Diagnosis of PQ Disturbances using Local mean decomposition based SVD entropy and modified K-means clustering

Lipsa Priyadarshini, E. N. Prasad, P. Dash
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引用次数: 0

Abstract

This paper presents a novel approach for diagnosing and classifying frequently encountered islanding and power quality (PQ) disturbances in a multiple distributed generation (DG) system. To obtain noise-decomposed signals, the Local mode decomposition (LMD) technique is initially applied that results in a series of product functions (PFs). The selection of the sensitive PF component consisting of the most sensitive information related to the type of fault is determined by the singular value decomposition (SVD) based entropy method. Further to extract the underlying physical characteristics from the selected PF components, two feature extraction indices (FEIs) i.e. energy operator (EO) and mutual information entropy (MIE) are proposed resulting in a feature matrix. Finally, the obtained feature matrix is normalized and given as input to the modified K-means clustering method for classifying the proposed PQDs. With maximum classification accuracy (CA) and less computational time, the proposed system proves its efficacy and robustness in comparison to the traditional K-means clustering method.
基于SVD熵和改进K-means聚类的局部均值分解诊断PQ干扰
本文提出了一种对多路分布式发电系统中常见的孤岛和电能质量干扰进行诊断和分类的新方法。为了获得噪声分解信号,首先采用局部模态分解(LMD)技术,得到一系列乘积函数(pf)。采用基于奇异值分解(SVD)的熵值法确定由与故障类型相关的最敏感信息组成的敏感分量的选取。为了进一步从选取的PF分量中提取潜在的物理特征,提出了能量算子(EO)和互信息熵(MIE)两种特征提取指标(FEIs),从而得到特征矩阵。最后,将得到的特征矩阵归一化,并将其作为输入输入到改进的k均值聚类方法中,用于对所提出的pqd进行分类。与传统的K-means聚类方法相比,该方法具有最大的分类精度和较少的计算时间,证明了其有效性和鲁棒性。
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