Abstract

Fault diagnosis precision for rolling bearings under variable conditions has always been unsatisfactory. To solve this problem, a fault diagnosis method combining Hilbert-Huang transform (HHT), singular value decomposition (SVD), and Elman neural network is proposed in this paper. The method includes three steps. First, instantaneous amplitude matrices were obtained by using HHT from rolling bearing signals. Second, the singular value vector was acquired by applying SVD to the instantaneous amplitude matrices, thus reducing the dimension of the instantaneous amplitude matrix and obtaining the fault feature insensitive to working condition variation. Finally, an Elman neural network was applied to the rolling bearing fault diagnosis under variable working conditions according to the extracted feature vector. The experimental results show that the proposed method can effectively classify rolling bearing fault modes with high precision under different operating conditions. Moreover, the performance of the proposed HHT-SVD-Elman method has an advantage over that of EMD-SVD or WPT-PCA for feature extraction and Support Vector Machine (SVM) or Extreme Learning Machine (ELM) for classification.

Highlights

  • In modern rapidly developing industries, the rolling bearing, a vital component of most rotary machines, faces an increasingly complex working environment

  • Rolling bearing fault diagnosis under time-varying working condition has always been a thorny issue in the field of bearing fault diagnosis

  • This paper presents a new fault diagnosis method combining Hilbert-Huang transform (HHT), singular value decomposition (SVD), and Elman neural network

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Summary

Introduction

In modern rapidly developing industries, the rolling bearing, a vital component of most rotary machines, faces an increasingly complex working environment. In order to achieve the fault diagnosis under variable conditions, Yang et al employed the feature vector obtained from different working conditions as the input of the classifier He et al addressed manifold learning on generated timefrequency distributions for machine fault signature analysis [4]. As time-frequency analysis methods, the short-time Fourier transform [5], the Wigner-Ville distribution [6], and the wavelet transform [7] can process the nonstationary signal. HHT in tandem with SVD is proposed for rolling bearing fault feature extraction under variable working conditions in this paper.

Feature Extraction Method Based on HHT and SVD
Fault Identification and Classification Based on Elman Neural Network
Experimental Result and Discussion
Findings
Conclusion
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