Positive-Unlabeled Learning-Based Hybrid Deep Network for Intelligent Fault Detection

被引:16
作者
Qian, Min [1 ]
Yan-Fu Li [1 ]
Han, Te [1 ]
机构
[1] Tsinghua Univ, Dept Ind Engn, Beijing 100084, Peoples R China
基金
中国国家自然科学基金;
关键词
Fault detection; Training; Supervised learning; Feature extraction; Wind turbines; Informatics; Deep learning; positive-unlabeled (PU) learning; wind turbine; FEATURE-EXTRACTION; DIAGNOSIS; SYSTEM; SVM;
D O I
10.1109/TII.2021.3121777
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Intelligent fault detection methods based on deep learning have been developed rapidly in recent years. However, most of these methods are based on supervised learning which requires a fully labeled training set. It is difficult to obtain massive labeled samples in real applications incredibly accurately labeled fault samples from an operating system. The lack of labels and label noise becomes a great challenge for fault detection. To tackle this problem, in this article, we propose a positive-unlabeled learning based hybrid network (PUHN). It only needs part of the normal operating samples to be labeled. All other samples (including the rest of the normal samples and all fault samples) are unlabeled, which greatly reduces the labeling cost. PUHN consists of three modules: a nonnegative risk positive-unlabeled (PU) network for training the classifier, a feature extraction module, and a clustering layer for improving data separability and estimating the class priors of PU learning. The three are optimized as a whole and the corresponding optimization strategy is designed. The monitoring data of 24 wind turbines are used to verify the effectiveness and robustness of the proposed method. The experimental results indicate that the proposed method is superior to the benchmark methods, and the performance is significantly better than the supervised learning method when there exists label noise.
引用
收藏
页码:4510 / 4519
页数:10
相关论文
共 39 条
[1]   Learning from positive and unlabeled data: a survey [J].
Bekker, Jessa ;
Davis, Jesse .
MACHINE LEARNING, 2020, 109 (04) :719-760
[2]  
Bekker J, 2018, AAAI CONF ARTIF INTE, P2712
[3]  
du Plessis MC, 2014, ADV NEUR IN, V27
[4]  
Elkan C., 2008, P 14 ACM SIGKDD INT, P213, DOI DOI 10.1145/1401890.1401920
[5]   Actuator and Sensor Fault Classification for Wind Turbine Systems Based on Fast Fourier Transform and Uncorrelated Multi-Linear Principal Component Analysis Techniques [J].
Fu, Yichuan ;
Gao, Zhiwei ;
Liu, Yuanhong ;
Zhang, Aihua ;
Yin, Xiuxia .
PROCESSES, 2020, 8 (09)
[6]   An Overview on Fault Diagnosis, Prognosis and Resilient Control for Wind Turbine Systems [J].
Gao, Zhiwei ;
Liu, Xiaoxu .
PROCESSES, 2021, 9 (02) :1-19
[7]  
Gao Zhiwei., 2015, IEEE T IND ELECTRON, P1, DOI DOI 10.1109/TIE.2015.2419013
[8]  
Goodfellow IJ, 2014, ADV NEUR IN, V27, P2672
[9]  
Guo XF, 2017, PROCEEDINGS OF THE TWENTY-SIXTH INTERNATIONAL JOINT CONFERENCE ON ARTIFICIAL INTELLIGENCE, P1753
[10]   A Hybrid Generalization Network for Intelligent Fault Diagnosis of Rotating Machinery Under Unseen Working Conditions [J].
Han, Te ;
Li, Yan-Fu ;
Qian, Min .
IEEE TRANSACTIONS ON INSTRUMENTATION AND MEASUREMENT, 2021, 70