Title of article :
Accurate Fault Classification of Transmission Line Using Wavelet Transform and Probabilistic Neural Network
Author/Authors :
Mollanezhad Heydar-Abadi ، M. نويسنده Semnan University Mollanezhad Heydar-Abadi , M. , Akbari Foroud، A. نويسنده Department of Electrical Engineering, Semnan University, Semnan, Iran. ,
Issue Information :
فصلنامه با شماره پیاپی 0 سال 2013
Pages :
12
From page :
177
To page :
188
Abstract :
Fault classification in distance protection of transmission lines, with considering the wide variation in the fault operating conditions, has been very challenging task. This paper presents a probabilistic neural network (PNN) and new feature selection technique for fault classification in transmission lines. Initially, wavelet transform is used for feature extraction from half cycle of post-fault three phase currents at one end of line. In the proposed method three classifiers corresponding with three phases are used which fed by normalized particular features as wavelet energy ratio (WER) and ground index (GI). The PNNs are trained to provide faulted phase selection in different ten fault types. Finally, logic outputs of classifiers and GI identify the fault type. The feasibility of the proposed algorithm is tested on transmission line using PSCAD/EMTDC software. Variation of operating conditions in train cases is limited, but it is wide for test cases. Also, quantity of the test data sets is larger than the train data sets. The results indicate that the proposed technique is high speed, accurate and robust for a wide variation in operating conditions and noisy environments.
Journal title :
Iranian Journal of Electrical and Electronic Engineering(IJEEE)
Serial Year :
2013
Journal title :
Iranian Journal of Electrical and Electronic Engineering(IJEEE)
Record number :
1500435
Link To Document :
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