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<CreaDate>20191215</CreaDate>
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<idAbs>The goal of the Pennsylvania Aquatic Community Classification (ACC) project was to describe patterns in aquatic biodiversity for the purpose of prioritizing conservation activities and informing aquatic resource management. Although assessments and aquatic inventories are numerous and ongoing in Pennsylvania’s waters, little public information for Pennsylvania and the surrounding region is available to natural resource managers, watershed groups, local government officials, conservation planners, and others about biodiversity and watershed quality.</idAbs>
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<keyword>Aquatic Communities</keyword>
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<idPurp>Aquatic Community Classifications</idPurp>
<idCredit>PA DCNR</idCredit>
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<resTitle>Aquatic Community Classifications</resTitle>
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