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NTIS 바로가기上下水道學會誌 = Journal of Korean Society of Water and Wastewater, v.36 no.4, 2022년, pp.239 - 248
박정수 (국립한밭대학교 건설환경공학과)
The prediction of algal bloom is an important field of study in algal bloom management, and chlorophyll-a concentration(Chl-a) is commonly used to represent the status of algal bloom. In, recent years advanced machine learning algorithms are increasingly used for the prediction of algal bloom. In th...
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