2 / 2021-06-05 12:19:40
Bearing Fault Diagnosis Based on Residual Neural Network
vibration signal, fault diagnosis, feature extraction, residual network
全文待审
ShiHan / University of Electronic Science and Technology of China
ChenKai / University of Electronic Science and Technology of China
Bailibing / University of Electronic Science and Technology of China
HeRenjun / AVIC Chengdu Aircraft Design & Research Institute
In the field of mechanical fault diagnosis and prediction, the extraction of bearing fault features is a challenging subject, and the bearing vibration signal is the main basis for analyzing its fault characteristics. This paper proposes a method of bearing fault diagnosis based on residual neural network. The empirical mode decomposition algorithm decomposes the signal into different modal functions, and extracts the modal components containing rich fault information, which can enhance the fault characteristics of the bearing signal. The combination of kurtosis and correlation coefficient performs feature selection on modal components, which can effectively remove the influence of interference and extract the main fault features. In order to further improve the accuracy of fault diagnosis, this paper applies continuous wavelet transform to the enhanced bearing fault signal, and converts the 1-D time-domain signal into a 2-D time-frequency image. The time-frequency diagram is used as the input of the residual neural network, and the residual neural network is used to classify and identify the damage degree of bearing faults. Taking the experimental vibration signal of the bearing as an example, and comparing it with the traditional convolutional neural network and Googlenet network, it verifies the effectiveness and accuracy of the feature extraction method in this paper. The residual network has better convergence and classification performance.
重要日期
  • 会议日期

    08月06日

    2021

    08月08日

    2021

  • 08月08日 2021

    注册截止日期

主办单位
中国自动化学会技术过程的故障诊断与安全性专业委员会
承办单位
电子科技大学
联系方式
移动端
在手机上打开
小程序
打开微信小程序
客服
扫码或点此咨询