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Title

Accurate Fault Location of EHV Teed Feeder using RBFNN

Author

Eyada A. J. Alanzi, Mohd Zaid Abdullah, Nor Ashidi Mat Isa

Citation

Vol. 7  No. 12  pp. 282-286

Abstract

This paper presents a new technique of accurate fault location system using artificial neural networks (ANN) for EHV teed feeder transmission lines. This technique utilizes voltage and current waveforms from one side of the three branches of the network to determine the accurate fault location. Variety of fault conditions are analyzed, trained and tested by the radial basis function neural network (RBFNN) using MATLAB. Fault detection, branch determination, fault classification and fault location are practiced. Results are obtained from training and testing of RBFNN and using ATP-EMTP for simulation of faulted data from a 500KV teed feeder transmission system.

Keywords

Fault locator, Teed feeders, RBFNN

URL

http://paper.ijcsns.org/07_book/200712/20071243.pdf