Optimized Complex Power Quality Classifier Using One vs. Rest Support Vector Machines

HTML  XML Download Download as PDF (Size: 964KB)  PP. 568-587  
DOI: 10.4236/epe.2017.910040    1,009 Downloads   2,157 Views  Citations

ABSTRACT

Nowadays, power quality issues are becoming a significant research topic because of the increasing inclusion of very sensitive devices and considerable renewable energy sources. In general, most of the previous power quality classification techniques focused on single power quality events and did not include an optimal feature selection process. This paper presents a classification system that employs Wavelet Transform and the RMS profile to extract the main features of the measured waveforms containing either single or complex disturbances. A data mining process is designed to select the optimal set of features that better describes each disturbance present in the waveform. Support Vector Machine binary classifiers organized in a “One Vs Rest” architecture are individually optimized to classify single and complex disturbances. The parameters that rule the performance of each binary classifier are also individually adjusted using a grid search algorithm that helps them achieve optimal performance. This specialized process significantly improves the total classification accuracy. Several single and complex disturbances were simulated in order to train and test the algorithm. The results show that the classifier is capable of identifying >99% of single disturbances and >97% of complex disturbances.

Share and Cite:

De Yong, D. , Bhowmik, S. and Magnago, F. (2017) Optimized Complex Power Quality Classifier Using One vs. Rest Support Vector Machines. Energy and Power Engineering, 9, 568-587. doi: 10.4236/epe.2017.910040.

Copyright © 2024 by authors and Scientific Research Publishing Inc.

Creative Commons License

This work and the related PDF file are licensed under a Creative Commons Attribution 4.0 International License.