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Integrating a Feature Selection Algorithm for Classification of Voltage Sags Originated in Transmission and Distribution Networks

机译:集成特征选择算法,用于源自传输和分配网络的电压SAG分类

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As a global problem in the power quality area, voltage sags are matter of high interest for both utilities and customers. With a view to resolving the problem of sag source location in the power network, this paper introduces a new method based on dimension reduction capability of Multiway Principal Component Analysis (MPCA). MPCA models are developed using three dimensional databases of voltage and current Root Mean Square (RMS) values. Computed scores are then used for training commonly used classifiers for putting sags in two classes. A feature selection algorithm is successfully applied for determining the optimal subsets of scores for training classifiers and also the number of principal components in the MPCA models. The proposed method is tested with success using some real voltage sags recorded in some substations. Also, through some experiments we demonstrate that satisfactorily high classification rates must be attributed to the applied feature selection algorithm.
机译:作为电力质量区域的全球问题,电压凹陷对公用事业和客户来说都很有兴趣。以解析电网中的下垂源位置问题的视图,本文介绍了一种基于多通道主成分分析(MPCA)尺寸减小能力的新方法。 MPCA模型是使用电压和电流均方根(RMS)值的三维数据库开发的。然后,计算的分数用于培训常用的分类器,用于将凹陷放在两个类中。成功应用了特征选择算法,用于确定训练分类器的最佳子集,以及MPCA模型中的主组件的数量。使用在一些变电站中记录的一些实际电压纱线来测试所提出的方法。此外,通过一些实验,我们证明令人满意的高分类率必须归因于所应用的特征选择算法。

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