Rename "Q:\GW\EC1341GreatLakes_GrandsLacs\HabitatSpecies\JKlahr_working\Data Catalogues\2021_Lake_Ontario_Canadian_Baseline_Habitat_Survey_Data_Catalogue.gdb\BHS_LKO_Tributaries_Contributing" "Q:\GW\EC1341GreatLakes_GrandsLacs\HabitatSpecies\JKlahr_working\Data Catalogues\2021_Lake_Ontario_Canadian_Baseline_Habitat_Survey_Data_Catalogue.gdb\Ontario2021_Tributaries_Contributing" FeatureClass</Process>
<Process Date="20220203" Time="130747" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Conversion Tools.tbx\FeatureClassToFeatureClass">FeatureClassToFeatureClass Ontario2021_Tributaries_Contributing "Q:\GW\EC1341GreatLakes_GrandsLacs\HabitatSpecies\JKlahr_working\Data Catalogues\Data Catalogues.gdb\Ontario_EN" Ontario2021_Tributaries_Contributing # "Unit_Num "Unit_Number" true true false 4 Long 0 0,First,#,Ontario2021_Tributaries_Contributing,Unit_Num,-1,-1;Unit_Name "Unit_Name" true true false 8000 Text 0 0,First,#,Ontario2021_Tributaries_Contributing,Unit_Name,0,8000;OUTFLOW_ID "Outflow_ID" true true false 8 Double 0 0,First,#,Ontario2021_Tributaries_Contributing,OUTFLOW_ID,-1,-1;STREAM_ID "Stream_ID" true true false 8 Double 0 0,First,#,Ontario2021_Tributaries_Contributing,STREAM_ID,-1,-1;Shape_Length "Shape_Length" false true true 8 Double 0 0,First,#,Ontario2021_Tributaries_Contributing,Shape_Length,-1,-1" #</Process>
<Process Date="20220203" Time="140700" 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/2.8.0'&gt;&lt;FeatureDataset&gt;Ontario_EN&lt;/FeatureDataset&gt;&lt;WorkspaceConnectionString&gt;DATABASE=Q:\GW\EC1341GreatLakes_GrandsLacs\HabitatSpecies\JKlahr_working\Data Catalogues\Data Catalogues.gdb&lt;/WorkspaceConnectionString&gt;&lt;WorkspaceFactory&gt;FileGDB&lt;/WorkspaceFactory&gt;&lt;Dataset&gt;Ontario2021_Tributaries_Contributing&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;Survey_Year&lt;/field_name&gt;&lt;field_type&gt;LONG&lt;/field_type&gt;&lt;field_alias&gt;Survey_Year&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;workflow&gt;&lt;AddField&gt;&lt;field_name&gt;Unit_Number&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;Unit_Number&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="20220203" Time="140728" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CalculateField">CalculateField Ontario2021_Tributaries_Contributing Survey_Year 2021 "Python 3" # Text NO_ENFORCE_DOMAINS</Process>
<Process Date="20220203" Time="140813" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CalculateField">CalculateField Ontario2021_Tributaries_Contributing Unit_Number x(!Unit_Num!) "Python 3" "def x(y):
return "LKO-" + str(y)" Text NO_ENFORCE_DOMAINS</Process>
<Process Date="20220203" Time="140842" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\DeleteField">DeleteField Ontario2021_Tributaries_Contributing Unit_Num</Process>
<Process Date="20220204" Time="140121" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Conversion Tools.tbx\FeatureClassToFeatureClass">FeatureClassToFeatureClass Ontario2021_Tributaries_Contributing "Q:\GW\EC1341GreatLakes_GrandsLacs\HabitatSpecies\JKlahr_working\Data Catalogues\2021_Lake_Ontario_Canadian_Baseline_Habitat_Survey.gdb" Ontario2021_Tributaries_Contributing # "Survey_Year "Survey_Year" true true false 4 Long 0 0,First,#,Ontario2021_Tributaries_Contributing,Survey_Year,-1,-1;Unit_Number "Unit_Number" true true false 255 Text 0 0,First,#,Ontario2021_Tributaries_Contributing,Unit_Number,0,255;Unit_Name "Unit_Name" true true false 8000 Text 0 0,First,#,Ontario2021_Tributaries_Contributing,Unit_Name,0,8000;OUTFLOW_ID "Outflow_ID" true true false 8 Double 0 0,First,#,Ontario2021_Tributaries_Contributing,OUTFLOW_ID,-1,-1;STREAM_ID "Stream_ID" true true false 8 Double 0 0,First,#,Ontario2021_Tributaries_Contributing,STREAM_ID,-1,-1;Shape_Length "Shape_Length_m" false true true 8 Double 0 0,First,#,Ontario2021_Tributaries_Contributing,Shape_Length,-1,-1" #</Process>
<Process Date="20220204" Time="170010" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Conversion Tools.tbx\FeatureClassToFeatureClass">FeatureClassToFeatureClass Ontario2021_Tributaries_Contributing "Q:\GW\EC1341GreatLakes_GrandsLacs\HabitatSpecies\JKlahr_working\Data Catalogues\Data Catalogues.gdb\Ontario_EN" Ontario2021_Tributaries_Contributing # "Survey_Year "Survey_Year" true true false 4 Long 0 0,First,#,Q:\GW\EC1341GreatLakes_GrandsLacs\HabitatSpecies\JKlahr_working\Data Catalogues\2021_Lake_Ontario_Canadian_Baseline_Habitat_Survey.gdb\Ontario2021_Tributaries_Contributing,Survey_Year,-1,-1;Unit_Number "Unit_Number" true true false 255 Text 0 0,First,#,Q:\GW\EC1341GreatLakes_GrandsLacs\HabitatSpecies\JKlahr_working\Data Catalogues\2021_Lake_Ontario_Canadian_Baseline_Habitat_Survey.gdb\Ontario2021_Tributaries_Contributing,Unit_Number,0,255;Unit_Name "Unit_Name" true true false 8000 Text 0 0,First,#,Q:\GW\EC1341GreatLakes_GrandsLacs\HabitatSpecies\JKlahr_working\Data Catalogues\2021_Lake_Ontario_Canadian_Baseline_Habitat_Survey.gdb\Ontario2021_Tributaries_Contributing,Unit_Name,0,8000;OUTFLOW_ID "Outflow_ID" true true false 8 Double 0 0,First,#,Q:\GW\EC1341GreatLakes_GrandsLacs\HabitatSpecies\JKlahr_working\Data Catalogues\2021_Lake_Ontario_Canadian_Baseline_Habitat_Survey.gdb\Ontario2021_Tributaries_Contributing,OUTFLOW_ID,-1,-1;STREAM_ID "Stream_ID" true true false 8 Double 0 0,First,#,Q:\GW\EC1341GreatLakes_GrandsLacs\HabitatSpecies\JKlahr_working\Data Catalogues\2021_Lake_Ontario_Canadian_Baseline_Habitat_Survey.gdb\Ontario2021_Tributaries_Contributing,STREAM_ID,-1,-1" #</Process>
<Process Date="20220204" Time="170516" 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/2.8.0'&gt;&lt;FeatureDataset&gt;Ontario_EN&lt;/FeatureDataset&gt;&lt;WorkspaceConnectionString&gt;DATABASE=Q:\GW\EC1341GreatLakes_GrandsLacs\HabitatSpecies\JKlahr_working\Data Catalogues\Data Catalogues.gdb&lt;/WorkspaceConnectionString&gt;&lt;WorkspaceFactory&gt;FileGDB&lt;/WorkspaceFactory&gt;&lt;Dataset&gt;Ontario2021_Tributaries_Contributing&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;Length_m&lt;/field_name&gt;&lt;field_type&gt;DOUBLE&lt;/field_type&gt;&lt;field_alias&gt;Length_m&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="20220204" Time="170631" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CalculateGeometryAttributes">CalculateGeometryAttributes Ontario2021_Tributaries_Contributing "Length_m LENGTH" Meters # PROJCS["NAD_1983_UTM_Zone_17N",GEOGCS["GCS_North_American_1983",DATUM["D_North_American_1983",SPHEROID["GRS_1980",6378137.0,298.257222101]],PRIMEM["Greenwich",0.0],UNIT["Degree",0.0174532925199433]],PROJECTION["Transverse_Mercator"],PARAMETER["False_Easting",500000.0],PARAMETER["False_Northing",0.0],PARAMETER["Central_Meridian",-81.0],PARAMETER["Scale_Factor",0.9996],PARAMETER["Latitude_Of_Origin",0.0],UNIT["Meter",1.0]] "Same as input"</Process>
<Process Date="20220215" Time="112516" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Conversion Tools.tbx\FeatureClassToFeatureClass">FeatureClassToFeatureClass Ontario2021_Tributaries_Contributing "Q:\GW\EC1341GreatLakes_GrandsLacs\HabitatSpecies\JKlahr_working\Data Catalogues\2021_Lake_Ontario_Canadian_Baseline_Habitat_Survey.gdb" Ontario2021_Tributaries_Contributing # "Survey_Year "Survey_Year" true true false 4 Long 0 0,First,#,Ontario2021_Tributaries_Contributing,Survey_Year,-1,-1;Unit_Number "Unit_Number" true true false 255 Text 0 0,First,#,Ontario2021_Tributaries_Contributing,Unit_Number,0,255;Unit_Name "Unit_Name" true true false 8000 Text 0 0,First,#,Ontario2021_Tributaries_Contributing,Unit_Name,0,8000;OUTFLOW_ID "Outflow_ID" true true false 8 Double 0 0,First,#,Ontario2021_Tributaries_Contributing,OUTFLOW_ID,-1,-1;STREAM_ID "Stream_ID" true true false 8 Double 0 0,First,#,Ontario2021_Tributaries_Contributing,STREAM_ID,-1,-1;Shape_Length "Shape_Length" false true true 8 Double 0 0,First,#,Ontario2021_Tributaries_Contributing,Shape_Length,-1,-1" #</Process>
<Process Date="20260416" Time="130906" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Analysis Tools.tbx\Clip">Clip Ontario2021_Tributaries_Contributing Mask "C:\Users\semiha.caglayan\OneDrive - Toronto and Region Conservation Authority\2025_COA\WebMap\WLO_map_layers.gdb\Canadian_Baseline_Habitat_Survey\Ontario2021_Tributaries_Contributing" #</Process>
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<resAltTitle>Lake Ontario Baseline Habitat Study Tributaries Contributing to Coastal Units</resAltTitle>
<collTitle>Lake Ontario Baseline Habitat Study Tributaries Contributing to Coastal Units</collTitle>
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<idPurp>The Ontario Integrated Hydrology dataset (OIH) from the Ministry of Natural Resources and Forestry (MNRF) was used to facilitate stream network analysis within each of the Lake Ontario Coastal Units. This feature class assisted with assessing tributary length, stream order and sinuosity. It was also used to create outflows (for network analysis), and to assess barriers on the stream network.</idPurp>
<idAbs>&lt;div style='text-align:Left;'&gt;&lt;div&gt;&lt;div&gt;&lt;p style='margin:0 0 0 0;'&gt;&lt;span&gt;Stream network analysis was done to select all tributaries that are connected to each coastal unit, using the outflows originating in Lake Ontario and travelling upstream to the full extent of the watershed. This process was also done for watercourses with outflows into the larger bays (e.g. Hamilton Harbour).&lt;/span&gt;&lt;/p&gt;&lt;/div&gt;&lt;/div&gt;&lt;/div&gt;</idAbs>
<idCredit>Fisheries and Oceans Canada (DFO)
Environment and Climate Change Canada (ECCC) - Coastal Units
Ministry of Natural Resources and Forestry (MNRF)
Ontario Integrated Hydrology
https://www.arcgis.com/sharing/rest/content/items/dc6da6816e2446279210668718af91c9/info/metadata/metadata.xml?format=default&amp;output=html
Ontario Hydro Network
https://www.arcgis.com/sharing/rest/content/items/22bab3c9f37a4dd0845eb89e7b247a9f/info/metadata/metadata.xml?format=default&amp;output=html</idCredit>
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<suppInfo>This dataset is standardized to a minimum of 1:10 000. In certain locations and areas the scale may be less than or greater than 1:10 000 depending on the availability and accuracy of the underlying data.</suppInfo>
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<useLimit>&lt;div style='text-align:Left;'&gt;&lt;div&gt;&lt;div&gt;&lt;p&gt;&lt;span&gt;Although DFO strives to provide reliable information and services, we cannot guarantee the services and information will always be available or up-to-date. Please contact info@dfo-mpo.gc.ca if any concerns become apparent.&lt;/span&gt;&lt;/p&gt;&lt;/div&gt;&lt;/div&gt;&lt;/div&gt;, &lt;div style='text-align:Left;'&gt;&lt;div&gt;&lt;div&gt;&lt;p&gt;&lt;span&gt;The information presented in this layer may not be current and/or may be incorrect or missing information.&lt;/span&gt;&lt;/p&gt;&lt;p&gt;&lt;span&gt;Under no circumstances will the Government of Canada be liable to any person or business entity for any direct, indirect, special, incidental, consequential, or other damages based on any use of this dataset including, without limitation, any lost profits, business interruption, or loss of programs or information.&lt;/span&gt;&lt;/p&gt;&lt;/div&gt;&lt;/div&gt;&lt;/div&gt;</useLimit>
<useLimit>&lt;DIV STYLE="text-align:Left;"&gt;&lt;DIV&gt;&lt;DIV&gt;&lt;P&gt;&lt;SPAN&gt;Although DFO strives to provide reliable information and services, we cannot guarantee the services and information will always be available or up-to-date. Please contact info@dfo-mpo.gc.ca if any concerns become apparent.&lt;/SPAN&gt;&lt;/P&gt;&lt;/DIV&gt;&lt;/DIV&gt;&lt;/DIV&gt;, &lt;DIV STYLE="text-align:Left;"&gt;&lt;DIV&gt;&lt;DIV&gt;&lt;P&gt;&lt;SPAN&gt;The information presented in this layer may not be current and/or may be incorrect or missing information.&lt;/SPAN&gt;&lt;/P&gt;&lt;P&gt;&lt;SPAN&gt;Under no circumstances will the Government of Canada be liable to any person or business entity for any direct, indirect, special, incidental, consequential, or other damages based on any use of this dataset including, without limitation, any lost profits, business interruption, or loss of programs or information.&lt;/SPAN&gt;&lt;/P&gt;&lt;/DIV&gt;&lt;/DIV&gt;&lt;/DIV&gt;</useLimit>
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<measDesc>All tributaries included in this dataset are complete as of July 2021. Data updates and new additions will be incorporated with the dataset according to the maintenance schedule.</measDesc>
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<attrdefs>DFO</attrdefs>
</attr>
<attr>
<attrlabl Sync="TRUE">Unit_Name</attrlabl>
<attalias Sync="TRUE">Unit_Name</attalias>
<attrtype Sync="TRUE">String</attrtype>
<attwidth Sync="TRUE">8000</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
<attrdef>Coastal Unit Name</attrdef>
<attrdefs>ECCC</attrdefs>
</attr>
<attr>
<attrlabl Sync="TRUE">Shape_Length</attrlabl>
<attalias Sync="TRUE">Shape_Length</attalias>
<attrtype Sync="TRUE">Double</attrtype>
<attwidth Sync="TRUE">8</attwidth>
<atprecis Sync="TRUE">0</atprecis>
<attscale Sync="TRUE">0</attscale>
<attrdef Sync="TRUE">Length of feature in internal units.</attrdef>
<attrdefs Sync="TRUE">Esri</attrdefs>
<attrdomv>
<udom Sync="TRUE">Positive real numbers that are automatically generated.</udom>
</attrdomv>
</attr>
</detailed>
</eainfo>
<spdoinfo>
<ptvctinf>
<esriterm Name="Ontario2021_Tributaries_Contributing">
<efeatyp Sync="TRUE">Simple</efeatyp>
<efeageom Sync="TRUE" code="3"/>
<esritopo Sync="TRUE">FALSE</esritopo>
<efeacnt Sync="TRUE">0</efeacnt>
<spindex Sync="TRUE">TRUE</spindex>
<linrefer Sync="TRUE">FALSE</linrefer>
</esriterm>
</ptvctinf>
</spdoinfo>
<dataSetFn>
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