A reliable intelligent diagnostic assistant for nuclear power plants using explainable artificial intelligence of GRU-AE, LightGBM and SHAP |
Park, Ji Hun
(Department of Nuclear Engineering, Chosun University)
Jo, Hye Seon (Department of Nuclear Engineering, Chosun University) Lee, Sang Hyun (Department of Nuclear Engineering, Chosun University) Oh, Sang Won (Department of Nuclear Engineering, Chosun University) Na, Man Gyun (Department of Nuclear Engineering, Chosun University) |
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