SASLN: Signals Augmented Self-Taught Learning Networks for Mechanical Fault Diagnosis Under Small Sample Condition

被引:27
作者
Zhang, Tianci [1 ]
Chen, Jinglong [1 ]
Xie, Jingsong [2 ]
Pan, Tongyang [1 ]
机构
[1] Xi An Jiao Tong Univ, State Key Lab Mfg Syst Engn, Xian 710049, Peoples R China
[2] Cent South Univ, Sch Traff & Transportat Engn, Changsha 410075, 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
Fault diagnosis; generative adversarial network (GAN); generator bearing; small sample; wind turbine (WT); WIND TURBINE; NEURAL-NETWORK; ROTATING MACHINERY; IDENTIFICATION;
D O I
10.1109/TIM.2020.3043098
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
The implementation of condition monitoring and fault diagnosis is of special importance for ensuring wind turbine (WT) operation safely and stably. In practice, however, the fault data of WT are limited, which makes it hard to identify faults of WT accurately using the existing intelligent diagnosis methods. To address this, signals augmented self-taught learning network (SASLN) is proposed for the fault diagnosis of the generator, which is one of the most important parts in WT. In SASLN, fault signal samples are generated by the Wasserstein distance guided generative adversarial networks to expand the limited training data set. The sufficient generated signal samples are used to pretrain the self-taught learning network (SIN) to enhance the generalization ability of SLN. Then, the weights of SIN are fine-tuned using a small number of real signal samples for accurate fault classification. The effectiveness of SASLN is verified by two bearing vibration data sets. The results show that SASLN can achieve fairly high fault classification accuracy using small training samples. Besides, SASLN has good robustness in noisy working environment and can also identify faults even in variable loads and variable rotating speeds cases, which makes it meaningful for decreasing the running costs and improving the maintenance management of WT.
引用
收藏
页数:11
相关论文
共 42 条
[1]  
[Anonymous], 2012, arXiv
[2]  
Arjovsky M., 2017, CoRR
[3]   Wind turbine reliability: A comprehensive review towards effective condition monitoring development [J].
Artigao, Estefania ;
Martin-Martinez, Sergio ;
Honrubia-Escribano, Andres ;
Gomez-Lazaro, Emilio .
APPLIED ENERGY, 2018, 228 :1569-1583
[4]   CAUSE AND ANALYSIS OF STATOR AND ROTOR FAILURES IN 3-PHASE SQUIRREL-CAGE INDUCTION-MOTORS [J].
BONNETT, AH ;
SOUKUP, GC .
IEEE TRANSACTIONS ON INDUSTRY APPLICATIONS, 1992, 28 (04) :921-937
[5]   Intelligent fault diagnosis of Wind Turbines via a Deep Learning Network Using Parallel Convolution Layers with Multi-Scale Kernels [J].
Chang, Yuanhong ;
Chen, Jinglong ;
Qu, Cheng ;
Pan, Tongyang .
RENEWABLE ENERGY, 2020, 153 :205-213
[6]   Generator bearing fault diagnosis for wind turbine via empirical wavelet transform using measured vibration signals [J].
Chen, Jinglong ;
Pan, Jun ;
Li, Zipeng ;
Zi, Yanyang ;
Chen, Xuefeng .
RENEWABLE ENERGY, 2016, 89 :80-92
[7]   A Generative Adversarial Network-Based Intelligent Fault Diagnosis Method for Rotating Machinery Under Small Sample Size Conditions [J].
Ding, Yu ;
Ma, Liang ;
Ma, Jian ;
Wang, Chao ;
Lu, Chen .
IEEE ACCESS, 2019, 7 :149736-149749
[8]   Deep Cost Adaptive Convolutional Network: A Classification Method for Imbalanced Mechanical Data [J].
Dong, Xun ;
Gao, Hongli ;
Guo, Liang ;
Li, Kesi ;
Duan, Andongzhe .
IEEE ACCESS, 2020, 8 :71486-71496
[9]   Construction of hierarchical diagnosis network based on deep learning and its application in the fault pattern recognition of rolling element bearings [J].
Gan, Meng ;
Wang, Cong ;
Zhu, Chang'an .
MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2016, 72-73 :92-104
[10]   A Newly Designed Diagnostic Method for Mechanical Faults of High-Voltage Circuit Breakers via SSAE and IELM [J].
Gao, Wei ;
Qiao, Su-Peng ;
Wai, Rong-Jong ;
Guo, Mou-Fa .
IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 2021, 70