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Volume 45 Issue S2
Jan.  2025
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Deng Zhiguang, Li Zhengxi, He Liang, Wu Qian, Zhu Jialiang, Zhu Biwei, Xu Tao, Wang Hailin. Research on Sensor Fault Diagnosis of Nuclear Power Plant Based on Improved CWT-CNN[J]. Nuclear Power Engineering, 2024, 45(S2): 156-162. doi: 10.13832/j.jnpe.2024.S2.0156
Citation: Deng Zhiguang, Li Zhengxi, He Liang, Wu Qian, Zhu Jialiang, Zhu Biwei, Xu Tao, Wang Hailin. Research on Sensor Fault Diagnosis of Nuclear Power Plant Based on Improved CWT-CNN[J]. Nuclear Power Engineering, 2024, 45(S2): 156-162. doi: 10.13832/j.jnpe.2024.S2.0156

Research on Sensor Fault Diagnosis of Nuclear Power Plant Based on Improved CWT-CNN

doi: 10.13832/j.jnpe.2024.S2.0156
  • Received Date: 2024-06-20
  • Rev Recd Date: 2024-08-13
  • Publish Date: 2025-01-06
  • The consequences of sensor faults in nuclear power plants are serious, and the inherent complexity of primary circuit system and equipment in nuclear power plants brings difficulties to sensor fault diagnosis based on accurate mathematical models. In this paper, an intelligent sensor fault diagnosis method for nuclear power plant based on deep learning algorithm and time-frequency analysis is proposed, which transforms the signal recognition problem into image recognition problem. Firstly, the continuous wavelet transform (CWT) is used to process the time series signals of seven common health states of typical sensors in nuclear power plants to generate a time-frequency diagram that captures the characteristics of fault signals. Then, the convolutional neural network (CNN) model improved by channel attention mechanism (CA) is trained with pre-processed and labeled data sets, and the subtle image features of the time-frequency diagram are extracted. Based on these features, sensor faults are identified and isolated. This method does not need to model and design thresholds, and it has strong robustness and an accuracy rate of more than 97%. By comparing the diagnostic effects of typical deep learning networks such as long short-term memory network (LSTM) and one-dimensional convolutional neural network (1D-CNN), the effectiveness and superiority of the improved CWT-CNN are verified.

     

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