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Stator inter-turn fault detection of an induction motor using neuro-fuzzy techniques

Treść / Zawartość
Identyfikatory
Warianty tytułu
Języki publikacji
EN
Abstrakty
EN
Motivated by the superior performances of neural networks and neuro-fuzzy approaches to fault detection of a single phase induction motor, this paper studies the applicability these two approaches for detection of stator inter-turn faults in a three phase induction motor. Firstly, the paper develops an adaptive neural fuzzy inference system (ANFIS) detection strategy and then compares its performance with that of using a multi layer perceptron neural network (MLP NN) applied to stator inter-turn fault detection of a three phase induction motor. The fault location process is based on the monitoring the three phase shifts between the line current and the phase voltage of the induction machine.
Rocznik
Strony
363--376
Opis fizyczny
Bibliogr. 20 poz., rys., wzory
Twórcy
autor
autor
  • Department of Electrical Engineering, National Institute of Technology, Rourkela-769008, India
Bibliografia
  • [1] M. ARKAN, D. KOSTIC-PEROVICand P.J. UNSWORTH: Modelling and simulation of induction motors with inter-turn faults for diagnosis. Electric Power Systems Research, 75 (2005), 57-66.
  • [2] S. BACHIR, S. TNANI, J.-C. TRIGEASSOU and G. CHAMPENOIS: Diagnosis by parameter estimation of stator and rotor faults occurring in induction machines. IEEE Trans. Ind. Electron., 53(3), (2006), 963-973.
  • [3] M. RIERA-GUASP, J. ANTONINO-DAVIU, J. ROGER-FOLCH and M.P. MOLINA: The use of the wavelet approximation signal as a tool for the diagnosis and quantification of rotor bar failures. IEEE Trans. Ind. Appl., 44(3), (2008), 716-726.
  • [4] A. M. DA SILVA, R. J. POVINELLI and N. A.O. DEMERDASH: Induction machine broken bar and stator short-circuit fault diagnostics based on three-phase stator current envelope. IEEE Trans. Ind. Electron., 55(3), (2008), 1310-1318.
  • [5] G. G. YEN and K. LIN:Wavelet packet feature extraction for vibration monitoring. IEEE Trans. Ind. Electron., 47(3), (2000), 650-667.
  • [6] M. E. H. BENBOUZID ET AL.: Induction motors’ detection and localization using stator current advanced signal processing techniques. IEEE Trans. Power Electron., 14(1), (1999), 14-22.
  • [7] T. W. S. CHOW and S. HAI: Induction machine fault diagnostic analysis with wavelet technique. IEEE Trans. Ind. Electron., 51(3), (2004), 558-565.
  • [8] W. THOMSON and M. FENGER: Current signature analysis to detect induction motor faults. IEEE Ind. Appl. Mag., 7(4), (2001), 26-34.
  • [9] S. NANDI and H. A. TOLYAT: Novel frequency domain based technique to detect incipient stator inter-turn faults in induction machines. In Conf. Rec. IEEE IAS Annu. Meeting, (2000), 367-374.
  • [10] N. ARTHUR and J. PENMAN: Induction machine condition monitoring with higher order spectra. IEEE Trans. Ind. Electron., 47(5), (2000), 1031-1041.
  • [11] M. B. K. BOUZID, G. CHAMPENOIS, N. M. BELLAAJ, L. SIGNAC and K. JELASSI: An effective neural approach for the automatic location of stator interturn faults in induction motor. IEEE Trans. Ind. Electron., 55(12), (2008), 4277-4289.
  • [12] P. V. J. RODRÍGUEZ and A. ARKKIO: Detection of stator winding fault in induction motor using fuzzy logic. Applied Soft Computing, 8(2), (2008), 1112-1120.
  • [13] S. BACHIR, S. TNANI, J.-C. TRIGEASSOU and G. CHAMPENOIS: Diagnosis by parameter estimation of stator and rotor faults occurring in induction machines. IEEE Trans. Ind. Electron., 53(3), (2006), 963-973.
  • [14] M. S. BALLAL, Z. J. KHAN, H. M. SURYAWANSHI and R. L. SONOLIKAR: Adaptive neural fuzzy inference system for the detection of inter-turn insulation and bearing wear faults in induction motor. IEEE Trans. Ind. Electron., 54(1), (2007), 250-258.
  • [15] M. AWADALLAH and M. MORCOS: Application of AI tools in fault diagnosis of electrical machines and drives U - An overview. IEEE Trans. Energy Convers., 18(2), (2003), 245-251.
  • [16] V. URAIKUL, C.W. CHAN and P. TONIWACHWUTHIKUL: Artificial intelligence for monitoring and supervisory control of process systems. Eng. Appl. Artif. Intell., 20(2), 2007, 115-131.
  • [17] F. FILIPPETTI, G. FRANCESCHINI, C. TASSONI and P. VAS: AI techniques In induction machines diagnosis including the speed ripple effect. IEEE Trans. Ind. Appl., 34(1), (2008), 98-108.
  • [18] F. FILIPPETTI, G. FRANCESCHINI, C. TASSONI and P. VAS: Recent developments of induction motor drives fault diagnosis using AI techniques. IEEE Trans. Ind. Electron., 47(5), (2000), 994-1003.
  • [19] S. J. HONG and G. S. MAY: Neural-network-based sensor fusion of optical emission and mass spectroscopy data for real-time fault detection in reactive ion etching. IEEE Trans. Ind. Electron., 52(4), (2005), 1063-1072.
  • [20] S. ALTUG, M. Y. CHOW and H. J. TRUSSELL: Fuzzy inference system implemented on neural architectures for motor fault detection and diagnosis. IEEE Trans. Ind. Electron., 46(6), (2008), 1069-1079.
Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-article-BSW3-0073-0015
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