Abstract

The fault feature of wind turbine bearing is usually very weak in the early injury stage, in order to accurately identify the defect location, an original approach based on optimized cyclostationary blind deconvolution (OCYCBD) and singular value decomposition denoising (SVDD) is put forward to extract and enhance the fault feature effectively. In this diagnosis method, the fast spectral coherence is fused with the equal step size search strategy for the cyclic frequency parameter and the filter length parameter optimization, and a new frequency weighted energy entropy (FWEE) indicator which combining the advantages of the frequency weighted energy operator (FWEO) and the Shannon entropy, is developed for deconvolution signal evaluation during parameter optimization process. In addition, a novel singular value order determination approach based on fitting error minimum principle is utilized by SVDD to enhance the fault feature. During the process of defect identification, OCYCBD with the optimal parameters is firstly used to recover the informative source from the collected vibration signal. FWEO is further utilized to highlight the potential impulsive characteristics, and the instantaneous energy signal of deconvolution result can be acquired. The whole interferences contained in the instantaneous energy signal can’t be removed due to the weak fault signature and the severe background noise. Then, SVDD is applied to purify the instantaneous energy signal of deconvolution signal, by which the residual interference component is eliminated and the fault feature is strengthened immensely. Finally, frequency domain analysis is performed on the denoised instantaneous energy signal, and the defect location identification of wind turbine bearing can be achieved through analyzing the obvious spectral lines in the obtained enhanced energy spectrum. The collected signals from the experimental platform and the engineering field are both utilized to verify the feasibility of proposed method, and its superiority is further demonstrated through comparing with several well known diagnosis methods. The results indicate this novel method has distinct advantage on bearing weak feature extraction and enhancement.

Highlights

  • As the joint of wind turbine, rolling bearing is indispensable and important component during wind turbine operation

  • To effectively acquire the optimal feature extraction result, a novel optimized cyclostationary blind deconvolution (OCYCBD) method is put forward in the subsequent section, in which the optimal influencing parameters is confirmed by fusing the fast spectral coherence with the equal step size search strategy, and the whole optimization process is guided by the proposed frequency weighted energy entropy indicator

  • A novel fault feature extraction and enhancement method based on OCYCBD and singular value decomposition denoising (SVDD)

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Summary

Introduction

As the joint of wind turbine, rolling bearing is indispensable and important component during wind turbine operation. The impulsive feature is often masked by the external noises and the unknown vibration sources [4] Owing to these reasons, it is a great challenge to identify the incipient defect of wind turbine bearing. Based on the above discussion, for the sake of dealing with the weak defect identification problem of wind turbine bearing, an effective feature extraction and enhancement method combining OCYCBD with SVDD is put forward in this paper. Both the experimental signal and the actual engineering case are applied to verify this method.

Theoretical Background of Cyclostationary Blind Deconvolution
Research on the Influences of Key Parameters
In order quantificationally deconvolution gained
Frequency Weighted Energy Entropy Indicator
Optimal
Basic Theory of Singular Value Decomposition
Singular Value Order Determination
Fault Feature Extraction and Enhancement Method Based on OCYCBD and SVDD
Introduction of Experimental Platform
Experimental Signal Analysis and Result Comparsion
11. Comparison
12. Comparison by SK
13. Comparison
Description
Engineering Signal Analysis and Result Comparsion
Figure
17. Analysis
19. Comparison
Findings
Conclusions
Full Text
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