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NTIS 바로가기Journal of Korea Water Resources Association = 한국수자원학회논문집, v.54 no.12 suppl., 2021년, pp.1167 - 1181
김상훈 (한국수자원공사 보현산댐지사) , 박준형 (행정안전부 국가민방위재난안전교육원) , 김병현 (경북대학교 토목공학과)
In relation to the algae bloom, four types of blue-green algae that emit toxic substances are designated and managed as harmful Cyanobacteria, and prediction information using a physical model is being also published. However, as algae are living organisms, it is difficult to predict according to ph...
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