应用小波能量熵和LS-SVM对电能质量扰动进行分类

Ming Zhang, Kaicheng Li
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引用次数: 4

摘要

电能质量(PQ)信号通常由熟练的工程师在时域内进行分析。然而,PQ干扰在原始时域信号中并不总是很明显。傅里叶分析将信号转换到频域,但缺点是时间特征不明显。小波分析同时提供时间和频率信息,可以克服这一限制。本文对PQ信号进行了检测。PQ信号的分析分为两个阶段:特征提取和干扰分类。为了从PQ信号中提取特征,首先应用小波包变换(WPT),构造相对小波对数能量熵的特征向量;将最小二乘支持向量机(LS-SVM)应用于这些特征向量,对PQ干扰进行分类。仿真结果表明,该方法具有较高的识别率,适用于PQ干扰监测与分类系统。
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The application of wavelet energy entropy and LS-SVM to classify power quality disturbances
The power quality (PQ) signals are traditionally analyzed in the time-domain by skilled engineers. However, PQ disturbances may not always be obvious in the original time-domain signal. Fourier analysis transforms signals into frequency domain, but has the disadvantage that time characteristics will become unobvious. Wavelet analysis, which provides both time and frequency information, can overcome this limitation. In this paper, PQ signals were examined. There were two stages in analyzing PQ signals: feature extraction and disturbances classification. To extract features from PQ signals, wavelet packet transform (WPT) was first applied and feature vectors of relative wavelet log-energy entropy were constructed. Least square support vector machines (LS-SVM) was applied to these feature vectors to classify PQ disturbances. Simulation results show that the proposed method possesses high recognition rate, so it is suitable to the monitoring and classifying system for PQ disturbances.
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