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http://dx.doi.org/10.5391/IJFIS.2009.9.3.178

Fault diagnostic system for rotating machine based on Wavelet packet transform and Elman neural network  

Youk, Yui-su (College of Engineering, School of Electronics & Information Engineering, Kunsan National University)
Zhang, Cong-Yi (College of Engineering, School of Electronics & Information Engineering, Kunsan National University)
Kim, Sung-Ho (College of Engineering, School of Electronics & Information Engineering, Kunsan National University)
Publication Information
International Journal of Fuzzy Logic and Intelligent Systems / v.9, no.3, 2009 , pp. 178-184 More about this Journal
Abstract
An efficient fault diagnosis system is needed for industry because it can optimize the resources management and improve the performance of the system. In this study, a fault diagnostic system is proposed for rotating machine using wavelet packet transform (WPT) and elman neural network (ENN) techniques. In most fault diagnosis for mechanical systems, WPT is a well-known signal processing technique for fault detection and identification. In previous work, WPT can improve the continuous wavelet transform (CWT) used over a longer computing time and huge operand. It can also solve the frequency-band disagreement by discrete wavelet transform (DWT) only breaking up the approximation version. In the experimental work, the extracted features from the WPT are used as inputs in an Elman neural network. The results show that the scheme can reliably diagnose four different conditions and can be considered as an improvement of previous works in this field.
Keywords
fault diagnosis system; wavelet packet transform; Elman neural network;
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1 F. Hlawatsch and G. F. Boudreaux-Bartels, "Linear and quadratic time frequency signal representations," lEEE Signal Processing Mag. vol. 9, pp. 21-67, Apr. 1992   DOI   ScienceOn
2 H. Zheng, Z, Li, & X, Chen, "Gear fault diagnosis based on continuous wavelet transfoml.", Mechanical Syslem and Signal Processing, vol. 16, pp. 447-457 2002   DOI   ScienceOn
3 E. Ortiz, & V. Syrmos, "Support vector machines and wavelet packet analysis for fau lt detection and identification", IJCNN 06. lnlernalional Joint Conference on Neural Networks, pp. 3449- 3456, 2006
4 X. Z. Gao and S. J . Ovaska, "Genetic algorithm traning of Elman neural network in motor fault detection", Neural Compuling and Applicalions, vol. 11, no. 1, pp. 37-44, 2002   DOI   ScienceOn
5 C. Li , Z. Song & P. Li, "Bearing fault detection via wavelet packet transform and rough set ttheory." Proceedings of Fifth World Congress on lnlelligenl Control and Aulomalion, vol. 2, pp. 1663-1666, 2004
6 C.J. Li , & J. Ma,. "Wavelet decomposition of vibrations for detection of bearing-localized defects." NDT&E Inlernalional, vol. 30, pp. 143-149.1997   DOI   ScienceOn
7 C. K. Sung, H. M. Tai, & C. W. Chen, "Locating defects of a gear system by the technique of wavelet transform.", Mechanism and Machine Theory, vol. 35, pp. 1169-1182. 2000   DOI   ScienceOn
8 G. G. Yen & K. C. Lin, "Wavelet packet feature extraction for vibration monitoring", IEEE Transactions on Industrial Electronics, vol. 47, pp. 650-667, 2000   DOI   ScienceOn
9 http ://www.bearcave.com/misVmisl_tech/wavelets/packfreq/index.html
10 O. Rioul and M. Vetterli, "Wavelets and signal processing," IEEE Signal Processing Mag. vol. 8, pp.14-38, Oct. 1991