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Classification of Underlying Causes of Power Quality Disturbances: Deterministic versus Statistical Methods

机译:电能质量扰动的根本原因分类:确定性统计方法

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摘要

This paper presents the two main types of classification methods for power quality disturbances based on underlying causes: deterministic classification, giving an expert system as an example, and statistical classification, with support vector machines (a novel method) as an example. An expert system is suitable when one has limited amount of data and sufficient power system expert knowledge; however, its application requires a set of threshold values. Statistical methods are suitable when large amount of data is available for training. Two important issues to guarantee the effectiveness of a classifier, data segmentation, and feature extraction are discussed. Segmentation of a sequence of data recording is preprocessing to partition the data into segments each representing a duration containing either an event or a transition between two events. Extraction of features is applied to each segment individually. Some useful features and their effectiveness are then discussed. Some experimental results are included for demonstrating the effectiveness of both systems. Finally, conclusions are given together with the discussion of some future research directions.
机译:本文基于潜在原因介绍了两种主要的电能质量扰动分类方法:确定性分类(以专家系统为例)和统计分类,以支持向量机(一种新方法)为例。如果数据量有限且电力系统专家知识不足,则专家系统是适用的;但是,其应用需要一组阈值。当大量数据可用于训练时,统计方法是合适的。讨论了保证分类器有效性的两个重要问题,即数据分割和特征提取。数据记录序列的分段是预处理,用于将数据划分为多个分段,每个分段表示一个持续时间,其中包含一个事件或两个事件之间的过渡。特征提取分别应用于每个片段。然后讨论了一些有用的功能及其有效性。包括一些实验结果以证明这两个系统的有效性。最后,给出结论并讨论一些未来的研究方向。

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