Volume 37 Issue 1
Mar.  2023
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GUO Yurong, MAO Jian, ZHAO Man. Prediction method of bearing remaining useful life based on CNN and attention BiLSTM[J]. Journal of Shanghai University of Engineering Science, 2023, 37(1): 96-104. doi: 10.12299/jsues.21-0244
Citation: GUO Yurong, MAO Jian, ZHAO Man. Prediction method of bearing remaining useful life based on CNN and attention BiLSTM[J]. Journal of Shanghai University of Engineering Science, 2023, 37(1): 96-104. doi: 10.12299/jsues.21-0244

Prediction method of bearing remaining useful life based on CNN and attention BiLSTM

doi: 10.12299/jsues.21-0244
  • Received Date: 2021-11-07
    Available Online: 2023-05-13
  • Publish Date: 2023-03-31
  • The remaining useful life (RUL) prediction of rolling bearings is of great significance for the operation and maintenance of rotating machinery. Although the deep learning method represented by convolutional neural network (CNN) can automatically extract features from bearing vibration signals, it can not adaptively select features to improve the attention of the model to important features. In response to the above problems, a bearing RUL prediction method based on CNN and attention bidirectional long short-term memory (BiLSTM) was proposed. Firstly, the spatial features of vibration signals were extracted by CNN, the temporal features were extracted by BiLSTM. Then, the attention mechanism was used to enhance the attention of the model to important features, and the full connection layer was used as the decoder to predict the health indicator (HI). Finally, the weighted average method was used to modify the HI prediction value, and the polynomial fitting curve was used for RUL prediction. The results show that the absolute percentage error of the proposed method is 14.36% lower than that of convolutional long short-term memory (CNN-LSTM) and 21.28% lower than that of traditional self-organizing map network (SOM), which can be effectively used for RUL prediction in multiple fault modes.
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