fault classification in power systems using emd and svm

fault classification in power systems using emd and svm

;N. Ramesh Babu;B. Jagan Mohan
der pharmacia lettre 2017 Vol. 8 pp. 103-111
143
babu2017ainfault

Abstract

In recent years, power quality has become the main concern in power system engineering. Classification of power system faults is the first stage for improving power quality and ensuring the system protection. For this purpose a robust classifier is necessary. In this paper, classification of power system faults using Empirical Mode Decomposition (EMD) and Support Vector Machines (SVMs) is proposed. EMD is used for decomposing voltages of transmission line into Intrinsic Mode Functions (IMFs). Hilbert Huang Transform (HHT) is used for extracting characteristic features from IMFs. A multiple SVM model is introduced for classifying the fault condition among ten power system faults. Algorithm is validated using MATLAB/SIMULINK environment. Results demonstrate that the combination of EMD and SVM can be an efficient classifier with acceptable levels of accuracy.

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ID: 170772
Ref Key: babu2017ainfault
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170772
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10.1016/j.asej.2015.08.005
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