Diagnosis of compound faults of rolling bearings through adaptive maximum correlated kurtosis deconvolution
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  • 作者:Guiji Tang ; Xiaolong Wang ; Yuling He
  • 关键词:Maximum correlated kurtosis deconvolution ; Cuckoo search algorithm ; Rolling bearing ; Compound fault
  • 刊名:Journal of Mechanical Science and Technology
  • 出版年:2016
  • 出版时间:January 2016
  • 年:2016
  • 卷:30
  • 期:1
  • 页码:43-54
  • 全文大小:8,119 KB
  • 参考文献:[1]W. Y. Liu and J. G. Han, Rolling element bearing fault recognition approach based on fuzzy clustering bispectrum estimation, Shock and Vibration, 20 (2) (2013) 213–225.CrossRef
    [2]P. L. Zhang, B. Li, S. S. Mi, Y. T. Zhang and D. S. Liu, Bearing fault detection using multi-scale fractal dimensions based on morphological covers, Shock and Vibration, 19 (6) (2012) 1373–1383.CrossRef
    [3]H. K. Jiang and C. D. Duan, An adaptive lifting scheme and its application in rolling bearing fault diagnosis, Journal of Vibroengineering, 14 (2) (2012) 759–770.MathSciNet
    [4]A. B. Ming, W. Zhang, Z. Y. Qin and F. L. Chu, Envelope calculation of the multi-component signal and its application to the deterministic component cancellation in bearing fault diagnosis, Mechanical Systems and Signal Processing, 50-51 (2015) 70–100.CrossRef
    [5]H. Qiu, J. Lee, J. Lin and G. Yu, Wavelet filter-based weak signature detection method and its application on rolling element bearing prognostics, Journal of Sound and Vibration, 289 (4-5) (2006) 1066–1090.CrossRef
    [6]Q. H. Du and S. N. Yang, Application of the EMD method in the vibration analysis of ball bearings, Mechanical Systems and Signal Processing, 21 (6) (2007) 2634–2644.CrossRef
    [7]J. Antoni, The spectral kurtosis: a useful tool for characterizing non-stationary signals, Mechanical Systems and Signal Processing, 20 (2) (2006) 282–307.CrossRef
    [8]S. J. Dong, B. P. Tang and Y. Zhang, A repeated singlechannel mechanical signal blind separation method based on morphological filtering and singular value decomposition, Measurement, 45 (8) (2012) 2052–2063.CrossRef
    [9]D. S. Gu, J. G. Kim, Y. S. An and B. K. Choi, Detection of faults in gearboxes using acoustic emission signal, Journal of Mechanical Science and Technology, 25 (5) (2011) 1279–1286.CrossRef
    [10]D. Wang, Q. Miao, X. F. Fan and H. Z. Huang, Rolling element bearing fault detection using an improved combination of Hilbert and Wavelet transforms, Journal of Mechanical Science and Technology, 23 (2009) 3292–3301.CrossRef
    [11]H. B. Dong, K. Y. Qi, X. F. Chen, Y. Y. Zi, Z. J. He and B. Ling, Rolling element bearing fault detection using an improved combination of Hilbert and Wavelet transforms, Journal of Mechanical Science and Technology, 23 (2009) 2000–2007.CrossRef
    [12]F. Y. Cong, J. Chen and G. M. Dong, Spectral kurtosis based on AR model for fault diagnosis and condition monitoring of rolling bearing, Journal of Mechanical Science and Technology, 26 (2) (2012) 301–306.CrossRef
    [13]D. Wang and P. W. Tse, A new blind fault component separation algorithm for a single-channel mechanical signal mixture, Journal of Sound and Vibration, 331 (2012) 4956–4970.CrossRef
    [14]H. Hong and M. Liang, Separation of fault features from a single-channel mechanical signal mixture using wavelet decomposition, Mechanical Systems and Signal Processing, 21 (5) (2007) 2025–2040.CrossRef
    [15]G. J. Tang and F. Y. Deng, Compound fault features separation method of rolling element bearing based on improved harmonic wavelet packet decomposition, Chinese Journal of Scientific Instrument, 36 (1) (2015) 143–151.
    [16]H. Li, H. Q. Zheng and L. W. Tang, Application of morphological component analysis to gearbox compound fault diagnosis, Journal of Vibration, Measurement and Diagnosis, 33 (4) (2013) 620–626.
    [17]H. Li, H. Q. Zheng and L. W. Tang, Bearing multi-fault diagnosis based on improved morphological component analysis, Journal of Vibration and Shock, 31 (12) (2012) 135–140.MathSciNet
    [18]J. Ma, J. D. Wu, X. D. Wang and Y. G. Fan, The mixed fault detection method for rolling bearings based on ICATeager, Chinese Control and Decision Conference (2014) 2881–2885.
    [19]H. Q. Wang, R. T. Li, G. Tang, H. F. Yuan, Q. L. Zhao and X. Gao, A compound fault diagnosis for rolling bearings method based on blind source separation and ensemble empirical mode decomposition, PLOS ONE, 9 (10) (2014).
    [20]B. D. Qiao, G. Chen and X. X. Qu, A rolling bearing coupling fault diagnosis method based on wavelet transform and blind source separation, Mechanical Science and Technology, 1 (2012) 53–58.
    [21]G. L. McDonald, Q. Zhao and M. J. Zuo, Maximum correlated Kurtosis deconvolution and application on gear tooth chip fault detection, Mechanical Systems and Signal Processing, 33 (2012) 237–255.CrossRef
    [22]X. S. Yang and S. Deb, Cuckoo search via Levy flights, World Congress on Nature and Biologically Inspired Computing (2009) 210–214.
    [23]A. Gotmare, R. Patidar and N. V. George, Nonlinear system identification using a cuckoo search optimized adaptive Hammerstein model, Expert Systems with Applications, 42 (5) (2015) 2538–2546.CrossRef
    [24]M. Kumar and T. K. Rawat, Optimal design of FIR fractional order differentiator using cuckoo search algorithm, Expert Systems with Applications, 42 (7) (2015) 3433–3449.CrossRef
    [25]M. R. AlRashidi, K. M. El-Naggar and M. F. AlHajri, Convex and non-convex heat curve parameters estimation using cuckoo search, Arabian Journal for Science and Engineering, 40 (3) (2015) 873–882.CrossRef
    [26]M. Asadi, Y. Song and B. Sunden, Economic optimization design of shell-and-tube heat exchangers by a cuckoosearch-algorithm, Applied Thermal Engineering, 73 (1) (2014) 1032–1040.CrossRef
    [27]I. Pavlyukevich, Levy flights, non-local search and simulated annealing, Journal of Computational Physics, 226 (2) (2007) 1830–1844.MathSciNet MATH
    [28]W. L. Jiang, Z. Zheng, Y. Zhu and Y. Li, Demodulation for hydraulic pump fault signals based on local mean decomposition and improved adaptive multiscale morphology analysis, Mechanical Systems and Signal Processing, 58-59 (2015) 179–205.CrossRef
    [29]W. P. He, Y. Y. Zi, B. Q. Chen, F. Wu and Z. J. He, Automatic fault feature extraction of mechanical anomaly on induction motor bearing using ensemble super-wavelet transform, Mechanical Systems and Signal Processing, 54-55 (2015) 457–480.CrossRef
    [30]K. A. Loparo, Bearings vibration data set, Case Western Reserve University, http://​www.​eecs.​cwru.​edu/​laboratory/​bearing/​ (2006).
    [31]H. K. Jiang, Y. N. He and P. Yao, Incipient defect identification in rolling bearings using adaptive lifting scheme packet, Journal of Vibroengineering, 14 (2) (2012) 771–782.
    [32]A. Djebala, N. Ouelaa and N. Hamzaoui, Detection of rolling bearing defects using discrete wavelet analysis, MECCANICA, 43 (3) (2008) 339–348.CrossRef MATH
    [33]N. E. Huang, Z. Shen, S. R. Long, M. C. Wu, H. H. Shih, Q. A. Zheng, N. C. Yen, C. C. Tung and H. H. Liu, The empirical mode decomposition and Hilbert spectrum for nonlinear and non-stationary time series analysis, Proceeding of the Royal Society of London A, 454 (1998) 903–995.CrossRef MathSciNet MATH
  • 作者单位:Guiji Tang (1)
    Xiaolong Wang (1)
    Yuling He (1)

    1. School of Energy, Power and Mechanical Engineering, North China Electric Power University, Baoding, 071000, China
  • 刊物类别:Engineering
  • 刊物主题:Mechanical Engineering
    Structural Mechanics
    Control Engineering
    Industrial and Production Engineering
  • 出版者:The Korean Society of Mechanical Engineers
  • ISSN:1976-3824
文摘
This paper proposes a new diagnosis method based on Adaptive maximum correlated kurtosis deconvolution (AMCKD) for accurate identification of compound faults of rolling bearings. The AMCKD method combines the powerful capability of cuckoo search algorithm for global optimization with the advantage of Maximum correlated kurtosis deconvolution (MCKD) for impact signal extraction. In contrast to traditional methods, such as direct envelop spectrum, Discrete wavelet transform (DWT), and empirical mode decomposition, the proposed method extracts each fault signal related to the single failed part from the compound fault signals and effectively separates the coupled fault features. First, the original signal is processed using AMCKD method. Demodulation operation is then performed on the obtained single fault signal, and the envelope spectrum is calculated to identify the characteristic frequency information. Verification is performed on simulated and experimental signals. Results show that the proposed method is more suitable for detecting compound faults in rolling bearings compared with traditional methods. This research provides a basis for improving the monitoring and diagnosis precision of rolling bearings.
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