A Combined Short Time Fourier Transform and Image Classification Transformer Model for Rolling Element Bearings Fault Diagnosis in Electric Motors

被引:42
作者
Alexakos, Christos T. [1 ]
Karnavas, Yannis L. [1 ]
Drakaki, Maria [2 ]
Tziafettas, Ioannis A. [1 ]
机构
[1] Democritus Univ Thrace, Elect Machines Lab, Depterment Elect & Comp Engn, Xanthi 67100, Greece
[2] Int Hellen Univ, Univ Ctr Int Programmes Studies, Dept Sci & Technol, Thermi 57001, Hellas, Greece
关键词
bearing fault; convolutional neural network; electric motors; short time fourier transform; image classification transformer; fault diagnosis; INTELLIGENT DIAGNOSIS; NETWORKS;
D O I
10.3390/make3010011
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
The most frequent faults in rotating electrical machines occur in their rolling element bearings. Thus, an effective health diagnosis mechanism of rolling element bearings is necessary from operational and economical points of view. Recently, convolutional neural networks (CNNs) have been proposed for bearing fault detection and identification. However, two major drawbacks of these models are (a) their lack of ability to capture global information about the input vector and to derive knowledge about the statistical properties of the latter and (b) the high demand for computational resources. In this paper, short time Fourier transform (STFT) is proposed as a pre-processing step to acquire time-frequency representation vibration images from raw data in variable healthy or faulty conditions. To diagnose and classify the vibration images, the image classification transformer (ICT), inspired from the transformers used for natural language processing, has been suitably adapted to work as an image classifier trained in a supervised manner and is also proposed as an alternative method to CNNs. Simulation results on a famous and well-established rolling element bearing fault detection benchmark show the effectiveness of the proposed method, which achieved 98.3% accuracy (on the test dataset) while requiring substantially fewer computational resources to be trained compared to the CNN approach.
引用
收藏
页码:228 / 242
页数:15
相关论文
共 41 条
[1]  
Ba J.L., 2016, STATML16070645 ARXIV
[2]   Deep Learning: Methods and Applications [J].
Deng, Li ;
Yu, Dong .
FOUNDATIONS AND TRENDS IN SIGNAL PROCESSING, 2013, 7 (3-4) :I-387
[3]   A novel intelligent diagnosis method using optimal LS-SVM with improved PSO algorithm [J].
Deng, Wu ;
Yao, Rui ;
Zhao, Huimin ;
Yang, Xinhua ;
Li, Guangyu .
SOFT COMPUTING, 2019, 23 (07) :2445-2462
[4]  
Devlin J., 2019, CSCL181004805 ARXIV
[5]   Review of Soft Computing Models in Design and Control of Rotating Electrical Machines [J].
Dineva, Adrienn ;
Mosavi, Amir ;
Ardabili, Sina Faizollahzadeh ;
Vajda, Istvan ;
Shamshirband, Shahaboddin ;
Rabczuk, Timon ;
Chau, Kwok-Wing .
ENERGIES, 2019, 12 (06)
[6]   Study on fault diagnosis of broken rotor bars in squirrel cage induction motors: a multi-agent system approach using intelligent classifiers [J].
Drakaki, Maria ;
Karnavas, Yannis L. ;
Karlis, Athanasios D. ;
Chasiotis, Ioannis D. ;
Tzionas, Panagiotis .
IET ELECTRIC POWER APPLICATIONS, 2020, 14 (02) :245-255
[7]   A Generic Intelligent Bearing Fault Diagnosis System Using Compact Adaptive 1D CNN Classifier [J].
Eren, Levent ;
Ince, Turker ;
Kiranyaz, Serkan .
JOURNAL OF SIGNAL PROCESSING SYSTEMS FOR SIGNAL IMAGE AND VIDEO TECHNOLOGY, 2019, 91 (02) :179-189
[8]   Induction Machine Bearing Fault Detection by Means of Statistical Processing of the Stray Flux Measurement [J].
Frosini, Lucia ;
Harlisca, Ciprian ;
Szabo, Lorand .
IEEE TRANSACTIONS ON INDUSTRIAL ELECTRONICS, 2015, 62 (03) :1846-1854
[9]  
Gabor D., 1946, J. Inst. Electr. Eng. III: radio communication engineering, V93, P429, DOI DOI 10.1049/JI-3-2.1946.0074
[10]   Recent advances in convolutional neural networks [J].
Gu, Jiuxiang ;
Wang, Zhenhua ;
Kuen, Jason ;
Ma, Lianyang ;
Shahroudy, Amir ;
Shuai, Bing ;
Liu, Ting ;
Wang, Xingxing ;
Wang, Gang ;
Cai, Jianfei ;
Chen, Tsuhan .
PATTERN RECOGNITION, 2018, 77 :354-377