TRANSIENT CLUSTERING APROACH FOR PQ MONITORING

T. Streubel, A. Eisenmann, C. Kattmann, Krzystzof Rudion
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Abstract

Power quality monitoring systems play an increasingly important role in the future operation of distribution grids. A major challenge for operating a monitoring system is the processing of measurement data in an efficient and meaningful manner. The generated data sizes are considerable and require experts in the field for a detailed site evaluation. This is both time and cost intensive. One particular problem is the analysis of power quality events, such as transients, which usually occur in high numbers. The identification of the transient’s sources require a detailed analysis of the distorted waveforms and corresponding rms-measurements. The approach in this paper categorizes transients based on the similarity of features in order to link the events to a source. The transient waveforms and rms-measurements are both considered in the segmentation, feature extraction and data reduction process. A data set consisting of 3500 transients, measured at an electric vehicle-charging infrastructure, was utilized to validate the method. Results show that the method was able to categorize the samples into different types of transients, allowing the identification of the sources of the majority of disturbances.
pq监测的暂态聚类方法
电能质量监测系统在未来配电网运行中发挥着越来越重要的作用。运行监测系统的一个主要挑战是以有效和有意义的方式处理测量数据。产生的数据量相当大,需要该领域的专家进行详细的现场评估。这既费时又耗钱。一个特别的问题是分析电能质量事件,例如经常大量发生的瞬变。瞬态源的识别需要对畸变波形进行详细的分析和相应的均方根测量。该方法基于特征的相似性对瞬变进行分类,以便将事件与源联系起来。在分割、特征提取和数据约简过程中,同时考虑了瞬态波形和均方根测量。利用在电动汽车充电基础设施中测量的3500个瞬态数据集来验证该方法。结果表明,该方法能够将样本划分为不同类型的瞬态,从而识别出大多数干扰的来源。
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