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Prof. Sayed Abo-Elsood Sayed Ward :: Publications:

Title:
“Identification of Contaminating Particle Geometry in a Co-axial Configuration Using Trichel Pulse Characteristics” CEIDP 2013, Shenzhen, China, 20-23 October 2013.
Authors: M. M. El Bahy, S. A. Ward, R. Morsi and M. Badawi,
Year: 2013
Keywords: contaminating Particle, Trichel Pulse Characteristics
Journal: 2013 Annual Report Conference on Electrical Insulation and Dielectric Phenomena
Volume: Not Available
Issue: 978-1-4799-2597-1/13/$31.00 ©2013 IEEE
Pages: pp. 895 - 900
Publisher: 2013 Annual Report Conference on Electrical Insulation and Dielectric Phenomena
Local/International: International
Paper Link: Not Available
Full paper Sayed Abo-Elsood Sayed Ward_mohamed badawi ahmed_Identification of Contaminating Particle Geometry in.pdf
Supplementary materials Not Available
Abstract:

Abstract- A method is presented for detecting and identifying the shape and size of a contaminating metallic particle in gas insulated system (GIS). A fixed particle–initiated negative corona in air insulated co-axial cylindrical configuration is investigated at a voltage slightly above the corona onset level. The characteristics of the negative corona pulses (Trichel pulses) are calculated by mathematical modeling the process taking place during the negative corona discharge. An experimental set-up is built up to measure the Trichel pulse characteristics and to check the accuracy of the present calculation. The calculated values of corona Trichel pulse amplitudes and repetition rates agree well with the measured values. So, the Trichel pulse characteristics are calculated for different particle sizes and shapes. These data of pulses are used as a bias for designing and training the artificial neural network technique (ANN). For earlier detection of insulation defect, the Trichel pulse characteristics are measured and then given as an input data to the trained ANN. Then, we could identify the particle shape and size.

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