Unsupervised Electric Motor Fault Detection by Using Deep Autoencoders

被引:1
作者
Emanuele Principi [1 ]
Damiano Rossetti [2 ]
Stefano Squartini [3 ,1 ]
Francesco Piazza [3 ,1 ]
机构
[1] the Department of Information Engineering, Università Politecnica delle Marche
[2] Loccioni Group, Angeli di Rosora
[3] IEEE
关键词
Autoencoder; convolutional neural networks; electric motor; fault detection; long short-term memory; neural networks; novelty detection;
D O I
暂无
中图分类号
TN762 [编码器]; TM307 [电机维护与检修];
学科分类号
080902 ; 080801 ;
摘要
Fault diagnosis of electric motors is a fundamental task for production line testing, and it is usually performed by experienced human operators. In the recent years, several methods have been proposed in the literature for detecting faults automatically. Deep neural networks have been successfully employed for this task, but, up to the authors' knowledge, they have never been used in an unsupervised scenario. This paper proposes an unsupervised method for diagnosing faults of electric motors by using a novelty detection approach based on deep autoencoders. In the proposed method, vibration signals are acquired by using accelerometers and processed to extract LogMel coefficients as features. Autoencoders are trained by using normal data only, i.e., data that do not contain faults. Three different autoencoders architectures have been evaluated: the multilayer perceptron(MLP) autoencoder, the convolutional neural network autoencoder, and the recurrent autoencoder composed of long short-term memory(LSTM) units. The experiments have been conducted by using a dataset created by the authors, and the proposed approaches have been compared to the one-class support vector machine(OC-SVM) algorithm. The performance has been evaluated in terms area under curve(AUC) of the receiver operating characteristic curve, and the results showed that all the autoencoder-based approaches outperform the OCSVM algorithm. Moreover, the MLP autoencoder is the most performing architecture, achieving an AUC equal to 99.11 %.
引用
收藏
页码:441 / 451
页数:11
相关论文
共 12 条
[1]  
Nested SVDD in DAG SVM for induction motor condition monitoring[J] . Slaheddine Zgarni,Hassen Keskes,Ahmed Braham. Engineering Applications of Artificial Intelligen . 2018
[2]  
Non-intrusive load monitoring by using active and reactive power in additive Factorial Hidden Markov Models[J] . Roberto Bonfigli,Emanuele Principi,Marco Fagiani,Marco Severini,Stefano Squartini,Francesco Piazza. Applied Energy . 2017
[3]  
Deep neural networks: A promising tool for fault characteristic mining and intelligent diagnosis of rotating machinery with massive data[J] . Feng Jia,Yaguo Lei,Jing Lin,Xin Zhou,Na Lu. Mechanical Systems and Signal Processing . 2015
[4]  
Condition monitoring of induction motors: A review and an application of an ensemble of hybrid intelligent models[J] . Manjeevan Seera,Chee Peng Lim,Saeid Nahavandi,Chu Kiong Loo. Expert Systems With Applications . 2014 (10)
[5]   Bearing fault detection of induction motor using wavelet and Support Vector Machines (SVMs) [J].
Konar, P. ;
Chattopadhyay, P. .
APPLIED SOFT COMPUTING, 2011, 11 (06) :4203-4211
[6]  
Anomaly-based network intrusion detection: Techniques, systems and challenges[J] . P. García-Teodoro,J. Díaz-Verdejo,G. Maciá-Fernández,E. Vázquez. Computers & Security . 2008 (1)
[7]  
Model-based fault-detection and diagnosis – status and applications[J] . Rolf Isermann. Annual Reviews in Control . 2005 (1)
[8]  
Novelty detection: a review—part 2:[J] . Markos Markou,Sameer Singh. Signal Processing . 2003 (12)
[9]  
Novelty detection: a review—part 1: statistical approaches[J] . Markos Markou,Sameer Singh. Signal Processing . 2003 (12)
[10]   Long short-term memory [J].
Hochreiter, S ;
Schmidhuber, J .
NEURAL COMPUTATION, 1997, 9 (08) :1735-1780