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A Machine Learning Approach to the Identification of Voltage Control Area Using Synchrophasor Measurements

机译:一种机器学习方法,使用同步素测量识别电压控制区域

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Voltage instability has caused a great deal of concern in the existing power systems. Despite best efforts, it is still not uncommon a phenomenon and has caused some of the major blackouts and catastrophic failures in the recent past, resulting in huge social and economic losses. The advent of synchrophasor technology has made possible wide-area measurements in real-time, and has found huge applications in power systems. The identification of subregions in power systems that experience a unique voltage instability problem is one of the most important steps of voltage stability analysis. This paper presents a method to identify voltage control area (VCA), based on coherent groups of buses, using system states obtained from synchronized phasor measurements. The coherency is identified by applying hierarchical clustering, a machine learning technique. The coherent buses are identified by applying the machine learning technique on the angles obtained from bus voltage phasors. The results so obtained using the data from Phasor Measurement Units (PMUs) on 10-machine, 39-bus New England power system model are presented.
机译:电压不稳定在现有电力系统中引起了很多问题。尽管尽力而为,但仍然没有少见的现象,并在最近的过去造成了一些主要的停电和灾难性失败,导致了巨大的社会和经济损失。同步技术的出现是实时的广泛测量,并在电力系统中找到了巨大的应用。经历唯一电压不稳定问题的电力系统中的识别是电压稳定性分析的最重要步骤之一。本文介绍了一种基于从同步相位测量获得的系统状态的基于相干总线组的电压控制区域(VCA)的方法。通过应用分层聚类,机器学习技术来识别相干性。通过在从总线电压相量获得的角度上应用机器学习技术来识别相干总线。提出了如此从10台机器上的Phasor测量单元(PMU)的数据获得的结果,39总线新的英格兰电力系统模型。

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