Application of Sample Entropy and Fractional Fourier Transform in Fault Diagnosis of Rolling Bearing

Guo Xuewei,Shen Yongjun,Yang Shaopu

Journal of Vibration and Shock ›› 2017, Vol. 36 ›› Issue (18) : 65-69.

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Journal of Vibration and Shock ›› 2017, Vol. 36 ›› Issue (18) : 65-69.

Application of Sample Entropy and Fractional Fourier Transform in Fault Diagnosis of Rolling Bearing

  • Guo Xuewei ,  Shen Yongjun ,  Yang Shaopu
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Abstract

In this paper a new method of fault feature extraction based on sample entropy and fractional Fourier transform is presented. The core of this new method is to map the original data with poor separability into the appropriate fractional space firstly. Then the sample entropies of the transformed data after fractional Fourier transformation with appropriate order are computed and compared, so that fault feature extraction is fulfilled. The results show this new method could enhance the separability of different failure modes, and discriminate the normal, inner ring fault, outer ring fault and roller fault signals distinctly.

Key words

sample entropy / fractional Fourier transform / feature extraction

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Guo Xuewei,Shen Yongjun,Yang Shaopu. Application of Sample Entropy and Fractional Fourier Transform in Fault Diagnosis of Rolling Bearing[J]. Journal of Vibration and Shock, 2017, 36(18): 65-69

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