Bearing Fault Diagnosis Based on Graph Formulation and Graph Convolutional Network

Authors

  • Xin Wang Research and Development Center of Smart Information and Communications Technologies, Shanghai Advanced Research Institute, Chinese Academy of Sciences, China
  • Wenjin Zhou Research and Development Center of Smart Information and Communications Technologies, Shanghai Advanced Research Institute, Chinese Academy of Sciences, China
  • Xiaodong Li Key Laboratory of Noise and Vibration Research, Institute of Acoustics, Chinese Academy of Sciences, China

DOI:

https://doi.org/10.37965/jdmd.2023.468

Keywords:

bearing fault diagnosis, deep learning, graph convolutional network

Abstract

Bearing fault diagnosis stands as a critical component in the maintenance of rotating machinery. Many prevalent deep learning techniques are tailored to Euclidean datasets such as audio, image, and video. However, these methods falter when confronting non-Euclidean datasets, notably graph representations. In response, here we introduce an innovative approach harnessing the Graph Convolutional Network (GCN) to analyze graph data derived from vibration signals related to bearing faults. This enhances the precision and reliability of fault diagnosis. Our methodology initiates by deriving a periodogram from the unprocessed vibration signals. Subsequently, this periodogram is mapped into a graph format, upon which the GCN is engaged for classification purposes. We substantiate the efficacy of our approach through rigorous experimental assessments conducted on a collection of ten bearing sets. Within these experiments, an accelerometer chronicles vibration signals across varying load conditions. We probe into the diagnostic accuracy rates across diverse loads and Signal-to-Noise Ratios (SNRs). Furthermore, a comparative evaluation of our method against several established algorithms delineated in this study is undertaken. Empirical observations confirm that our GCN-based strategy registers an elevated diagnostic accuracy quotient.

 

Conflict of Interest Statement

The authors declare no conflicts of interest.

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Published

2023-12-08

How to Cite

Wang, X., Zhou, W., & Li, X. (2023). Bearing Fault Diagnosis Based on Graph Formulation and Graph Convolutional Network. Journal of Dynamics, Monitoring and Diagnostics, 2(4), 252–261. https://doi.org/10.37965/jdmd.2023.468

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Section

Regular Articles