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NTIS 바로가기Journal of Korea Water Resources Association = 한국수자원학회논문집, v.54 no.8, 2021년, pp.617 - 628
이옥정 (K-water연구원 유역물관리연구소) , 원정은 (부경대학교 지구환경시스템과학부 환경공학전공) , 서지유 (부경대학교 지구환경시스템과학부 환경공학전공) , 김상단 (부경대학교 환경공학과)
Drought is a major natural disaster that causes serious social and economic losses. Local drought forecasts can provide important information for drought preparedness. In this study, we propose a new machine learning model that predicts drought by using historical drought indices and meteorological ...
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