Deep temporal-spectral domain adaptation for bearing fault diagnosis

被引:6
作者
Ding, Yifei [1 ,2 ,3 ]
Cao, Yudong [2 ]
Jia, Minping [2 ]
Ding, Peng [4 ]
Zhao, Xiaoli [5 ]
Lee, Chi-Guhn [3 ]
机构
[1] Changshu Inst Technol, Sch Mech Engn, Suzhou 215500, Peoples R China
[2] Southeast Univ, Sch Mech Engn, Nanjing 211189, Peoples R China
[3] Univ Toronto, Ctr Maintenance Optimizat & Reliabil Engn, Toronto, ON M5S 3G8, Canada
[4] Yangzhou Univ, Coll Mech Engn, Yangzhou 225127, Peoples R China
[5] Nanjing Univ Sci & Technol, Sch Mech Engn, Nanjing 210014, Peoples R China
基金
中国国家自然科学基金;
关键词
Fault diagnosis; Domain adaptation; Spectral neural network; Sinkhorn divergence; ADVERSARIAL TRANSFER NETWORK;
D O I
10.1016/j.knosys.2024.111999
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Deep transfer learning (DTL) greatly improved the cross -domain generalization of fault diagnosis and makes it more practical and operable. However, existing work focuses on addressing temporal feature shift, while neglecting the modeling and narrow of spectral feature shift. To solve this issue, this work focus on the study of temporal-spectral domain adaption (TSDA) for bearing fault diagnosis and proposes a temporal- spectral domain adaptive network (TSDAN). Specifically, TSDAN constructs a temporal-spectral representation by extracting temporal features and spectral features through two branching modules: a convolutional network and a novel spectral neural network, respectively. To construct spectral neural networks, we introduce spectral convolution, spectral pooling, spectral normalization, and spectral activation. Moreover, a Sinkhorn divergencebased temporal -spectrum adapter is designed to align the temporal -spectrum representations from the source and target domains. Finally, we provide the implementation details of TSDAN-based fault diagnosis on publicly available and self -built datasets, which validate the effectiveness and superiority of the proposed approach.
引用
收藏
页数:10
相关论文
共 40 条
[1]   Intelligent fault diagnosis of rolling bearings based on LSTM with large margin nearest neighbor algorithm [J].
Aljemely, Anas H. ;
Xuan, Jianping ;
Al-Azzawi, Osama ;
Jawad, Farqad K. J. .
NEURAL COMPUTING & APPLICATIONS, 2022, 34 (22) :19401-19421
[2]   Spectral-based convolutional neural network without multiple spatial-frequency domain switchings [J].
Ayat, Sayed Omid ;
Khalil-Hani, Mohamed ;
Ab Rahman, Ab Al-Hadi ;
Abdellatef, Hamdan .
NEUROCOMPUTING, 2019, 364 :152-167
[3]   Unsupervised domain-share CNN for machine fault transfer diagnosis from steady speeds to time-varying speeds [J].
Cao, Hongru ;
Shao, Haidong ;
Zhong, Xiang ;
Deng, Qianwang ;
Yang, Xingkai ;
Xuan, Jianping .
JOURNAL OF MANUFACTURING SYSTEMS, 2022, 62 :186-198
[4]   Domain Adversarial Transfer Network for Cross-Domain Fault Diagnosis of Rotary Machinery [J].
Chen, Zhuyun ;
He, Guolin ;
Li, Jipu ;
Liao, Yixiao ;
Gryllias, Konstantinos ;
Li, Weihua .
IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 2020, 69 (11) :8702-8712
[5]  
Chi Lu, 2020, PROC INT C NEURAL IN, V33, P4479, DOI DOI 10.5555/3495724.3496100
[6]  
Cuturi M., 2013, Advances in neural information processing systems, V26
[7]   A novel time-frequency Transformer based on self-attention mechanism and its application in fault diagnosis of rolling bearings [J].
Ding, Yifei ;
Jia, Minping ;
Miao, Qiuhua ;
Cao, Yudong .
MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2022, 168
[8]  
Feydy Jean, 2019, PR MACH LEARN RES, P2681
[9]  
Genevay A, 2018, PR MACH LEARN RES, V84
[10]  
Guberman N, 2016, Arxiv, DOI [arXiv:1602.09046, 10.48550/arXiv.1602.09046]