• Assessment of Groundwater Contamination Vulnerability in Miryang City, Korea using Advanced DRASTIC and fuzzy Techniques on the GIS Platform
  • Chung, Sang Yong;Elzain, Hussam Eldin;Senapathi, Venkatramanan;Park, Kye-Hun;Kwon, Hae-Woo;Yoo, In Kol;Oh, Hae Rim;
  • Department of Earth & Environmental Sciences, Pukyong National University;Division of Earth Environmental System Science, Pukyong National University;Department for Management of Science and Technology Development, Ton Duc Thang University;Department of Earth & Environmental Sciences, Pukyong National University;Exploration Technology Team, Korea Mineral Resources Corporation;Exploration Technology Team, Korea Mineral Resources Corporation;Department of Earth & Environmental Sciences, Pukyong National University;
  • 개선된 DRASTIC 기법과 퍼지기법을 이용한 밀양지역 지하수오염 취약성 평가
  • 정상용;후삼 엘딘 엘자인;벤카트라마난 세나파티;박계헌;권해우;유인걸;오해림;
  • 부경대학교 지구환경과학과;부경대학교 지구환경시스템과학부;베트남 통덕탕대학교 과학기술개발관리학과;부경대학교 지구환경과학과;한국광물자원공사 탐사기술팀;한국광물자원공사 탐사기술팀;부경대학교 지구환경과학과;
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