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NTIS 바로가기환경영향평가 = Journal of environmental impact assessment, v.30 no.3, 2021년, pp.155 - 163
박민규 ((주)현대이앤씨)
The number of trees to be removed trees (ART) in the environmental impact assessment is an environmental indicator used in various parts such as greenhouse gas emissions and waste of forest trees calculation. Until now, the ART has depended on the forest tree density of the vegetation survey, and th...
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