Machines (Sep 2024)

Current Status of Research on Fault Diagnosis Using Machine Learning for Gear Transmission Systems

  • Xuezhong Fu,
  • Yuanxin Fang,
  • Yingqiang Xu,
  • Haijun Xu,
  • Guo Ma,
  • Nanjiang Peng

DOI
https://doi.org/10.3390/machines12100679
Journal volume & issue
Vol. 12, no. 10
p. 679

Abstract

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Gear transmission system fault diagnosis is crucial for the reliability and safety of industrial machinery. The combination of mathematical signal processing methods with deep learning technology has become a research hotspot in fault diagnosis. Firstly, the development and status of gear transmission system fault diagnosis are outlined in detail. Secondly, the relevant research results on gear transmission system fault diagnosis are summarized from the perspectives of time-domain, frequency domain, and time-frequency-domain analysis. Thirdly, the relevant research progress in shallow learning and deep learning in the field of fault diagnosis is explained. Finally, future research directions for gear transmission system fault diagnosis are summarized and anticipated in terms of the sparsity of signal analysis results, separation of adjacent feature components, extraction of weak signals, identification of composite faults, multi-factor combinations in fault diagnosis, and multi-source data fusion technology.

Keywords