AI Article Synopsis

  • Intelligent fault diagnosis is improving with deep learning and the introduction of graph neural networks (GNNs), which utilize interdependencies between sensor measurements.
  • However, GNNs face limitations such as fixed receptive fields for multiscale feature extraction, an over-smoothing problem as model depth increases, and difficulty in interpreting extracted features.
  • The proposed solution, a filter-informed spectral graph wavelet network (SGWN), effectively addresses these issues by using spectral graph wavelet convolution to simultaneously extract different feature types, enhancing diagnostic accuracy and interpretability in comparison to existing methods.

Article Abstract

Intelligent fault diagnosis has been increasingly improved with the evolution of deep learning (DL) approaches. Recently, the emerging graph neural networks (GNNs) have also been introduced in the field of fault diagnosis with the goal to make better use of the inductive bias of the interdependencies between the different sensor measurements. However, there are some limitations with these GNN-based fault diagnosis methods. First, they lack the ability to realize multiscale feature extraction due to the fixed receptive field of GNNs. Second, they eventually encounter the over-smoothing problem with increase of model depth. Finally, the extracted features of these GNNs are hard to understand due to the black-box nature of GNNs. To address these issues, a filter-informed spectral graph wavelet network (SGWN) is proposed in this article. In SGWN, the spectral graph wavelet convolutional (SGWConv) layer is established upon the spectral graph wavelet transform, which can decompose a graph signal into scaling function coefficients and spectral graph wavelet coefficients. With the help of SGWConv, SGWN is able to prevent the over-smoothing problem caused by long-range low-pass filtering, by simultaneously extracting low-pass and band-pass features. Furthermore, to speed up the computation of SGWN, the scaling kernel function and graph wavelet kernel function in SGWConv are approximated by the Chebyshev polynomials. The effectiveness of the proposed SGWN is evaluated on the collected solenoid valve dataset and aero-engine intershaft bearing dataset. The experimental results show that SGWN can outperform the comparative methods in both diagnostic accuracy and the ability to prevent over-smoothing. Moreover, its extracted features are also interpretable with domain knowledge.

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Source
http://dx.doi.org/10.1109/TCYB.2023.3256080DOI Listing

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