Emerging time and frequency domain techniques for power quality disturbances analysis

P. Nalini, K. Selvi
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Abstract

Recognition of power quality events by analyzing voltage waveform disturbances is a very important task for power system monitoring. This paper presents a novel approach for the recognition and classification of power quality disturbances using wavelet transform and support vector machine. The proposed method employs wavelet transform techniques to extract the most important and significant features from details and approximation waves. The obtained severable feature vectors are used for training the support vector machines to classify the power quality disturbances. Five types of disturbances are considered for classification. The simulation results reveal that the combination of wavelet transform and SVM in time and frequency domain can effectively classify different PQ events.
电能质量扰动分析的时域和频域新技术
通过分析电压波形扰动来识别电能质量事件是电力系统监测的一项重要任务。提出了一种基于小波变换和支持向量机的电能质量扰动识别与分类新方法。该方法利用小波变换技术从细节和近似波中提取最重要和最重要的特征。得到的可分割特征向量用于训练支持向量机对电能质量扰动进行分类。考虑了五种类型的干扰进行分类。仿真结果表明,将小波变换与支持向量机在时域和频域的结合可以有效地对不同的PQ事件进行分类。
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