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NTIS 바로가기上下水道學會誌 = Journal of Korean Society of Water and Wastewater, v.34 no.6, 2020년, pp.481 - 493
표종철 (울산과학기술원 도시환경공학부) , 박상훈 (울산과학기술원 도시환경공학부) , 조경화 (울산과학기술원 도시환경공학부) , 백상수 (울산과학기술원 도시환경공학부)
Deep learning models, which imitate the function of human brain, have drawn attention from many engineering fields (mechanical, agricultural, and computer engineering etc). The major advantages of deep learning in engineering fields can be summarized by objects detection, classification, and time-se...
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