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Partial Discharge Classification Through Wavelet Packets of Their Modulated Ultrasonic Emission

Research Abstract
Locating and classifying partial discharge due to sharp-edges, polluted insulators and loose-contacts in power systems significantly reduce the outage time, impending failure, equipment damage and supply interruption. In this paper, based on wavelet packets features of their modulated ultrasound emissions, an efficient novel scheme for neural network recognition of partial discharges is proposed. The employed preprocessing, wavelet features and near-optimally sized network led to successful classification up to 100%, particularly when longer duration signals are processed.
Research Authors
M. Abdel-Salam, Y. Hasan, M. Sayed and S. Abdel~Sattar
Research Department
Research Journal
Proc. Of the 5th International Conference on Intelligent Data Engineering and Automated Learning - Ideal 2004, pp. 540-545, Exeter, England, U.K
Research Pages
NULL
Research Publisher
NULL
Research Rank
3
Research Vol
NULL
Research Website
NULL
Research Year
2004