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<CreaDate>20160429</CreaDate>
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<idAbs>Il layer, realizzato nell'ambito del progetto europeo TRUSTEE, contiene una classificazione del gradiente urbano-rurale-naturale dell'area di studio. L’identificazione e la classificazione del gradiente dell’area di studio è avvenuta mediante un’analisi multivariata della densità degli elementi paesistici caratterizzanti l’uso del suolo. A tal fine, attraverso una metodologia innovativa, sono stati integrati dati derivanti da fonti informative diversificate (ecografico catastale, viabilità regionale, dati agricoli PAC, altri dati agricoli di dettaglio, dati da telerilevamento satellitare). Per maggiori informazioni consultare la pagina http://dsa3.unipg.it/ricerca-2/progetti-di-ricerca/progetto-trustee/progetto-trustee-i-risultati-ottenuti-i/</idAbs>
<searchKeys>
<keyword>Gradiente urbano-rurale-naturale</keyword>
</searchKeys>
<idPurp>Gradiente urbano-rurale-naturale</idPurp>
<idCredit>Marco Vizzari, Sara Antognelli</idCredit>
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<idCitation>
<resTitle>trustee_1_gradiente_URN</resTitle>
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