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<metadata xml:lang="en"><Esri><CreaDate>20260702</CreaDate><CreaTime>16563700</CreaTime><ArcGISFormat>1.0</ArcGISFormat><SyncOnce>TRUE</SyncOnce><scaleRange><minScale>50000000</minScale><maxScale>50000</maxScale></scaleRange><ArcGISProfile>ItemDescription</ArcGISProfile></Esri><dataIdInfo><idCitation><resTitle>REGIND_Meff2015_Dyna_LAEA</resTitle></idCitation><searchKeys><keyword>REGIND</keyword><keyword>landscape fragmentation</keyword><keyword>effective mesh size</keyword><keyword>meff</keyword><keyword>cutting-out procedure</keyword><keyword>EEA</keyword><keyword>2015</keyword></searchKeys><idPurp>Normalised effective mesh size (meff) representing landscape fragmentation across EEA38 plus the United Kingdom in 2015 at 1 km resolution, calculated using the cutting-out procedure. Values range from 0 to 1, where lower values indicate higher landscape fragmentation and lower connectivity, while higher values indicate greater landscape connectivity.</idPurp><idAbs>&lt;DIV STYLE="text-align:Left;"&gt;&lt;DIV&gt;&lt;DIV STYLE="font-size:12pt"&gt;&lt;P&gt;&lt;SPAN&gt;This raster dataset represents landscape fragmentation across EEA38 plus the United Kingdom in 201&lt;/SPAN&gt;&lt;SPAN&gt;5&lt;/SPAN&gt;&lt;SPAN&gt; using normalised effective mesh size (meff) at 1 km resolution.&lt;/SPAN&gt;&lt;/P&gt;&lt;P&gt;&lt;SPAN&gt;The indicator was calculated using the cutting-out procedure within the EEA 1 km reference grid. The fragmentation geometry was derived from two principal input datasets: transportation infrastructure, including selected road classes and railways, from the &lt;/SPAN&gt;&lt;SPAN&gt;commercial &lt;/SPAN&gt;&lt;SPAN&gt;TomTom MultiNet vector dataset provided by Eurostat; and built-up surfaces derived from the harmonised 100 m Imperviousness Density (IMD) dataset produced within the Copernicus Land Monitoring Service. An imperviousness threshold of 30% was applied to identify built-up areas, while roads were buffered according to their functional class.&lt;/SPAN&gt;&lt;/P&gt;&lt;P&gt;&lt;SPAN&gt;The normalised meff value expresses the probability that two randomly selected points within a reporting unit belong to the same unfragmented landscape patch. Values range from 0 to 1, where values close to 0 indicate very high landscape fragmentation and low connectivity, while values close to 1 indicate a largely unfragmented and highly connected landscape.&lt;/SPAN&gt;&lt;/P&gt;&lt;/DIV&gt;&lt;/DIV&gt;&lt;/DIV&gt;</idAbs><idCredit>European Environment Agency (EEA) and European Topic Centre on Data Integration and Digitalisation (ETC DI). Produced by GISAT with financial support from the European Commission’s Directorate-General for Regional and Urban Policy (DG REGIO).</idCredit><resConst><Consts><useLimit>&lt;DIV STYLE="text-align:Left;"&gt;&lt;DIV&gt;&lt;DIV STYLE="font-size:12pt"&gt;&lt;P&gt;&lt;SPAN&gt;The dataset is intended for European, national and regional assessment of landscape fragmentation. It is not suitable for detailed local or site-level analysis.&lt;/SPAN&gt;&lt;/P&gt;&lt;/DIV&gt;&lt;/DIV&gt;&lt;/DIV&gt;</useLimit></Consts></resConst></dataIdInfo><mdHrLv><ScopeCd value="005"></ScopeCd></mdHrLv><Binary><Thumbnail><Data EsriPropertyType="PictureX">/9j/4AAQSkZJRgABAQEAYABgAAD/2wBDAAMCAgMCAgMDAwMEAwMEBQgFBQQEBQoHBwYIDAoMDAsK
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