1 |
S. Seker and E. Ayaz, 'Feature extraction related to bearing damage in electric motors by wavelet analysis,' Journal of the Franklin Institute, 2003
DOI
ScienceOn
|
2 |
R. O. Duda, P. E. Hart, and D. C. Stork, Pattern Classification, JOHN WILEY &SONS, Second Edition, 2002
|
3 |
Z. Ye, R. Wu, and A. Sadeghian, 'Current Signature Analysis of Induction Motor Mechanical Faults by Wavelet Packet Decomposition,' IEEE Trans. on Industrial Electronics, vol. 50, no. 6, December, 2003
DOI
ScienceOn
|
4 |
M. Haji and H. A. Toliyat, 'Pattern recognition-a technique for induction machines rotor broken bar detection,' IEEE Trans. on Energy Conversion, Vol. 16, Issue 4, pp. 312-317, 2001
DOI
ScienceOn
|
5 |
A. M. Trzynadlowski and E. Ritchie, 'Comparative investigation of diagnostic media for induction motors : a case of rotor cage faults,' IEEE Trans. on Industrial Electronics, Vol. 47, Issue 5, pp. 1092-1099, 2000
DOI
ScienceOn
|
6 |
Z. Zhang, Z. Ren, and W. Huang, 'A Novel Detection Method of Motor Broken Rotor Bars Based on Wavelet Ridge,' IEEE Trans. On Energy Conversion, Vol. 18, no. 3, September, 2003
DOI
ScienceOn
|
7 |
W. T. Thomson and M. Fenger, 'Current signature analysis to detect induction motor faults.' IEEE Ind. Applicat. Magazine, pp. 26-34, July/August 2001
DOI
ScienceOn
|
8 |
M. Nejjari and II. Benbouzid, 'Monitoring and diagnosis of induction motors electrical faults using a current Park's vector pattern learning approach,' IEEE Trans. Ind. Applical., Vol. 36. no.3, pp. 730-735 2000
DOI
ScienceOn
|
9 |
Zidani et al., 'Induction motor stator faults diagnosis by a current Concordia pattern-based fuzzy decision system,' IEEE Trans. Energy Conversion, vol. 18, no. 4, pp. 469-475, December 2004
DOI
ScienceOn
|
10 |
S. Wu and T. Chow, 'Induction machine fault detection using SOM-based RBF neural network.' IEEE Trans. Ind. Elect., vol. 51, no. 1, pp. 183-194, 2004
DOI
ScienceOn
|
11 |
L. V. Ganyun, H. Cheng, H. Zhai, and L. Dong, 'Fault diagnosis of power transformer based on multi-layer SVM classifier.' Electrical Power Systems Research, Vol. 75, pp. 9-15. 2005
DOI
ScienceOn
|
12 |
C.-Chang and C.-J. Lin, (2001), LIBSVM a library for support vector machines, Software available: http://www.csie. ntu.edu.tw/~cjlin/libsvm
|
13 |
A. Widodo, B.-S. Yang, and T. Han, 'Combination of independent component analysis and support vector machines for intelligent faults diagnosis of induction motors,' Expert Systems with Applications. In Press, Corrected Proof, Available online 4, Jan. 2006
|
14 |
Q. Hu, Z. He, Z. Zhang, and Y. Zi, 'Fault diagnosis of rotating machinery based on improved wavelet package transform and SVMs ensemble,' Mechanical Systems and Signal Processing, 2006
DOI
ScienceOn
|
15 |
G. R. Bossio, C. H. De Angelo, G. O. Garcia, J. A. Solsona, and M. I. Valla, 'Effects of rotor bar and end-ring faults over the signals of a position estimation strategy for induction motors,' IEEE Trans. Industry Applications, vol. 41, no. 4, pp. 1005-1011, 2005
DOI
ScienceOn
|
16 |
V. N. Vapnik, The Nature of Statistical Learning Theory. New York. Springer, 1999
|