Application of variational mode decomposition and permutation entropy for rolling bearing fault diagnosis

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Abstract

Rolling bearings are the key components of rotating machinery. However, the incipient fault characteristics of a rolling bearing vibration signal are weak and difficult to extract. To solve this problem, this paper presents a novel rolling bearing vibration signal fault feature extraction and fault pattern recognition method based on variational mode decomposition (VMD), permutation entropy (PE) and support vector machines (SVM). In the proposed method, the bearing vibration signal is decomposed by VMD, and the intrinsic mode functions (IMFs) are obtained in different scales. Then, the PE values of each IMF are calculated to uncover the multi-scale intrinsic characteristics of the vibration signal. Finally, PE values of IMFs are fed into SVM to automatically accomplish the bearing condition identifications. The proposed method is evaluated by rolling bearing vibration signals. The results indicate that the proposed method is superior and can diagnose rolling bearing faults accurately.

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Zheng, X., Zhou, G., Li, D., Zhou, R., & Ren, H. (2019). Application of variational mode decomposition and permutation entropy for rolling bearing fault diagnosis. International Journal of Acoustics and Vibrations, 24(2), 303–311. https://doi.org/10.20855/ijav.2019.24.21325

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