• NUCLEAR TECHNIQUES
  • Vol. 45, Issue 12, 120602 (2022)
Qinmai HOU, Wei ZHU*, Xiang ZOU, Shixian LIU, and Yannong WU
Author Affiliations
  • Nuclear and Radiation Safety Center, Beijing 102445, China
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    DOI: 10.11889/j.0253-3219.2022.hjs.45.120602 Cite this Article
    Qinmai HOU, Wei ZHU, Xiang ZOU, Shixian LIU, Yannong WU. Analysis and prediction of nuclear power plant operation events based on ARIMA-LSTM model[J]. NUCLEAR TECHNIQUES, 2022, 45(12): 120602 Copy Citation Text show less
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    Qinmai HOU, Wei ZHU, Xiang ZOU, Shixian LIU, Yannong WU. Analysis and prediction of nuclear power plant operation events based on ARIMA-LSTM model[J]. NUCLEAR TECHNIQUES, 2022, 45(12): 120602
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