City Gas Pipeline Pressure Prediction Model |
Chung, Won Hee
(Department of Computer Engineering, Sejong University)
Park, Giljoo (Metarights Inc.) Gu, Yeong Hyeon (Department of Computer Engineering, Sejong University) Kim, Sunghyun (National Information Society Agency) Yoo, Seong Joon (Department of Computer Engineering, Sejong University) Jo, Young-do (Korea Gas Safety Corporation) |
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