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NTIS 바로가기Journal of Korea Water Resources Association = 한국수자원학회논문집, v.55 no.8, 2022년, pp.565 - 575
성연정 (경북대학교 미래과학기술융합학과) , 박기두 (경북대학교 재난대응전략연구소) , 정영훈 (경북대학교 미래과학기술융합학과)
Recently, in the field of water resource engineering, interest in predicting time series water levels and flow rates using deep learning technology that has rapidly developed along with the Fourth Industrial Revolution is increasing. In addition, although water-level and flow-rate prediction have be...
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