Abstract

Rolling bearings play a pivotal role in rotating machinery. The degradation assessment and remaining useful life (RUL) prediction of bearings are critical to condition-based maintenance. However, sensitive feature extraction still remains a formidable challenge. In this paper, a novel feature extraction method is introduced to obtain the sensitive features through phase space reconstitution (PSR) and joint with approximate diagonalization of Eigen-matrices (JADE). Firstly, the original features are extracted from bearing vibration signals in time and frequency domain. Secondly, the PSR is applied to embed the original features into high dimensional phase space. The between-class and within-class scatter (SS) are calculated to evaluate the feature sensitivity through the phase point distribution of different degradation stages and then different weights are assigned to the corresponding features based on the calculatedSS. Thirdly, the JADE is employed to fuse the weighted features to obtain the advanced features which can better reflect the bearing degradation process. Finally, the advanced features are input into the extreme learning machine (ELM) to train the RUL prediction model. A set of experimental case studies are carried out to verify the effectiveness of the proposed method. The results show that the extracted advanced features can better reflect the degradation process compared to traditional features and could effectively predict the RUL of bearing.

Highlights

  • Prognostics and Health Management (PHM) is an important research area in industry, which aims at increasing availability and decreasing the downtime by predicting the residual life of machine

  • In order to evaluate the effectiveness of the proposed feature fusion scheme for remaining useful life (RUL) prediction, the entire life cycle bearing data originated from the Center for Intelligent Maintenance Systems [37] is analyzed

  • A novel feature extraction method that integrates the phase space reconstitution (PSR), SS, and joint with approximate diagonalization of Eigen-matrices (JADE) is introduced in this paper

Read more

Summary

Introduction

Prognostics and Health Management (PHM) is an important research area in industry, which aims at increasing availability and decreasing the downtime by predicting the residual life of machine. It has a poor performance when the signals are mixed with background noise [18] To overcome this problem, a feature weighted fusion method combining the phase space reconstitution (PSR) [19] with the between-class and withinclass scatters evaluation [20] is proposed in this paper. After extracting feature from vibration signals, machine learning algorithms can be used to establish the bearing RUL prediction model, such as the support vector machine (SVM) [21,22,23] and the ANN [24]. Compared with back-propagation (BP) feed-forward network learning algorithm, the training speed of ELM is much faster while obtaining better generalization [26, 27] In view of these advantages, the ELM is selected in this paper to establish bearing RUL prediction model.

Theory Background
The Proposed Method for Bearing RUL Prediction
Experimental Results and Analysis
Conclusions
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call