Automatic detection of voltage notches using support vector machine

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Abstract

This paper presents a comprehensive framework for voltage notch analysis and an automatic method for notch detection using a nonlinear support vector machine (SVM) classifier. A comprehensive simulation of the notch disturbance has been conducted to generate a diverse database. Based on domain knowledge and properties of power quality disturbances (PQDs), a set of characteristic features is extracted. After feature extraction, a set of most descriptive features has been selected with decision tree (DT) algorithm, and a nonlinear SVM classifier has been trained. Finally, the detection efficiency of the trained model is presented and discussed.

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APA

Qi, R., Zyabkina, O., Martinez, D. A., & Meyer, J. (2021). Automatic detection of voltage notches using support vector machine. Renewable Energy and Power Quality Journal, 19, 528–533. https://doi.org/10.24084/repqj19.337

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