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A Self-Organizing Learning Array System for Power Quality Classification Based on Wavelet Transform

机译:基于小波变换的电能质量分类自组织学习阵列系统

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摘要

This paper proposed a novel approach for the Power Quality (PQ) disturbances classification based on the wavelet transform and self organizing learning array (SOLAR) system. Wavelet transform is utilized to extract feature vectors for various PQ disturbances based on the multiresolution analysis (MRA). These feature vectors then are applied to a SOLAR system for training and testing. SOLAR has three advantageous over a typical neural network: data driven learning, local interconnections and entropy based self-organization. Several typical PQ disturbances are taken into consideration in this paper. Comparison research between the proposed method, the support vector machine (SVM) method and existing literature reports show that the proposed method can provide accurate classification results. By the hypothesis test of the averages, it is shown that there is no statistically significant difference in performance of the proposed method for PQ classification when different wavelets are chosen. This means one can choose the wavelet with short wavelet filter length to achieve good classification results as well as small computational cost. Gaussian white noise is considered and the Monte Carlo method is used to simulate the performance of the proposed method in different noise conditions.
机译:本文提出了一种基于小波变换和自组织学习阵列(SOLAR)系统的电能质量(PQ)干扰分类的新方法。基于多分辨率分析(MRA),利用小波变换提取各种PQ干扰的特征向量。然后将这些特征向量应用于SOLAR系统进行训练和测试。与典型的神经网络相比,SOLAR具有三个优势:数据驱动的学习,局部互连和基于熵的自组织。本文考虑了几种典型的PQ干扰。该方法与支持向量机(SVM)方法和现有文献报道之间的比较研究表明,该方法可以提供准确的分类结果。通过平均值的假设检验,表明当选择不同的小波时,所提出的PQ分类方法的性能没有统计学上的显着差异。这意味着人们可以选择具有短小波滤波器长度的小波来获得良好的分类结果和较小的计算成本。考虑了高斯白噪声,并使用蒙特卡洛方法模拟了该方法在不同噪声条件下的性能。

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