Back to Search Start Over

A hybrid technique based on convolutional neural network and support vector regression for intelligent diagnosis of rotating machinery

Authors :
Wei You
Changqing Shen
Xiaojie Guo
Xingxing Jiang
Juanjuan Shi
Zhongkui Zhu
Source :
Advances in Mechanical Engineering, Vol 9 (2017)
Publication Year :
2017
Publisher :
SAGE Publishing, 2017.

Abstract

Rolling element bearings and gears are the most common machine elements. As they are extensively used in rotating machinery, their health conditions are crucial to the safe operation. The signals measured from rotating machines are usually affected by the working conditions and background noises. Thus, identifying faults from the mixed signals is a challenging and important task. Deep learning is initially developed for image recognition. Recently, it has attracted increasing attention in machinery fault diagnosis research. However, the generalization ability of the default classifier of it is not very satisfying. Thus, combining the feature learning ability of deep learning and the existing classifiers with satisfactory generalization ability is necessary. In this article, a hybrid technique based on convolutional neural network and support vector regression is proposed. The former part is used to promote feature extraction capability, and the latter part is used for multi-class classification. The efficiency of the proposed scheme is validated using the real acoustic signals measured from locomotive bearings and vibration signals measured from the automobile transmission gearbox. Results confirm that the method proposed is able to capture fault characteristics from the raw data, and both bearing faults and gear faults can be detected successfully.

Details

Language :
English
ISSN :
16878140
Volume :
9
Database :
Directory of Open Access Journals
Journal :
Advances in Mechanical Engineering
Publication Type :
Academic Journal
Accession number :
edsdoj.41b5cbcce4254a20a825c5f6351cf89c
Document Type :
article
Full Text :
https://doi.org/10.1177/1687814017704146