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A weighted nonconvex sparse representation with high-pass filter function for fault diagnosis of rolling bearing

Published: 03 May 2023 Publication History

Abstract

Vibration signal analysis is one of the most effective and convenient method for fault diagnosis in rolling bearing. A challenging problem is how to extract the fault features from the noisy signal accurately. In this paper, a novel sparse representation algorithm, a weighted nonconvex sparse representation with high-pass filter function (WNCSR-HPF) is proposed for bearing fault feature extraction. WNCSR-HPF is developed based on a weighted nonconvex sparse regularization term, which can remove the noise interference and promote sparsity. Moreover, an adaptive setup method of regularization parameter is proposed for improving the applicability of WNCSR-HPF. The majorization-minimization (MM)-based algorithm is developed for solving the objective optimization problem in this paper. A simulation signal and a bearing vibration signal are used to illustrate the effectiveness of WNCSR-HPF for fault feature extraction. The experimental results show that WNCSR-HPF has the good performance on the fault feature extraction.

References

[1]
A.K.S. Jardine, D. Lin, D. Banjevic, A review on machinery diagnostics and prognostics implementing condition-based maintenance, Mech. Syst. Signal Process. 20 (2006) p. 1483–1510.
[2]
J. Wright, Y. Ma, J. Mairal, G. Sapiro, T.S. Huang, S. Yan, Sparse representation for computer vision and pattern recognition, Proceedings of the IEEE. 98 (2010) p. 1031-1044.
[3]
M. Elad, M. Aharon, Image denoising via learned dictionaries and sparse representation, IEEE Trans. Image Process. 15 (2006) p. 3736–3745.
[4]
G. He, K. Ding and H. Lin, Fault feature extraction of rolling element bearings using sparse representation, J. Sound Vib. 366 (2016) p. 514-527.
[5]
C. Zou, K.I. Kou, Y. Wang, Y.Y. Tang, Quaternion block sparse representation for signal recovery and classification, Signal Processing. 179 (2020) p. 107849.
[6]
G. Cai, X. Chen, Z. He, Sparsity-enabled signal decomposition using tunable Q-factor wavelet transform for fault feature extraction of gearbox, Mech. Syst. Signal Process. 41 (2013) p. 34-53.
[7]
S.J. Kim, K. Koh, M. Lustig, S. Boyd, D. Gorinevsky, An interior-point method for large-scale 1-regularized least squares, IEEE J. Sel. Top Signal Process. 4 (2007) p. 606–617.
[8]
P.Y. Chen, I.W. Selesnick, Translation-invariant shrinkage/thresholding of group sparse signals, Signal Processing. 94 (2014) p. 476-489
[9]
E.J. Candes, M.B. Wakin, S.P. Boyd, Enhancing sparsity by reweighted L1 minimization, J. Fourier Anal. Appl. 14 (2008), p. 877–905.
[10]
H.K. Lange, Quantile Regression via an MM Algorithm, J. Comput Graph Stat. 9 (2000) p. 60-77.
[11]
I.W. Selesnick, H.L. Graber, D.S. Pfeil, R.L. Barbour, Simultaneous low-pass filtering and total variation denoising, IEEE Trans. Signal Process. 62 (2014) p. 1109–1124
[12]
M. Figueiredo, J.M. Bioucas-Dias, R.K. Nowak, Majorization–Minimization Algorithms for Wavelet-Based Image Restoration, IEEE Trans. Image Processing. 16 (2007) p. 2980-2991.
[13]
Sun Y, Yu J. Fault Detection of Rolling Bearing Using Sparse Representation-Based Adjacent Signal Difference[J]. IEEE Transactions on Instrumentation and Measurement, 2021.
[14]
Qiao, Baijie, Wang, Enhanced Sparse Period-Group Lasso for Bearing Fault Diagnosis[J]. IEEE Transactions on Industrial Electronics, 2019.
[15]
W. Lu, B. Liang, Y. Cheng, D. Meng, J. Yang, T. Zhang, Deep Model Based Domain Adaptation for Fault Diagnosis, IEEE Trans. Ind. Electron. 64 (2017) p. 2296-2305.
[16]
D.L. Donoho, De-noising by soft-thresholding, IEEE Trans. Inf. Theory. 41 (1995) p. 613–627.

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    SSIP '22: Proceedings of the 2022 5th International Conference on Sensors, Signal and Image Processing
    October 2022
    87 pages
    ISBN:9781450397124
    DOI:10.1145/3577148
    Publication rights licensed to ACM. ACM acknowledges that this contribution was authored or co-authored by an employee, contractor or affiliate of a national government. As such, the Government retains a nonexclusive, royalty-free right to publish or reproduce this article, or to allow others to do so, for Government purposes only.

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    Published: 03 May 2023

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    Author Tags

    1. Bearing fault diagnosis
    2. High pass filter function
    3. Sparse representation
    4. Vibration monitoring

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