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<idPurp>Karteringen syftar till att ge ökad kunskap om hur fragmenterade ostörda områden (Naturens egna ljud) verkligen är, ur ett djurs perspektiv. Undersökningen är ett resultat i form av ett GIS som visar hur stora respektive små dessa ostörda områden är. Karteringen visar även hur avskärmade olika områden är från varandra samt graden av fragmentering på nationell nivå (upplösning 25x25m).
Skiktet (resultatet) rekommenderas bland annat att användas i arbetet med uppföljning av miljömålens preciseringar som avser buller och fragmentering av livsmiljöer. Inom miljöövervakning, det vill säga följa förändringar av ostörda områden över tid. Men även som planeringsunderlag i den fysiska planeringen, för planering av grön infrastruktur, som underlag inom ärendehantering, för att identifiera potentiella lokaler för rödlistade arter och störningskänsliga arter. Underlaget kan även användas som underlag för kartläggning av lämpliga friluftsområden, Metod i GIS finns publicerad i rapporten "Ostörda områden - Var finns de?" http://www.lansstyrelsen.se/jonkoping/SiteCollectionDocuments/Sv/publikationer/2015/2015-01.pdf
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<idAbs>&lt;DIV STYLE="text-align:Left;"&gt;&lt;DIV&gt;&lt;DIV&gt;&lt;P&gt;&lt;SPAN&gt;Reultatet har sin grund i GIS-analyser, litteraturstudier och diskussioner med sakkunniga. Tysta och ostörda områden blir allt mer ovanliga i landskapet. I stora delar av södra sverige är orörda och ostörda områden en bristvara. Användbarheten handlar också om attt framtida buller- och störningsanalyser kan styras till rätt plats med hjälp av de områden som identifierats som ostörda områden. I kombination med andra underlag, till exempel landskapsstrategier och översiktsplaner, kan analysen emellertid fungera som ett underlag för var befintligt buller bör minskas.&lt;/SPAN&gt;&lt;/P&gt;&lt;/DIV&gt;&lt;/DIV&gt;&lt;/DIV&gt;</idAbs>
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