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Power quality disturbances classification Based on multi-class classification SVM

机译:基于多分类SVM的电能质量扰动分类

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This paper used the multi-class classification for support vector machine and combined with the good amplitude-frequency characteristic of Fourier transform,the good time-frequency characteristics of wavelet transform and the excellent statistical learning ability of support vector machine to make the classification and recognition to the disturbances of power quality. Mathematical modeling for the 8 kinds of common power quality disturbances, namely voltage swell, voltage sag, voltage interruption, harmonic, voltage fluctuation, transient oscillation , transient pulse and frequency deviation, and then use Fourier transform and wavelet transform to extract the characteristics of the waveform of the generated samples, and input the characteristic value to the osu_svm and do the quality disturbances Multi-class Classification. The example shows that this method has a high recognition accuracy, a few training samples and training time is short, a good real-time performance, and is not sensitive to noise, etc. It is an effective method for Power quality disturbances classification.
机译:本文采用支持向量机的多类分类方法,结合傅立叶变换的良好的幅频特性,小波变换的时频特性和良好的支持向量机统计学习能力,进行分类识别。对电能质量的干扰。针对8种常见电能质量扰动进行数学建模,即电压骤升,电压骤降,电压中断,谐波,电压波动,瞬态振荡,瞬态脉冲和频率偏差,然后使用傅立叶变换和小波变换提取特征生成的样本的波形,并将特征值输入到osu_svm并进行质量扰动多类分类。实例表明,该方法识别精度高,训练样本少,训练时间短,实时性好,对噪声不敏感等。是一种电能质量扰动分类的有效方法。

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