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个人信息Personal Information
教授
博士生导师
硕士生导师
性别:男
毕业院校:大连理工大学
学位:博士
所在单位:机械工程学院
学科:机械电子工程
办公地点:机械工程学院(大方楼)7025房间
联系方式:0411-84706561-8048
电子邮箱:lihk@dlut.edu.cn
A deep feature extraction method for bearing fault diagnosis based on empirical mode decomposition and kernel function
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论文类型:期刊论文
发表时间:2018-09-18
发表刊物:ADVANCES IN MECHANICAL ENGINEERING
收录刊物:SCIE
卷号:10
期号:9
ISSN号:1687-8140
关键字:Rolling bearing; fault diagnosis; empirical mode decomposition; sparse autoencoder; kernel function
摘要:To avoid catastrophic failures in rotating machines, it is of great significance to continuously monitor and diagnose the running state of rolling bearings. In this article, a deep feature extraction method for rolling bearing fault diagnosis based on empirical mode decomposition and kernel function is proposed. First, the vibration signals under different states of rolling bearing are decomposed by empirical mode decomposition. Second, to extract more representative high-level features, the obtained intrinsic mode functions are preprocessed with singular value decomposition to acquire singular value parameters, which are regarded as the inputs of the proposed stacked kernel sparse autoencoder network. The proposed method does not depend on prior knowledge of fault diagnosis and even does not need the signal denoising processing, simplifying the traditional process of feature extraction of rolling bearing fault diagnosis. To validate the superiority of the proposed diagnosis network, experiments and comparisons have been made as well. The achieved results demonstrated that the proposed empirical mode decomposition and stacked kernel sparse autoencoder-based diagnosis method has a superior performance in rolling bearing fault diagnosis.