Data-Driven Inter-Turn Short Circuit Fault Detection in Induction Machines

Inter-turn short circuit (ITSC) fault is one of the critical electrical faults in induction motors that affects the reliability of many industrial applications. Although the use of data-driven fault detection techniques have gained much interest, the main deterrent in using these approaches in detecting ITSC faults is in the generalization and robustness of the diagnosis. In this paper, a data-driven on-line fault detection framework, incorporated with multi-feature extraction/selection and multi-classifier ensemble is proposed, capable of detecting ITSC faults in induction motors (IMs) that subjected to variable operating conditions. By using the synchronous time series signals collected from the machines, multiple feature extraction/selection is explored to find the sensitive faulty features, and the different types of classification strategies is used to increase the diversity of single based models. With the increased diversity of the base learners, the fault detection accuracy is expected to be enhanced and the robustness can be guaranteed. The framework was implemented and tested using real data collected from a designed test bed, with the experimental results showing the effectiveness of the framework in detecting ITSC faults in IMs.

[1]  Ah Chung Tsoi,et al.  Universal Approximation Using Feedforward Neural Networks: A Survey of Some Existing Methods, and Some New Results , 1998, Neural Networks.

[2]  Surya Santoso,et al.  Analytical Approach to Estimate Feeder Accommodation Limits Based on Protection Criteria , 2016, IEEE Access.

[3]  Isabelle Guyon,et al.  An Introduction to Variable and Feature Selection , 2003, J. Mach. Learn. Res..

[4]  Gérard Champenois,et al.  New Expressions of Symmetrical Components of the Induction Motor Under Stator Faults , 2013, IEEE Transactions on Industrial Electronics.

[5]  Stéphane Caux,et al.  Kalman-Filter-Based Indicator for Online Interturn Short Circuits Detection in Permanent-Magnet Synchronous Generators , 2015, IEEE Transactions on Industrial Electronics.

[6]  Chee Peng Lim,et al.  Condition monitoring of induction motors: A review and an application of an ensemble of hybrid intelligent models , 2014, Expert Syst. Appl..

[7]  Pedro Larrañaga,et al.  A review of feature selection techniques in bioinformatics , 2007, Bioinform..

[8]  Priya K. Dagadkar,et al.  Monitoring of Power Transformer Incipient Fault , 2015 .

[9]  M. Boussak,et al.  Open phase faults detection in PMSM drives based on current signature analysis , 2010, The XIX International Conference on Electrical Machines - ICEM 2010.

[10]  Bong-Hwan Kwon,et al.  Online Diagnosis of Induction Motors Using MCSA , 2006, IEEE Transactions on Industrial Electronics.

[11]  Yong Guan,et al.  Rolling Element Bearing Fault Diagnosis Using Improved Manifold Learning , 2017, IEEE Access.

[12]  J. Sottile,et al.  Condition monitoring of stator windings in induction motors. I. Experimental investigation of the effective negative-sequence impedance detector , 2002 .

[13]  A. Grossmann,et al.  DECOMPOSITION OF HARDY FUNCTIONS INTO SQUARE INTEGRABLE WAVELETS OF CONSTANT SHAPE , 1984 .

[14]  H Hermansky,et al.  Perceptual linear predictive (PLP) analysis of speech. , 1990, The Journal of the Acoustical Society of America.

[15]  Chih-Jen Lin,et al.  A Practical Guide to Support Vector Classication , 2008 .

[16]  Rastko Zivanovic,et al.  Condition Monitoring of an Induction Motor Stator Windings Via Global Optimization Based on the Hyperbolic Cross Points , 2015, IEEE Transactions on Industrial Electronics.

[17]  Shaohui Liu,et al.  Bearing Fault Diagnosis Using Fully-Connected Winner-Take-All Autoencoder , 2018, IEEE Access.

[18]  Corinna Cortes,et al.  Support-Vector Networks , 1995, Machine Learning.

[19]  Feng Wu,et al.  Automatic fault feature extraction of mechanical anomaly on induction motor bearing using ensemble super-wavelet transform , 2015 .

[20]  Rolf Isermann,et al.  Model-based fault-detection and diagnosis - status and applications , 2004, Annu. Rev. Control..

[21]  Chee Kheong Siew,et al.  Extreme learning machine: Theory and applications , 2006, Neurocomputing.

[22]  Stéphane Mallat,et al.  A Theory for Multiresolution Signal Decomposition: The Wavelet Representation , 1989, IEEE Trans. Pattern Anal. Mach. Intell..

[23]  A.J. Marques Cardoso,et al.  Stator winding fault diagnosis in three-phase synchronous and asynchronous motors, by the extended Park's vector approach , 2000, Conference Record of the 2000 IEEE Industry Applications Conference. Thirty-Fifth IAS Annual Meeting and World Conference on Industrial Applications of Electrical Energy (Cat. No.00CH37129).

[24]  Hongming Zhou,et al.  Extreme Learning Machine for Regression and Multiclass Classification , 2012, IEEE Transactions on Systems, Man, and Cybernetics, Part B (Cybernetics).

[25]  Kurt Hornik,et al.  Approximation capabilities of multilayer feedforward networks , 1991, Neural Networks.

[26]  R. Brereton,et al.  Support vector machines for classification and regression. , 2010, The Analyst.

[27]  Slim Tnani,et al.  Diagnosis by parameter estimation of stator and rotor faults occurring in induction machines , 2006, IEEE Transactions on Industrial Electronics.

[28]  Khaled Jelassi,et al.  An Effective Neural Approach for the Automatic Location of Stator Interturn Faults in Induction Motor , 2008, IEEE Transactions on Industrial Electronics.

[29]  Chrysostomos D. Stylios,et al.  Bearing fault detection based on hybrid ensemble detector and empirical mode decomposition , 2013 .

[30]  G. S. Yadava,et al.  Applications of artificial intelligence techniques for induction machine stator fault diagnostics: review , 2003, 4th IEEE International Symposium on Diagnostics for Electric Machines, Power Electronics and Drives, 2003. SDEMPED 2003..

[31]  Humberto Henao,et al.  A frequency-domain detection of stator winding faults in induction machines using an external flux sensor , 2002 .

[32]  Gérard-André Capolino,et al.  Wound-Rotor Induction Generator Inter-Turn Short-Circuits Diagnosis Using a New Digital Neural Network , 2013, IEEE Transactions on Industrial Electronics.

[33]  Guillermo R. Bossio,et al.  Online Model-Based Stator-Fault Detection and Identification in Induction Motors , 2009, IEEE Transactions on Industrial Electronics.

[34]  Luis Romeral,et al.  Fault Detection in Induction Machines Using Power Spectral Density in Wavelet Decomposition , 2008, IEEE Transactions on Industrial Electronics.

[35]  Steven X. Ding,et al.  A Review on Basic Data-Driven Approaches for Industrial Process Monitoring , 2014, IEEE Transactions on Industrial Electronics.

[36]  Ron Kohavi,et al.  Wrappers for Feature Subset Selection , 1997, Artif. Intell..

[37]  Geoffrey Zweig,et al.  Advances in Large Vocabulary Continuous Speech Recognition , 2004, Adv. Comput..

[38]  Thomas G. Dietterich Multiple Classifier Systems , 2000, Lecture Notes in Computer Science.