Fault Detection and Diagnosis Using Combined Autoencoder and Long Short-Term Memory Network

被引:137
作者
Park, Pangun [1 ]
Di Marco, Piergiuseppe [2 ]
Shin, Hyejeon [3 ]
Bang, Junseong [4 ]
机构
[1] Chungnam Natl Univ, Dept Radio & Informat Commun Engn, Daejeon 34134, South Korea
[2] Univ LAquila, Dept Informat Engn Comp Sci & Math, I-67100 Laquila, Italy
[3] Kyungpook Natl Univ, Dent Clin Ctr, Daegu 41940, South Korea
[4] Elect & Telecommun Res Inst, Def & Safety ICT Res Dept, Daejeon 34129, South Korea
关键词
autoencoder; long short-term memory; rare event; fault detection; fault diagnosis; time delay; COMPONENT ANALYSIS; SYSTEMS; MODEL; ALGORITHMS; INDUSTRY; SIGNAL;
D O I
10.3390/s19214612
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Fault detection and diagnosis is one of the most critical components of preventing accidents and ensuring the system safety of industrial processes. In this paper, we propose an integrated learning approach for jointly achieving fault detection and fault diagnosis of rare events in multivariate time series data. The proposed approach combines an autoencoder to detect a rare fault event and a long short-term memory (LSTM) network to classify different types of faults. The autoencoder is trained with offline normal data, which is then used as the anomaly detection. The predicted faulty data, captured by autoencoder, are put into the LSTM network to identify the types of faults. It basically combines the strong low-dimensional nonlinear representations of the autoencoder for the rare event detection and the strong time series learning ability of LSTM for the fault diagnosis. The proposed approach is compared with a deep convolutional neural network approach for fault detection and identification on the Tennessee Eastman process. Experimental results show that the combined approach accurately detects deviations from normal behaviour and identifies the types of faults within the useful time.
引用
收藏
页数:17
相关论文
共 52 条
[1]  
Bengio Yoshua, 2012, Neural Networks: Tricks of the Trade. Second Edition: LNCS 7700, P437, DOI 10.1007/978-3-642-35289-8_26
[2]   Representation Learning: A Review and New Perspectives [J].
Bengio, Yoshua ;
Courville, Aaron ;
Vincent, Pascal .
IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 2013, 35 (08) :1798-1828
[3]   Learning Deep Architectures for AI [J].
Bengio, Yoshua .
FOUNDATIONS AND TRENDS IN MACHINE LEARNING, 2009, 2 (01) :1-127
[4]   Fault diagnosis based on Fisher discriminant analysis and support vector machines [J].
Chiang, LH ;
Kotanchek, ME ;
Kordon, AK .
COMPUTERS & CHEMICAL ENGINEERING, 2004, 28 (08) :1389-1401
[5]   From Model, Signal to Knowledge: A Data-Driven Perspective of Fault Detection and Diagnosis [J].
Dai, Xuewu ;
Gao, Zhiwei .
IEEE TRANSACTIONS ON INDUSTRIAL INFORMATICS, 2013, 9 (04) :2226-2238
[6]   Railway Track Circuit Fault Diagnosis Using Recurrent Neural Networks [J].
de Bruin, Tim ;
Verbert, Kim ;
Babuska, Robert .
IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2017, 28 (03) :523-533
[7]   Modified kernel principal component analysis based on local structure analysis and its application to nonlinear process fault diagnosis [J].
Deng, Xiaogang ;
Tian, Xuemin ;
Chen, Sheng .
CHEMOMETRICS AND INTELLIGENT LABORATORY SYSTEMS, 2013, 127 :195-209
[8]   A PLANT-WIDE INDUSTRIAL-PROCESS CONTROL PROBLEM [J].
DOWNS, JJ ;
VOGEL, EF .
COMPUTERS & CHEMICAL ENGINEERING, 1993, 17 (03) :245-255
[9]   Designing a hierarchical neural network based on fuzzy clustering for fault diagnosis of the Tennessee-Eastman process [J].
Eslamloueyan, Reza .
APPLIED SOFT COMPUTING, 2011, 11 (01) :1407-1415
[10]   Fault detection and diagnosis of non-linear non-Gaussian dynamic processes using kernel dynamic independent component analysis [J].
Fan, Jicong ;
Wang, Youqing .
INFORMATION SCIENCES, 2014, 259 :369-379