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基于联合子域对比对齐的轴承跨域故障诊断

杨康 陈学军 张磊 刘烽

中国机械工程2025,Vol.36Issue(5):1065-1073,9.
中国机械工程2025,Vol.36Issue(5):1065-1073,9.DOI:10.3969/j.issn.1004-132X.2025.05.018

基于联合子域对比对齐的轴承跨域故障诊断

Cross-domain Fault Diagnosis of Bearings Based on Joint Subdomain Contrast Alignment

杨康 1陈学军 2张磊 3刘烽3

作者信息

  • 1. 福州大学机械工程及自动化学院,福州,350108
  • 2. 福州大学机械工程及自动化学院,福州,350108||莆田学院新能源装备检测福建省高校重点实验室,莆田,351100
  • 3. 福建农林大学机电工程学院,福州,350116
  • 折叠

摘要

Abstract

The fault data of bearings exhibited significant distribution discrepancies under varying operating conditions,relatively low diagnostic accuracy was resulted in practical fault detection mod-els.Additionally,most existing research on cross-domain bearing fault diagnosis primarily emphasized inter-domain alignment and intra-class comparison,while neglecting the influences of interactions be-tween subdomains.Therefore,a cross-domain fault diagnosis method of bearings was proposed based on joint subdomain contrast alignment.In order to highlight the fault features,the bearing vibration signals were transformed into time-frequency graph by short-time Fourier transform,and the fault features were obtained by inputting them into the feature extraction module.Domain adaptation meth-ods achieved cross-domain recognition by transferring knowledge learned from the source domain to the target domain.During the domain adaptation processes,a joint subdomain contrast alignment strategy was used to bring samples from the same subdomain closer together while separating samples from different subdomains,which aligned the subdomain distributions of the same class samples among the source and target domains,thereby enhancing the model's generalization ability in the tar-get domain.Resnet34 was used as the feature extraction network on the model architecture,and the maximum mean difference was used at the output of the network to align the global distribution of the source domain and the target domain.Compared with the classical domain adaptation methods,the experimental results on the bearing fault data set of Case Western Reserve University shows that the cross-domain fault diagnosis method of bearings based on joint subdomain contrast alignment has bet-ter feature transfer ability.

关键词

故障诊断/滚动轴承/迁移学习/对比对齐/子域自适应

Key words

fault diagnosis/rolling bearing/transfer learning/contrast alignment/subdomain ad-aptation

分类

机械制造

引用本文复制引用

杨康,陈学军,张磊,刘烽..基于联合子域对比对齐的轴承跨域故障诊断[J].中国机械工程,2025,36(5):1065-1073,9.

基金项目

福建省自然科学基金(2022J011169) (2022J011169)

中国机械工程

OA北大核心

1004-132X

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