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<CreaDate>20210325</CreaDate>
<CreaTime>16001000</CreaTime>
<ArcGISFormat>1.0</ArcGISFormat>
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<linkage Sync="TRUE">file://\\serval\s\Common workspace\ETCULS\DATA_DELIVERABLES\AP2020\AP20_1822_Fragmentation\SDI_Pending\WMS\2018classified\2018classified.tif</linkage>
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<copy date="20210325" dest="\\serval\s\Common workspace\ETCULS\DATA_DELIVERABLES\AP2020\AP20_1822_Fragmentation\SDI_Pending\WMS\2018classified\2018classified.tif" source="S:\Common workspace\ETCULS\DATA_DELIVERABLES\AP2021\1192_IDP_GEA\Imperviousness\WMS\2018classified.tif" time="16001000"/>
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<keyword>Land cover</keyword>
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<idPurp>This dataset is the new version of the Effective Mesh Density (seff) 2021 dataset with improved input data, for the year 2018. This new dataset uses the Copernicus Imperviousness and the TomTom TeleAtlas datasets as fragmenting geometries. The Effective Mesh Density (seff) is a measure of the degree to which movement between different parts of the landscape is interrupted by a Fragmentation Geometry (FG). FGs are defined as the presence of impervious surfaces and traffic infrastructure, including medium sized roads. The more FGs fragment the landscape, the higher the effective mesh density hence the higher the fragmentation. The geographic coverage of the dataset is EEA39.</idPurp>
<idCredit/>
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<idCitation>
<resTitle>Fragmentation_2018_mesh_density_v2021</resTitle>
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