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NTIS 바로가기한국해안·해양공학회논문집 = Journal of Korean Society of Coastal and Ocean Engineers, v.34 no.4, 2022년, pp.109 - 118
신용탁 (인하대학교 해양과학과) , 김동훈 (인하대학교 인공지능융합센터) , 김현재 (인하대학교 해양과학과) , 임채욱 (인하대학교 해양과학과) , 우승범 (인하대학교 해양과학과)
The data of the missing section among the vertex surface sea temperature observation data was imputed using the Bidirectional Recurrent Neural Network(BiRNN). Among artificial intelligence techniques, Recurrent Neural Networks (RNNs), which are commonly used for time series data, only estimate in th...
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