Fault Identification in the Stator Winding of Induction Motors Using PCA with Artificial Neural Networks

被引:25
作者
Palácios R.H.C. [1 ,2 ]
Goedtel A. [2 ]
Godoy W.F. [1 ,2 ]
Fabri J.A. [2 ]
机构
[1] Department of Electrical Engineering, São Carlos School of Engineering, University of São Paulo, Av. Trabalhador São Carlense, 400, Centro, São Carlos, 13.566-590, SP
[2] Departments of Computer and Electrical Engineering, Federal Technological University of Paraná, Av. Alberto Carazzai, 1640, Centro, Cornélio Procópio, 86.300-000, PR
基金
巴西圣保罗研究基金会;
关键词
Artificial neural network (ANN); Motor faults; Principal components analysis (PCA); Stator short circuit; Three-phase induction motor (TIM);
D O I
10.1007/s40313-016-0248-0
中图分类号
学科分类号
摘要
Three-phase induction motors are the main element of electrical into mechanical energy conversion applied in the industries. Due to its constant usage, added to adversities such as thermal, electrical and mechanical, these motors can be damaged causing unexpected process losses. Among the drawbacks of occurrences commonly presented for this equipment, approximately 37 % are related to short circuit in the stator coils. Hence, this article proposes an alternative approach for stator fault identification in induction motors through the discretization of the current signal, in the time domain, applying a variable optimization technique of principal components analysis (PCA) and artificial neural networks (ANNs) types multilayer perceptron (MLP) and radial basis function. Experimental results are presented with data gathered from an experimental workbench, considering various supply conditions and also under a wide load variation, by using the amplitude of the current signals in the time domain. Moreover, the MLP network presented the best results and the PCA technique provided a considerable reduction in the number of ANNs inputs, and in general, the classification results were comparable to the results obtained when the networks inputs considered the technique employing downsampling of 30 points to represent the current signals using half-cycle of the waveform. © 2016, Brazilian Society for Automatics--SBA.
引用
收藏
页码:406 / 418
页数:12
相关论文
共 28 条
[1]  
Arabaci H., Bilgin O., Automatic detection and classification of rotor cage faults in squirrel cage induction motor, Neural Computing and Applications, 19, 5, pp. 713-723, (2010)
[2]  
Asfani D., Muhammad A., Syafaruddin P.M., Hiyama T., Temporary short circuit detection in induction motor winding using combination of wavelet transform and neural network, Expert Systems with Applications, 39, 5, pp. 5367-5375, (2012)
[3]  
Bellini A., Filippetti F., Tassoni C., Capolino G.A., Advances in diagnostic techniques for induction machines, IEEE Transactions on Industrial Electronics, 55, 12, pp. 4109-4126, (2008)
[4]  
Bossio J.M., Angelo C.H., Bossio G.R., Self-organizing map approach for classification of mechanical and rotor faults on induction motors, Neural Computing and Applications, 23, 1, pp. 41-51, (2013)
[5]  
Buhmann M.D., Buhmann M.D., Radial Basis Functions, (2003)
[6]  
D'Angelo M.F., Palhares R.M., Takahashi R.H., Loschi R.H., Baccarini L.M., Caminhas W.M., Incipient fault detection in induction machine stator-winding using a fuzzy-bayesian change point detection approach, Applied Soft Computing, 11, 1, pp. 179-192, (2011)
[7]  
Ertunc H., Ocak H., Aliustaoglu C., Ann- and anfis-based multi-staged decision algorithm for the detection and diagnosis of bearing faults, Neural Computing and Applications, 22, 1, pp. 435-446, (2013)
[8]  
Gao X., Wang X., Zenger K., Motor fault diagnosis using negative selection algorithm, Neural Computing and Applications, 25, 1, pp. 55-65, (2014)
[9]  
Garcia-Escudero L.A., Duque-Perez O., Morinigo-Sotelo D., Perez-Alonso M., Robust condition monitoring for early detection of broken rotor bars in induction motors, Expert Systems with Applications, 38, 3, pp. 2653-2660, (2011)
[10]  
Georgoulas G., Mustafa M., Tsoumas I., Antonino-Daviu J., Climente-Alarcon V., Stylios C., Nikolakopoulos G., Principal component analysis of the start-up transient and hidden markov modeling for broken rotor bar fault diagnosis in asynchronous machines, Expert Systems with Applications, 40, 17, pp. 7024-7033, (2013)