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NTIS 바로가기韓國ITS學會 論文誌 = The journal of the Korea Institute of Intelligent Transportation Systems, v.22 no.5, 2023년, pp.1 - 18
이요셉 (아주대학교 교통공학과) , 진형석 ((주) 이젠시스 해외컨설팅팀) , 김예진 (아주대학교 교통공학과) , 박성호 (아주대학교 혁신융합단) , 윤일수 (아주대학교 교통시스템공학과)
With the recent developments in big data and deep learning, a variety of traffic information is collected widely and used for traffic operations. In particular, long short-term memory (LSTM) is used in the field of traffic information prediction with time series characteristics. Since trends, season...
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