Classification of power quality events using support vector machine and S-Transform

P. K. A. Kumar, V. Vijayalakshmi, J. Karpagam, C. K. Hemapriya
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引用次数: 15

Abstract

Classification of power quality events (PQE) to enhance the power quality is a vital problem in end users. In this article a novel method to classify PQE with random white noise of zero mean based on wavelet energy change and Support Vector Machine (SVM) is presented. Here PQE waveforms are disintegrated into 10 layers by db4-wavelet with multi-resolution. Energy Changes (EC) of every level between PQE waveforms and standard voltage waveforms is drawn out as eigenvectors. Principal Component Analysis (PCA) is implemented to decrease the dimensions of eigenvectors and gives the main structure of the matrix, which creates new feature vectors and these vectors separated into two sets, namely training set and testing set. The method of cross-validation is adopted for the training set to identify the optimum parameters adaptively and build the training model also the testing set is replaced into the training model for testing. In conclusion the suggested method accuracy is compared with S-Transform (ST) based PQE classification to prove the accuracy of classification. The classification accuracy of SVM is great and having strong ability to resist noise, speedy classification of PQE.
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基于支持向量机和s变换的电能质量事件分类
对电能质量事件进行分类以提高电能质量是终端用户面临的一个重要问题。提出了一种基于小波能量变化和支持向量机的零均值随机白噪声PQE分类方法。利用db4-小波多分辨率将PQE波形分解为10层。将PQE波形与标准电压波形之间各电平的能量变化(EC)绘制为特征向量。采用主成分分析(PCA)对特征向量进行降维,给出矩阵的主结构,生成新的特征向量,并将这些特征向量分为训练集和测试集两组。对训练集采用交叉验证的方法自适应识别最优参数,建立训练模型,并将测试集替换为训练模型进行测试。最后,将该方法与基于S-Transform (ST)的PQE分类方法进行了精度比较,证明了该方法的分类精度。支持向量机分类精度高,抗噪声能力强,分类速度快。
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