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    <Esri>
        
        <CreaDate>20210825</CreaDate>
        
        <CreaTime>14153300</CreaTime>
        
        <ArcGISFormat>1.0</ArcGISFormat>
        
        <SyncOnce>TRUE</SyncOnce>
        
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    <dataIdInfo>
        
        <idAbs>The output of the analysis would give us a solid indication of where the most desirable locations for new EV stations are, assuring fair spatial and social accessibility of EV stations throughout the city.  

Input data
•	EV Charging points – continuously updated layer showing the location of GCC Managed Electric Vehicle Charging stations.
•	Population density – based on 2011 Census data 
•	SIMD 2020 - The Scottish Government's standard approach to identify areas of multiple deprivation in Scotland 
•	Housing type – data derived from GCC managed street gazetteer layer 
</idAbs>
        
        <searchKeys>
            
            <keyword>EV</keyword>
            
            <keyword>charging</keyword>
            
            <keyword>Glasgow</keyword>
            
        </searchKeys>
        
        <idPurp>This service holds the hexagonal polygon layers which are the output of EV charging points analysis, which evaluated the existing EV points against indicators such as SIMD, population density and distance to closest EV station. </idPurp>
        
        <idCredit/>
        
        <resConst>
            
            <Consts>
                
                <useLimit/>
                
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