Applied Sciences (May 2024)

Intelligent Diagnosis of Compound Faults of Gearboxes Based on Periodical Group Sparse Model

  • Lan Chen,
  • Xiangfeng Zhang,
  • Lizhong Wang,
  • Kaihua Li,
  • Yang Feng

DOI
https://doi.org/10.3390/app14104294
Journal volume & issue
Vol. 14, no. 10
p. 4294

Abstract

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A gearbox compound fault intelligent diagnosis method based on the period group sparse model is proposed for the problem that the fault features are coupled with each other and the fault components are superimposed on each other and difficult to be separated in the gearbox compound fault signal. Firstly, a binary sequence is constructed to embed the fault pulse period as a priori knowledge into the group sparse model to decouple and separate the composite fault signal while maintaining the amplitude and sparsity of the extracted features. Secondly, the wavelet packet energy features of the decoupled signals are extracted to improve the data quality while enhancing the characterization ability of the dictionary in the classification model. Finally, the wavelet packet energy features are imported into the sparse dictionary classification model, and the fault diagnosis is completed by outputting the fault categories using the self-driven characteristics of the data. The results show that the fault identification accuracy using the proposed method is 97%. In addition, the experimental validation under different states and working conditions with different rotational speeds allows the superiority and effectiveness of the algorithm in this paper to be tested and has the feasibility of a practical application in engineering.

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