<?xml version="1.0" encoding="UTF-8" standalone="no"?>
<metadata xml:lang="nl">
  <Esri>
    <CreaDate>20250601</CreaDate>
    <CreaTime>18494600</CreaTime>
    <ArcGISFormat>1.0</ArcGISFormat>
    <SyncOnce>TRUE</SyncOnce>
    <DataProperties>
      <lineage>
        <Process Date="20250601" Time="184946" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\Toolboxes\Data Management Tools.tbx\CreateFeatureclass">CreateFeatureclass "P:\Blizdata\Duurzaamheid\Klimaatadaptatie\Zuidplas\Stresstesten 2025\Lokale stresstesten Zuidplas 2025\Lokale stresstesten Zuidplas 2025.gdb" KansenKnelpuntenDroogte Polygon # No Yes "PROJCS["RD_New",GEOGCS["GCS_Amersfoort",DATUM["D_Amersfoort",SPHEROID["Bessel_1841",6377397.155,299.1528128]],PRIMEM["Greenwich",0.0],UNIT["Degree",0.0174532925199433]],PROJECTION["Double_Stereographic"],PARAMETER["False_Easting",155000.0],PARAMETER["False_Northing",463000.0],PARAMETER["Central_Meridian",5.38763888888889],PARAMETER["Scale_Factor",0.9999079],PARAMETER["Latitude_Of_Origin",52.15616055555555],UNIT["Meter",1.0]];-30515500 -30279500 10000;-100000 10000;-100000 10000;0.001;0.001;0.001;IsHighPrecision" # # # # "Kans en Knelpunten Droogte"</Process>
        <Process Date="20250601" Time="184947" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\Toolboxes\Data Management Tools.tbx\UpdateSchema">UpdateSchema "P:\Blizdata\Duurzaamheid\Klimaatadaptatie\Zuidplas\Stresstesten 2025\Lokale stresstesten Zuidplas 2025\Lokale stresstesten Zuidplas 2025.gdb\KansenKnelpuntenDroogte" &lt;operationSequence&gt;&lt;workflow&gt;&lt;AddField&gt;&lt;field_name&gt;Kans_knel&lt;/field_name&gt;&lt;field_type&gt;TEXT&lt;/field_type&gt;&lt;field_is_nullable&gt;TRUE&lt;/field_is_nullable&gt;&lt;field_length&gt;255&lt;/field_length&gt;&lt;/AddField&gt;&lt;/workflow&gt;&lt;workflow&gt;&lt;AddField&gt;&lt;field_name&gt;Globale_locatie&lt;/field_name&gt;&lt;field_type&gt;TEXT&lt;/field_type&gt;&lt;field_is_nullable&gt;TRUE&lt;/field_is_nullable&gt;&lt;field_length&gt;255&lt;/field_length&gt;&lt;/AddField&gt;&lt;/workflow&gt;&lt;workflow&gt;&lt;AddField&gt;&lt;field_name&gt;Opmerking&lt;/field_name&gt;&lt;field_type&gt;TEXT&lt;/field_type&gt;&lt;field_is_nullable&gt;TRUE&lt;/field_is_nullable&gt;&lt;field_length&gt;255&lt;/field_length&gt;&lt;/AddField&gt;&lt;/workflow&gt;&lt;/operationSequence&gt;</Process>
        <Process Date="20250601" Time="184948" ToolSource="c:\program files\arcgis\pro\Resources\ArcToolbox\Toolboxes\Data Management Tools.tbx\UpdateSchema">UpdateSchema "P:\Blizdata\Duurzaamheid\Klimaatadaptatie\Zuidplas\Stresstesten 2025\Lokale stresstesten Zuidplas 2025\Lokale stresstesten Zuidplas 2025.gdb\KansenKnelpuntenDroogte" &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>
      </lineage>
    </DataProperties>
  </Esri>
  <dataIdInfo>
    <idAbs/>
    <searchKeys>
      <keyword>Stresstesten</keyword>
      <keyword>Droogte</keyword>
      <keyword>Zuidplas</keyword>
      <keyword>Kansen</keyword>
      <keyword>Knelpunten</keyword>
      <keyword>Klimaatadaptatie</keyword>
    </searchKeys>
    <idPurp>Kaart met de kansen en knelpunten voor het thema droogte zoals gedefinieerd tijdens de gemeentelijke stresstesten van Zuidplas op 21 mei 2025.</idPurp>
    <idCredit/>
    <resConst>
      <Consts>
        <useLimit/>
      </Consts>
    </resConst>
    <idCitation>
      <resTitle>Kans en Knelpunten Droogte Zuidplas stresstest</resTitle>
    </idCitation>
  </dataIdInfo>
  <Binary>
    <Thumbnail>
      <Data EsriPropertyType="PictureX">/9j/4AAQSkZJRgABAQEAAQABAAD/2wBDAAgGBgcGBQgHBwcJCQgKDBQNDAsLDBkSEw8UHRofHh0a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</Data>
    </Thumbnail>
  </Binary>
</metadata>
