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수질인자 머신러닝 분석을 통한 저수지 유해 남조류 발생예측  

김상훈 (한국수자원공사 보현산댐지사)
박준형 (행정안전부 국가민방위재난안전교육원 기획협력과)
김병현 (경북대학교 건설환경에너지공학부)
Publication Information
Water for future / v.55, no.11, 2022 , pp. 62-72 More about this Journal
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Times Cited By KSCI : 2  (Citation Analysis)
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