Identification of faults through wavelet transform vis-à-vis fast Fourier transform of noisy vibration signals emanated from defective rolling element bearings

Deepak PALIWAL, Achintya CHOUDHURY, T. GOVANDHAN

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PDF(2698 KB)
Front. Mech. Eng. ›› 2014, Vol. 9 ›› Issue (2) : 130-141. DOI: 10.1007/s11465-014-0298-6
RESEARCH ARTICLE
RESEARCH ARTICLE

Identification of faults through wavelet transform vis-à-vis fast Fourier transform of noisy vibration signals emanated from defective rolling element bearings

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Abstract

Fault diagnosis of rolling element bearings requires efficient signal processing techniques. For this purpose, the performances of envelope detection with fast Fourier transform (FFT) and continuous wavelet transform (CWT) of vibration signals produced from a bearing with defects on inner race and rolling element, have been examined at low signal to noise ratio. Both simulated and experimental signals from identical bearings have been considered for the purpose of analysis. The bearings have been modeled as spring-mass-dashpot systems and the simulated signals have been obtained considering transfer functions for the bearing systems subjected to impulsive loads due to the defects. Frequency B spline wavelets have been applied for CWT and a discussion on wavelet selection has been presented for better effectiveness. Results show that use of CWT with the proposed wavelets overcomes the short coming of FFT while processing a noisy vibration signals for defect detection of bearings.

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Keywords

Fault detection / spline wavelet / continuous wavelet transform / fast Fourier transform

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Deepak PALIWAL, Achintya CHOUDHURY, T. GOVANDHAN. Identification of faults through wavelet transform vis-à-vis fast Fourier transform of noisy vibration signals emanated from defective rolling element bearings. Front. Mech. Eng., 2014, 9(2): 130‒141 https://doi.org/10.1007/s11465-014-0298-6

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2014 Higher Education Press and Springer-Verlag Berlin Heidelberg
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