A Spectrum Detection Approach for Bearing Fault Signal Based on Spectral Kurtosis

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Abstract

According to the similarity between Morlet wavelet and fault signal and the sensitive characteristics of spectral kurtosis for the impact signal, a new wavelet spectrum detection approach based on spectral kurtosis for bearing fault signal is proposed. This method decreased the band-pass filter range and reduced the wavelet window width significantly. As a consequence, the bearing fault signal was detected adaptively, and time-frequency characteristics of the fault signal can be extracted accurately. The validity of this method was verified by the identifications of simulated shock signal and test bearing fault signal. The method provides a new understanding of wavelet spectrum detection based on spectral kurtosis for rolling element bearing fault signal.

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APA

Li, Y., Wang, L., & Guan, J. (2017). A Spectrum Detection Approach for Bearing Fault Signal Based on Spectral Kurtosis. Shock and Vibration, 2017. https://doi.org/10.1155/2017/6106103

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