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Hybrid signal processing and machine intelligence techniques for detection, quantification and classification of power quality disturbances

机译:混合信号处理和机器智能技术,用于电能质量扰动的检测,量化和分类

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摘要

This paper presents an advanced signal processing technique known as S-transform (ST) to detect and quantify various power quality (PQ) disturbances. ST is also utilized to extract some useful features of the disturbance signal. The excellent time-frequency resolution characteristic of the ST makes it an attractive candidate for analysis of power system disturbance signals. The number of features required in the proposed approach is less than that of the wavelet transform (WT) for identification of PQ disturbances. The features extracted by using ST are used to train a support vector machine (SVM) classifier for automatic classification of the PQ disturbances. Since the proposed methodology can reduce the features of disturbance signal to a great extent without losing its original property, it efficiently utilizes the memory space and computation time of the processor. Eleven types of PQ disturbances are considered for the classification purpose. The simulation results show that the combination of ST and SVM can effectively detect and classify different PQ disturbances.
机译:本文提出了一种称为S变换(ST)的先进信号处理技术,用于检测和量化各种电能质量(PQ)干扰。 ST还用于提取干扰信号的某些有用特征。 ST出色的时频分辨率特性使其成为分析电力系统干扰信号的诱人候选。所提出的方法所需的特征数量少于用于识别PQ干扰的小波变换(WT)。使用ST提取的特征用于训练支持向量机(SVM)分类器,以对PQ干扰进行自动分类。由于所提出的方法可以在不失去其原始特性的情况下极大地减少干扰信号的特征,因此可以有效地利用处理器的存储空间和计算时间。为了分类,考虑了11种PQ干扰。仿真结果表明,ST和SVM的组合可以有效地检测和分类不同的PQ干扰。

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