A Neural Approach to Evaluate the Effect of Lightning in Power Transformers

André Nunes De Souza, UNESP
Maria Goretti Zago, UNESP
Osvaldo R. Saavedra, Federal University of Maranhão
Caio Oba Ramos, UNESP
Kleber Ferraz, UNESP

Abstract

This paper proposes the application of computational intelligence techniques to assist complex problems concerning lightning in transformers. In order to estimate the currents related to lightning in a transformer, a neural tool is presented. ATP has generated the training vectors. The input variables used in Artificial Neural Networks (ANN) were the wave front time, the wave tail time, the voltage variation rate and the output variable is the maximum current in the secondary of the transformer. These parameters can define the behavior and severity of lightning. Based on these concepts and from the results obtained, it can be verified that the overvoltages at the secondary of transformer are also affected by the discharge waveform in a similar way to the primary side. By using the tool developed, the high voltage process in the distribution transformers can be mapped and estimated with more precision aiding the transformer project process, minimizing empirics and evaluation errors, and contributing to minimize the failure rate of transformers.

Submitted: October 24, 2008 · Accepted: September 4, 2009 · Published: September 19, 2009

Recommended Citation

De Souza, André Nunes; Zago, Maria Goretti; Saavedra, Osvaldo R.; Ramos, Caio Oba; and Ferraz, Kleber (2009) "A Neural Approach to Evaluate the Effect of Lightning in Power Transformers," International Journal of Emerging Electric Power Systems: Vol. 10 : Iss. 4, Article 8.
DOI: 10.2202/1553-779X.2095
Available at: http://www.bepress.com/ijeeps/vol10/iss4/art8

 
 
 
 

ISSN: 1553-779X ©1999-2009 The Berkeley Electronic Press™ All rights reserved.

To submit, subscribe, recommend this journal to your library, or sign up for email alerts, please visit: http://www.bepress.com/ijeeps