An automatic recognition method for characteristic frequency of rolling bearings

GAO Dawei,ZHU Yongsheng,LIU Yuwei,CAO Penghui,GAO Chuang

Journal of Vibration and Shock ›› 2017, Vol. 36 ›› Issue (9) : 58-62.

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PDF(847 KB)
Journal of Vibration and Shock ›› 2017, Vol. 36 ›› Issue (9) : 58-62.

An automatic recognition method for characteristic frequency of rolling bearings

  • GAO Dawei,ZHU Yongsheng,LIU Yuwei,CAO Penghui,GAO Chuang
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Abstract

In order to solve problems,such as,overdependence on single fault characteristic frequency,and the ambiguity and inefficiency of diagnosis results caused by subjective factors in fault diagnosis of rolling bearings,a method using the envelope spectrum and resonance demodulation analysis of signals was proposed to identify the fault characteristic frequency,and its multiplications and modulation frequency components of rolling bearings.Firstly,the original signal was analyzed with the envelope spectrum or resonance demodulation analysis.Then,a specific algorithm was used to identify faulty frequency components and rotating frequency in the spectrum.At last,the fault diagnosis of rolling bearings was conducted with the corresponding proportions of the identified frequency components.The fault diagnosis simulations and the life acceleration tests of rolling bearings demonstrated the validity of the proposed method.

Key words

fault diagnosis / frequency identification / envelope spectrum / intelligent algorithm

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GAO Dawei,ZHU Yongsheng,LIU Yuwei,CAO Penghui,GAO Chuang. An automatic recognition method for characteristic frequency of rolling bearings[J]. Journal of Vibration and Shock, 2017, 36(9): 58-62

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