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NTIS 바로가기환경영향평가 = Journal of environmental impact assessment, v.31 no.4, 2022년, pp.214 - 225
강혜원 (서울대학교 농업생명과학대학 생태조경.지역시스템공학부) , 박상진 (서울대학교 환경대학원 협동과정 조경학 및 대학원 융합전공 스마트시티 글로벌 융합) , 이동근 (서울대학교 농업생명과학대학 조경.지역시스템공학부)
This study emphasized the soil of environmental impact assessment to devise measures to minimize the negative impact of project implementation on the environment. As a series of efforts for impact assessment procedures, a national inventory-based database was established for urban development projec...
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