An intelligent hybrid methodology of on-line system-level fault diagnosis for nuclear power plant |
Peng, Min-jun
(Key Subject Laboratory of Nuclear Safety and Simulation Technology, Harbin Engineering University)
Wang, Hang (Key Subject Laboratory of Nuclear Safety and Simulation Technology, Harbin Engineering University) Chen, Shan-shan (Wuhan Second Ship Design and Research Institute) Xia, Geng-lei (Key Subject Laboratory of Nuclear Safety and Simulation Technology, Harbin Engineering University) Liu, Yong-kuo (Key Subject Laboratory of Nuclear Safety and Simulation Technology, Harbin Engineering University) Yang, Xu (Key Subject Laboratory of Nuclear Safety and Simulation Technology, Harbin Engineering University) Ayodeji, Abiodun (Key Subject Laboratory of Nuclear Safety and Simulation Technology, Harbin Engineering University) |
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