A new bearing fault diagnosis method via simulation data driving transfer learning without target fault data

被引:50
作者
Hou, Wenbo [1 ]
Zhang, Chunlin [1 ]
Jiang, Yunqian [2 ]
Cai, Keshen [1 ]
Wang, Yanfeng [3 ]
Li, Ni [1 ]
机构
[1] Northwestern Polytech Univ, Sch Aeronaut, Xian 710072, Shaanxi, Peoples R China
[2] Hainan Univ, Mech & Elect Engn Coll, Haikou 570228, Hainan, Peoples R China
[3] AECC Sichuan Gas Turbine Estab, Mianyang 621010, Sichuan, Peoples R China
基金
中国国家自然科学基金; 中国博士后科学基金;
关键词
Rolling bearings; Simulation driving transfer learning; Multi-head attention; Without target domain fault data;
D O I
10.1016/j.measurement.2023.112879
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Transfer learning exhibits exciting advantages in solving the data shortage in fault diagnosis, while most of the existing methods still need target domain fault data, which weakens the performance in some applications where the target fault data could not be provided. Focusing on the no fault data problems, this paper proposes a new transfer learning method based on simulation data. During the route of the proposed method, the theoretical fault characteristic frequencies are pre-evaluated for the monitored bearing, based on which the fault impulses are then constructed. The fault vibration signals are further simulated via mixing the constructed fault impulses with the measured normal baseline data. The envelope spectra of the simulation signals are used as the input to train a network with multi-head attention to identify fault types of the target bearing. The diagnosis performance of the proposed method has been validated via three groups of experimental data.
引用
收藏
页数:16
相关论文
共 37 条
[1]   A theory of learning from different domains [J].
Ben-David, Shai ;
Blitzer, John ;
Crammer, Koby ;
Kulesza, Alex ;
Pereira, Fernando ;
Vaughan, Jennifer Wortman .
MACHINE LEARNING, 2010, 79 (1-2) :151-175
[2]   A new dynamic model and transfer learning based intelligent fault diagnosis framework for rolling element bearings race faults: Solving the small sample problem [J].
Dong, Yunjia ;
Li, Yuqing ;
Zheng, Huailiang ;
Wang, Rixin ;
Xu, Minqiang .
ISA TRANSACTIONS, 2022, 121 :327-348
[3]   Deep Convolutional Transfer Learning Network: A New Method for Intelligent Fault Diagnosis of Machines With Unlabeled Data [J].
Guo, Liang ;
Lei, Yaguo ;
Xing, Saibo ;
Yan, Tao ;
Li, Naipeng .
IEEE TRANSACTIONS ON INDUSTRIAL ELECTRONICS, 2019, 66 (09) :7316-7325
[4]   Deep transfer network with joint distribution adaptation: A new intelligent fault diagnosis framework for industry application [J].
Han, Te ;
Liu, Chao ;
Yang, Wenguang ;
Jiang, Dongxiang .
ISA TRANSACTIONS, 2020, 97 :269-281
[5]   Acoustic spectral imaging and transfer learning for reliable bearing fault diagnosis under variable speed conditions [J].
Hasan, Md Junayed ;
Islam, M. M. Manjurul ;
Kim, Jong-Myon .
MEASUREMENT, 2019, 138 :620-631
[6]   Transfer fault diagnosis of bearing installed in different machines using enhanced deep auto-encoder [J].
He Zhiyi ;
Shao Haidong ;
Jing Lin ;
Cheng Junsheng ;
Yang Yu .
MEASUREMENT, 2020, 152
[7]  
Kumar Anil, 2022, IEEE DataPort, DOI 10.21227/8CQR-JR43
[8]   Deep convolution domain-adversarial transfer learning for fault diagnosis of rolling bearings [J].
Li, Feng ;
Tang, Tuojiang ;
Tang, Baoping ;
He, Qiyuan .
MEASUREMENT, 2021, 169
[9]   Multi-mode data augmentation and fault diagnosis of rotating machinery using modified ACGAN designed with new framework [J].
Li, Wei ;
Zhong, Xiang ;
Shao, Haidong ;
Cai, Baoping ;
Yang, Xingkai .
ADVANCED ENGINEERING INFORMATICS, 2022, 52
[10]   A perspective survey on deep transfer learning for fault diagnosis in industrial scenarios: Theories, applications and challenges [J].
Li, Weihua ;
Huang, Ruyi ;
Li, Jipu ;
Liao, Yixiao ;
Chen, Zhuyun ;
He, Guolin ;
Yan, Ruqiang ;
Gryllias, Konstantinos .
MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2022, 167