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<CreaDate>20240704</CreaDate>
<CreaTime>15281300</CreaTime>
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<resTitle>Høj natur værdi</resTitle>
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<searchKeys>
<keyword>Høj natur værdi</keyword>
<keyword>naturværdi</keyword>
<keyword>biodiversitet</keyword>
<keyword>økosystemer</keyword>
<keyword>Landbrugsstyrelsen</keyword>
<keyword>LBST</keyword>
<keyword>bevarelse</keyword>
<keyword>miljøbeskyttelse</keyword>
<keyword>naturområder</keyword>
<keyword>skove</keyword>
<keyword>søer</keyword>
<keyword>enge</keyword>
<keyword>kystområder</keyword>
<keyword>vegetationstyper</keyword>
<keyword>Kortskab: Grunddata</keyword>
</searchKeys>
<idPurp>Høj natur værdi er et omfattende datasæt, der tilbydes af Landbrugsstyrelsen. Dette datasæt indeholder værdifulde oplysninger om områder med høj naturværdi i Danmark. Med detaljerede geografiske data kan du udforske og analysere disse områder for at forstå og bevare den unikke biodiversitet og økosystemer, der findes i vores land. Dette datasæt er en uvurderlig ressource for forskere, planlæggere og miljøforkæmpere, der ønsker at bevare og beskytte vores naturlige arv.</idPurp>
<idAbs>Høj natur værdi er et omfattende datasæt, der er blevet udviklet og stillet til rådighed af Landbrugsstyrelsen. Dette datasæt indeholder omfattende og detaljerede oplysninger om områder med høj naturværdi i Danmark. Med præcise geografiske data kan du udforske og analysere disse områder for at forstå og bevare den unikke biodiversitet og økosystemer, der findes i vores land.
Datasættet Høj natur værdi giver dig mulighed for at identificere og studere områder, der er af særlig betydning for bevarelse af naturen. Det omfatter oplysninger om forskellige naturområder, herunder skove, søer, enge, kystområder og meget mere. Du kan få adgang til detaljerede oplysninger om vegetationstyper, dyreliv, geologiske træk og andre vigtige aspekter af hvert område.
Dette datasæt er en uvurderlig ressource for forskere, planlæggere, miljøforkæmpere og andre interessenter, der ønsker at bevare og beskytte vores naturlige arv. Ved at bruge disse data kan du identificere områder, der kræver særlig opmærksomhed og beskyttelse, og udvikle effektive bevarelsesstrategier.
&lt;br&gt;Opdateringsfrekvens: Månedligt
,&lt;br&gt;Lagnavn: HNV2021_20210226
,&lt;br&gt;Dataudbyder: Danmarks Miljø Portal (DMP, GDL)
&lt;br&gt;Metadata senest opdateret: 20230918</idAbs>
<idCredit>Danmarks Miljø Portal (DMP, GDL)</idCredit>
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