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Synchrophasor data analytics in distribution grids

机译:配电网中的同步相量数据分析

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摘要

The deployment of high-fidelity, high-resolution sensors in distribution systems will play a key role in enabling increased resiliency and reliability in the face of a changing generation landscape. In order to leverage the full potential of such a rich dataset, it is necessary to develop an analytics framework capable of both detecting and analyzing patterns within events of interest. This work details the foundation of such an infrastructure. Here, we present an algorithm for detecting events, in the form of edges in voltage magnitude time series data, and an approach for clustering sets of events to reveal unique features that distinguish different events from one another (e.g. capacitor bank switching from transformer tap changes). We test the proposed infrastructure on distribution synchrophasor data obtained from a utility in California over a one week period. Our results indicate that event detection and clustering of archived data reveals features unique to the operation of voltage regulation equipment. The chosen data set particularly highlights the value of the derivative of the localized voltage angle as a distinguishing feature.
机译:面对不断变化的发电形势,在配电系统中部署高保真,高分辨率传感器将在提高弹性和可靠性方面发挥关键作用。为了充分利用此类丰富数据集的全部潜力,有必要开发一种能够检测和分析感兴趣事件中的模式的分析框架。这项工作详细介绍了这种基础架构的基础。在这里,我们以电压幅度时间序列数据中的边缘形式提供一种用于检测事件的算法,以及一种对事件集进行聚类以揭示将不同事件彼此区分开的独特特征的方法(例如,电容器组从变压器抽头变化中切换) )。我们在一个星期的时间内,从加州一家公用事业公司获得的配电同步相量数据上测试了建议的基础设施。我们的结果表明,事件检测和归档数据的聚类揭示了电压调节设备运行所特有的功能。所选择的数据集特别突出显示了局部电压角的导数的值,这是其独特之处。

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