摘要
传统滚动轴承工况识别方法存在轴承振动信号人工特征提取困难的问题,提出一种基于增强经验小波分解(Enhanced empirical wavelet decomposition,EEWD)和自组织深层网络(Self-organizing deep network,SODN)的工况识别方法。首先改进经验小波分解的频谱分割方式,将滚动轴承振动信号自适应分解为若干本征模态分量;然后利用综合评价指标筛选出最能反映信号工况特征的本征模态分量并重构信号;最后构造自组织深层网络,将重构后的滚动轴承振动信号输入SODN进行自动特征学习与工况识别。实验结果表明:EEWD结合SODN方法相比于其它深度学习方法在信号特征提取和工况识别准确率方面更具优势。
Considering that traditional methods for rolling bearing condition identification were difficulty in manual feature extraction of bearing vibration signals,a new method based on enhanced empirical wavelet decomposition(EEWD)with self-organizing deep network(SODN)was proposed.Firstly,the segmentation method of spectrum of empirical wavelet decomposition was enhanced,and the vibration signals of rolling bearings were adaptively decomposed into several intrinsic modal functions.The intrinsic modal functions which can best reflect the condition characteristics of the raw signals were selected by the comprehensive evaluation index and then reconstructed.Secondly,the self-organizing deep network was constructed.Finally,the reconstructed signals were fed into SODN for automatic feature learning and automatic condition identification.The experimental results indicate that the method based EEWD and SODN is superior than other deep learning methods in signals feature extraction and condition recognition accuracy.
作者
张康智
毕永强
曹鹏飞
HANG Kangzhi;BI Yongqiang;CAO Pengfei(School of Mechanical Engineering,Xi′an Aeronautical University,Xi′an 710077,China;Xi′an Xinghang Aeronautical Technology Co.,Ltd.,Xi′an 710077,China)
出处
《机械科学与技术》
CSCD
北大核心
2022年第6期905-911,共7页
Mechanical Science and Technology for Aerospace Engineering
基金
国家自然科学基金青年基金项目(11802219)
陕西省科技厅项目(2018JQ1005)。
关键词
滚动轴承
增强经验小波分解
深层网络
工况识别
rolling bearing
enhanced empirical wavelet decomposition
deep network
condition identification