Application of Machine Learning Methods for Recognition of Daily Patterns in Power Quality Time Series

E. Strunz, O. Zyabkina, Jan Meyer
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引用次数: 1

Abstract

Power electronic devices cause harmonic distortion that can have a negative effect on both the grid and the consumer side. Therefore, network operators conduct extensive measurement campaigns to monitor power quality and to identify problems at early stage. Due to the tremendous amount of measurement data, manual inspection is usually limited to simple analysis. As a result, the majority of useful information in the data stays unused and automatic methods are needed to process the big amount of measurement data effectively and to analyze them in depth. In this paper, five machine learning methods are used for automatic classification of daily patterns in current and voltage harmonics. The methods are described and applied to four data sets. Methods performance is evaluated and compared using four indices. This paper shows that both supervised and unsupervised methods can be successfully applied to harmonic measurement data, however with some limitations.
机器学习方法在电能质量时间序列日模式识别中的应用
电力电子设备会造成谐波失真,对电网和消费者都有负面影响。因此,网络运营商开展了广泛的测量活动,以监测电能质量,并在早期阶段发现问题。由于测量数据量巨大,人工检测通常局限于简单的分析。因此,数据中的大部分有用信息没有被利用,需要自动化的方法来有效地处理大量的测量数据并对其进行深入的分析。本文采用五种机器学习方法对电流和电压谐波的日常模式进行自动分类。描述了这些方法并将其应用于四个数据集。采用四个指标对方法的性能进行评价和比较。本文表明,有监督和无监督方法都可以成功地应用于谐波测量数据,但存在一定的局限性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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