Abstract

The rolling bearings often suffer from compound fault in practice. Compared with single fault, compound fault contains multiple fault features that are coupled together and make it difficult to detect and extract all fault features by traditional methods such as Hilbert envelope demodulation, wavelet transform and empirical node decomposition (EMD). In order to realize the compound fault diagnosis of rolling bearings and improve the diagnostic accuracy, we developed negentropy spectrum decomposition (NSD), which is based on fast empirical wavelet transform (FEWT) and spectral negentropy, with cyclic extraction as the extraction method. The infogram is constructed by FEWT combined with spectral negentropy to select the best band center and bandwidth for band-pass filtering. The filtered signal is used as a new measured signal, and the fast empirical wavelet transform combined with spectral negentropy is used to filter the new measured signal again. This operation is repeated to achieve cyclic extraction, until the signal no longer contains obvious fault features. After obtaining the envelope of all extracted components, compound fault diagnosis of rolling bearings can be realized. The analysis of the simulation signal and the experimental signal shows that the method can realize the compound fault diagnosis of rolling bearings, which verifies the feasibility and effectiveness of the method. The method proposed in this paper can detect and extract all the fault features of compound fault completely, and it is more reliable for the diagnosis of compound fault. Therefore, the method has practical significance in rolling bearing compound fault diagnosis.

Highlights

  • Rolling bearings are among the most common and yet critical parts in rotating mechanical equipment

  • The filtered signal is used as a new measured signal, and the above operation is repeated until the signal no longer contains obvious fault feature information

  • The new measured signal is decomposed by fast empirical wavelet transform (FEWT), and a series of components are obtained

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Summary

Introduction

Rolling bearings are among the most common and yet critical parts in rotating mechanical equipment. For the single fault diagnosis of rolling bearings, researchers have proposed Fourier transform [5], envelope analysis [6], empirical mode decomposition (EMD) [7], wavelet transform [8] and fast kurtogram [9], and they achieved good application results. Xu et al [20] proposed the compound fault diagnosis of rolling bearings based on dual-tree complex wavelet transform (DT-CWT). A compound fault diagnosis method based on negentropy spectrum decomposition (NSD) is proposed.

FEWT Method
2: A on series of signal components by speed
Proposed Method of Fast Negentropy Spectrum Decomposition
Exposition of Spectral Negentropy
Cyclic
A series ofof residual transients
Applications
Conclusions
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