Recognition on Rolling Bearing’s Condition of Grinding Machine by Using a Novel Approach-Wavelet Hilbert Marginal Spectrum

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Abstract:

Grinding machine condition monitoring is very important during the manufacturing process. Vibration analysis is usually used to its pattern recognition. But traditional signal analysis method limits the accuracy of recognition because of non-stationary and nonlinear characteristics. In this paper, a novel approach is presented in detail for grinding machine fault diagnosis. The method is based on the new developed Hilbert Marginal Spectrum and wavelet transform, named as wavelet-Hilbert marginal spectrum (WHMS). A rolling bearing’s pattern recognition of grinding machine is used to testify the effectiveness of this method, which can accurately detect flaw of the rolling bearing in early stage. Thus, it can be concluded that this promising method will contribute the development of grinding machine condition monitoring.

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773-778

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January 2007

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© 2007 Trans Tech Publications Ltd. All Rights Reserved

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[1] N.E. Huang, Z. Shen, S.R. Long, M.L.C. Wu, H.H. Shih, Q.N. Zheng, N.C. Yen, C.C. Tung, H.H. Liu, The empirical mode decomposition and the Hilbert spectrum for nonlinear and non-stationary time series analysis, Proceedings Of The Royal Society Of London Series A- Mathematical Physical And Engineering Sciences Vol. 454 (1998).

DOI: 10.1098/rspa.1998.0193

Google Scholar

[2] Hongkun. Li, Peilin. Zhou, Xiaojiang. Ma, Pattern recognition on diesel engine working condition by using a novel methodology - Hilbert spectrum entropy, Proceedings of the Institute of Marine Engineering, Science and Technology (2005), pp.43-48.

DOI: 10.1080/20464177.2005.11020301

Google Scholar

[3] M. Datig, T. Schlurmann, Performance and limitations of the Hilbert-Huang transformation (HHT) with an application to irregular water waves, Ocean Engineering Vol. 31 (2004), pp.1783-1834.

DOI: 10.1016/j.oceaneng.2004.03.007

Google Scholar

[4] Ma X. J. Yu B, Zhang Z. X, A new approach to time- frequency analysis-local wave method, Journal of Vibration Engineering (2000), pp.219-224.

Google Scholar

[5] Z.K. Peng, P.W. Tse, F.L. Chu, A comparison study of improved Hilbert-Huang transform and wavelet transform: Application to fault diagnosis for rolling bearing, Mechanical Systems and Signal Processing, Vol. 19 (2005), pp.974-988.

DOI: 10.1016/j.ymssp.2004.01.006

Google Scholar

[6] Peilin Zhou, Hongkun Li. Pattern Recognition on Diesel Engine Working Conditions by Wavelet Kullback-Leibler Distance Method, Proceedings of the I MECH E Part C Journal of Mechanical Engineering Science. Vol. 219 (2005), pp.879-888.

DOI: 10.1243/095440605x31706

Google Scholar