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NTIS 바로가기Ecology and resilient infrastructure, v.9 no.1, 2022년, pp.24 - 35
이은정 (청주대학교 환경공학과) , 금호준 (국립재난안전연구원 안전연구실)
For water quality management, it is necessary to continuously improve the forecasting by analyzing the past water quality, and a Data-driven model is emerging as an alternative. Because the Data-driven model is built based on a wide range of data, it is essential to apply the correlation analysis me...
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