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NTIS 바로가기Journal of Korea Water Resources Association = 한국수자원학회논문집, v.54 no.5, 2021년, pp.301 - 309
신홍준 (한국수력원자력 수력처) , 윤성심 (한국건설기술연구원 국토보전연구본부) , 최재민 (가천대학교 설비소방공학과)
In this study, we tried to improve the performance of the existing U-net-based deep learning rainfall prediction model, which can weaken the meaning of time series order. For this, ConvLSTM2D U-Net structure model considering temporal consistency of data was applied, and we evaluated accuracy of the...
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