Measurement + Control (May 2024)

A Siamese CNN-BiLSTM-based method for unbalance few-shot fault diagnosis of rolling bearings

  • Xiyang Liu,
  • Guo Chen,
  • Hao Wang,
  • Xunkai Wei

DOI
https://doi.org/10.1177/00202940231212146
Journal volume & issue
Vol. 57

Abstract

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Small and imbalanced fault samples have a profound impact on the diagnostic performance of a model in the process of locating and quantifying the rolling bearing damage of aeroengines in practice. Therefore, a Siamese Convolutional Neural Network-Bidirectional Long Short-Term Memory (CNN-BiLSTM) model was proposed in this paper. Random selection and cross combination methods were used to augment and balance sample sizes at first. Then, two weight-sharing CNN-BiLSTM models were used for adaptive extraction and distance measurement of weak fault features. Finally, the fault classification was performed based on feature distance. Model performance was verified using simulated fault test data of rolling bearings. The results showed that the Siamese CNN-BiLSTM model could achieve an accuracy of up to 96.0% for quantitative diagnosis and 98.0% for location diagnosis. This model was also capable of solving the imbalanced classification of samples and made it possible to transfer between different rotating speeds and working conditions.