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NTIS 바로가기上下水道學會誌 = Journal of Korean Society of Water and Wastewater, v.35 no.1, 2021년, pp.83 - 91
박정수 (국립한밭대학교 건설환경공학과)
The increased turbidity in rivers during flood events has various effects on water environmental management, including drinking water supply systems. Thus, prediction of turbid water is essential for water environmental management. Recently, various advanced machine learning algorithms have been inc...
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