Abstract

The early fault characteristics of rolling element bearings carried by vibration signals are quite weak because the signals are generally masked by heavy background noise. To extract the weak fault characteristics of bearings from the signals, an improved spectral kurtosis (SK) method is proposed based on maximum correlated kurtosis deconvolution (MCKD). The proposed method combines the ability of MCKD in indicating the periodic fault transients and the ability of SK in locating these transients in the frequency domain. A simulation signal overwhelmed by heavy noise is used to demonstrate the effectiveness of the proposed method. The results show that MCKD is beneficial to clarify the periodic impulse components of the bearing signals, and the method is able to detect the resonant frequency band of the signal and extract its fault characteristic frequency. Through analyzing actual vibration signals collected from wind turbines and hot strip rolling mills, we confirm that by using the proposed method, it is possible to extract fault characteristics and diagnose early faults of rolling element bearings. Based on the comparisons with the SK method, it is verified that the proposed method is more suitable to diagnose early faults of rolling element bearings.

Highlights

  • As rolling element bearings are widely used in rotating machinery and one of the most damaged components as well, their early fault diagnosis has attracted lots of attention [1,2,3,4]

  • Wang et al [17] combined minimum entropy deconvolution (MED) and spectral kurtosis (SK) for extracting weak fault characteristics of the bearings, and the results showed that the method performed better than the wavelet transform and ensemble empirical mode decomposition

  • This paper proposes an improved SK method based on maximum correlated kurtosis deconvolution (MCKD) for the early fault diagnosis of rolling element bearings

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Summary

Introduction

As rolling element bearings are widely used in rotating machinery and one of the most damaged components as well, their early fault diagnosis has attracted lots of attention [1,2,3,4]. The drawback of SK is that the method may fail in effectively detecting transients with a low signal-to-noise ratio To remedy this drawback, Wang et al [14] proposed an adaptive spectral kurtosis method for bearing fault diagnosis and the method could determine the optimal bandwidth and center frequency adaptively. To take advantage of the periodic nature of the bearing fault signals and diagnose the early faults accurately, this study proposes an improved SK method by using the maximum correlation kurtosis deconvolution (MCKD) technique. Harnessing the advantages of MCKD and SK, the proposed method is expected to effectively extract the weak fault characteristics and identify the early faults of the bearings.

MCKD Technique
Spectral Kurtosis
The Proposed Method
Simulation Illustration
Diagnosis of Wind Turbine Bearing Faults
Diagnosis of Rolling Mill Bearing Faults
Conclusions
Full Text
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