<?xml version="1.0" encoding="UTF-8" standalone="no"?>
<metadata xml:lang="en">
<Esri>
<CreaDate>20241029</CreaDate>
<CreaTime>20381000</CreaTime>
<ArcGISFormat>1.0</ArcGISFormat>
<SyncOnce>TRUE</SyncOnce>
<DataProperties>
<lineage>
<Process Date="20241029" Time="203810" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\CreateFeatureclass">CreateFeatureclass C:\Users\lewinkler\AppData\Local\Temp\2\ArcGISProTemp18564\16449941-d77b-4d6a-b7fc-4cbff3f9067c\AZREGISSDE.bkr.mbakercorp.com.sde\Beaver_County.DBO.Water Floodplains Polygon # No No "PROJCS["NAD_1983_StatePlane_Pennsylvania_South_FIPS_3702_Feet",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["Lambert_Conformal_Conic"],PARAMETER["False_Easting",1968500.0],PARAMETER["False_Northing",0.0],PARAMETER["Central_Meridian",-77.75],PARAMETER["Standard_Parallel_1",39.93333333333333],PARAMETER["Standard_Parallel_2",40.96666666666667],PARAMETER["Latitude_Of_Origin",39.33333333333334],UNIT["Foot_US",0.3048006096012192]];-119214200 -96198500 3048.00609601219;-100000 10000;-100000 10000;3.28083333333333E-03;0.001;0.001;IsHighPrecision" # # # # Floodplains</Process>
<Process Date="20241029" Time="203837" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\UpdateSchema">UpdateSchema C:\Users\lewinkler\AppData\Local\Temp\2\ArcGISProTemp18564\16449941-d77b-4d6a-b7fc-4cbff3f9067c\AZREGISSDE.bkr.mbakercorp.com.sde\Beaver_County.DBO.Water\Floodplains "&lt;operationSequence&gt;&lt;workflow&gt;&lt;AddField&gt;&lt;field_name&gt;AREA&lt;/field_name&gt;&lt;field_type&gt;DOUBLE&lt;/field_type&gt;&lt;field_alias&gt;Area (sq ft)&lt;/field_alias&gt;&lt;field_is_nullable&gt;FALSE&lt;/field_is_nullable&gt;&lt;field_length&gt;19&lt;/field_length&gt;&lt;/AddField&gt;&lt;/workflow&gt;&lt;workflow&gt;&lt;AddField&gt;&lt;field_name&gt;PERIMETER&lt;/field_name&gt;&lt;field_type&gt;DOUBLE&lt;/field_type&gt;&lt;field_alias&gt;Perimeter (ft)&lt;/field_alias&gt;&lt;field_is_nullable&gt;FALSE&lt;/field_is_nullable&gt;&lt;field_length&gt;19&lt;/field_length&gt;&lt;/AddField&gt;&lt;/workflow&gt;&lt;workflow&gt;&lt;AddField&gt;&lt;field_name&gt;FLOODPLAIN_ID_1&lt;/field_name&gt;&lt;field_type&gt;Long&lt;/field_type&gt;&lt;field_alias&gt;Floodplain ID 1&lt;/field_alias&gt;&lt;field_is_nullable&gt;FALSE&lt;/field_is_nullable&gt;&lt;field_length&gt;10&lt;/field_length&gt;&lt;/AddField&gt;&lt;/workflow&gt;&lt;workflow&gt;&lt;AddField&gt;&lt;field_name&gt;FLOODPLAIN_ID_2&lt;/field_name&gt;&lt;field_type&gt;Long&lt;/field_type&gt;&lt;field_alias&gt;Floodplain ID 2&lt;/field_alias&gt;&lt;field_is_nullable&gt;FALSE&lt;/field_is_nullable&gt;&lt;field_length&gt;10&lt;/field_length&gt;&lt;/AddField&gt;&lt;/workflow&gt;&lt;workflow&gt;&lt;AddField&gt;&lt;field_name&gt;MAPTYPE&lt;/field_name&gt;&lt;field_type&gt;Short&lt;/field_type&gt;&lt;field_alias&gt;Map Type&lt;/field_alias&gt;&lt;field_is_nullable&gt;FALSE&lt;/field_is_nullable&gt;&lt;field_length&gt;2&lt;/field_length&gt;&lt;/AddField&gt;&lt;/workflow&gt;&lt;workflow&gt;&lt;AddField&gt;&lt;field_name&gt;FLOODPLAIN&lt;/field_name&gt;&lt;field_type&gt;Short&lt;/field_type&gt;&lt;field_alias&gt;Floodplain?&lt;/field_alias&gt;&lt;field_is_nullable&gt;FALSE&lt;/field_is_nullable&gt;&lt;field_length&gt;2&lt;/field_length&gt;&lt;/AddField&gt;&lt;/workflow&gt;&lt;/operationSequence&gt;"</Process>
<Process Date="20241029" Time="203850" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\UpdateSchema">UpdateSchema C:\Users\lewinkler\AppData\Local\Temp\2\ArcGISProTemp18564\16449941-d77b-4d6a-b7fc-4cbff3f9067c\AZREGISSDE.bkr.mbakercorp.com.sde\Beaver_County.DBO.Water\Floodplains &lt;operationSequence&gt;&lt;workflow&gt;&lt;AlterField&gt;&lt;field_name&gt;OBJECTID&lt;/field_name&gt;&lt;field_alias&gt;OBJECTID&lt;/field_alias&gt;&lt;/AlterField&gt;&lt;/workflow&gt;&lt;workflow&gt;&lt;AlterField&gt;&lt;field_name&gt;SHAPE&lt;/field_name&gt;&lt;field_alias&gt;SHAPE&lt;/field_alias&gt;&lt;/AlterField&gt;&lt;/workflow&gt;&lt;/operationSequence&gt;</Process>
<Process Date="20241029" Time="203942" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\Append">Append 'G:\Projects\BeaverCounty_GISSupport\InfoAtlas 2024\Data\BeaverCo_Floodplain.shp' C:\Users\lewinkler\AppData\Local\Temp\2\ArcGISProTemp18564\16449941-d77b-4d6a-b7fc-4cbff3f9067c\AZREGISSDE.bkr.mbakercorp.com.sde\Beaver_County.DBO.Water\Beaver_County.DBO.Floodplains "Use the field map to reconcile field differences" "AREA "Area (sq ft)" true false false 19 Double 0 0,First,#,G:\Projects\BeaverCounty_GISSupport\InfoAtlas 2024\Data\BeaverCo_Floodplain.shp,AREA,-1,-1;PERIMETER "Perimeter (ft)" true false false 19 Double 0 0,First,#,G:\Projects\BeaverCounty_GISSupport\InfoAtlas 2024\Data\BeaverCo_Floodplain.shp,PERIMETER,-1,-1;FLOODPLAIN_ID_1 "Floodplain ID 1" true false false 10 Long 0 0,First,#,G:\Projects\BeaverCounty_GISSupport\InfoAtlas 2024\Data\BeaverCo_Floodplain.shp,FLOODPLA_1,-1,-1;FLOODPLAIN_ID_2 "Floodplain ID 2" true false false 10 Long 0 0,First,#,G:\Projects\BeaverCounty_GISSupport\InfoAtlas 2024\Data\BeaverCo_Floodplain.shp,FLOODPLA_2,-1,-1;MAPTYPE "Map Type" true false false 2 Short 0 0,First,#,G:\Projects\BeaverCounty_GISSupport\InfoAtlas 2024\Data\BeaverCo_Floodplain.shp,MAPTYPE,-1,-1;FLOODPLAIN "Floodplain?" true false false 2 Short 0 0,First,#,G:\Projects\BeaverCounty_GISSupport\InfoAtlas 2024\Data\BeaverCo_Floodplain.shp,FLOODPLAIN,-1,-1" # #</Process>
<Process Date="20241029" Time="204227" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\DeleteRows">DeleteRows Floodplains</Process>
<Process Date="20241029" Time="204334" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\toolboxes\Data Management Tools.tbx\Append">Append 'G:\Projects\BeaverCounty_GISSupport\InfoAtlas 2024\Data\BeaverCo_Floodplain.shp' C:\Users\lewinkler\AppData\Local\Temp\2\ArcGISProTemp18564\16449941-d77b-4d6a-b7fc-4cbff3f9067c\AZREGISSDE.bkr.mbakercorp.com.sde\Beaver_County.DBO.Water\Beaver_County.DBO.Floodplains "Use the field map to reconcile field differences" "AREA "Area (sq ft)" true false false 19 Double 0 0,First,#,G:\Projects\BeaverCounty_GISSupport\InfoAtlas 2024\Data\BeaverCo_Floodplain.shp,AREA,-1,-1;PERIMETER "Perimeter (ft)" true false false 19 Double 0 0,First,#,G:\Projects\BeaverCounty_GISSupport\InfoAtlas 2024\Data\BeaverCo_Floodplain.shp,PERIMETER,-1,-1;FLOODPLAIN_ID_1 "Floodplain ID 1" true false false 10 Long 0 0,First,#,G:\Projects\BeaverCounty_GISSupport\InfoAtlas 2024\Data\BeaverCo_Floodplain.shp,FLOODPLAIN,-1,-1;FLOODPLAIN_ID_2 "Floodplain ID 2" true false false 10 Long 0 0,First,#,G:\Projects\BeaverCounty_GISSupport\InfoAtlas 2024\Data\BeaverCo_Floodplain.shp,FLOODPLA_1,-1,-1;MAPTYPE "Map Type" true false false 2 Short 0 0,First,#,G:\Projects\BeaverCounty_GISSupport\InfoAtlas 2024\Data\BeaverCo_Floodplain.shp,MAPTYPE,-1,-1;FLOODPLAIN "Floodplain?" true false false 2 Short 0 0,First,#,G:\Projects\BeaverCounty_GISSupport\InfoAtlas 2024\Data\BeaverCo_Floodplain.shp,FLOODPLA_2,-1,-1" # #</Process>
<Process Date="20241029" Time="204422" 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/3.0.0'&gt;&lt;FeatureDataset&gt;Beaver_County.DBO.Water&lt;/FeatureDataset&gt;&lt;WorkspaceConnectionString&gt;ENCRYPTED_PASSWORD_UTF8=00022e686c5763526555655648347061593447456d325943446762336454596638746d2f6f4764492f556d6b6159733d2a00;ENCRYPTED_PASSWORD=00022e68774830466338464a6654523232716e59706133764f513d3d2a00;SERVER=AZREGISSDE.bkr.mbakercorp.com;INSTANCE=sde:sqlserver:AZREGISSDE.bkr.mbakercorp.com;DBCLIENT=sqlserver;DB_CONNECTION_PROPERTIES=AZREGISSDE.bkr.mbakercorp.com;DATABASE=Beaver_County;USER=beaver_county;VERSION=dbo.DEFAULT;AUTHENTICATION_MODE=DBMS&lt;/WorkspaceConnectionString&gt;&lt;WorkspaceFactory&gt;SDE&lt;/WorkspaceFactory&gt;&lt;Dataset&gt;Beaver_County.DBO.Floodplains&lt;/Dataset&gt;&lt;DatasetType&gt;esriDTFeatureClass&lt;/DatasetType&gt;&lt;/CIMFeatureDatasetDataConnection&gt;" "&lt;operationSequence&gt;&lt;workflow&gt;&lt;AlterField&gt;&lt;field_name&gt;Beaver_County.DBO.Floodplains.AREA&lt;/field_name&gt;&lt;new_field_name&gt;AREA&lt;/new_field_name&gt;&lt;field_alias&gt;Area (sq ft)&lt;/field_alias&gt;&lt;field_is_nullable&gt;False&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>
</lineage>
</DataProperties>
</Esri>
<dataIdInfo>
<idAbs/>
<searchKeys>
<keyword>floodplains</keyword>
</searchKeys>
<idPurp>Floodplains</idPurp>
<idCredit/>
<resConst>
<Consts>
<useLimit/>
</Consts>
</resConst>
<idCitation>
<resTitle>Floodplains</resTitle>
</idCitation>
</dataIdInfo>
<Binary>
<Thumbnail>
<Data EsriPropertyType="PictureX">iVBORw0KGgoAAAANSUhEUgAAASwAAADICAYAAABS39xVAAAAAXNSR0IB2cksfwAAAAlwSFlzAAAO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</Data>
</Thumbnail>
</Binary>
</metadata>
