Robustness to missing synchrophasor data for power and frequency event detection in electric grids

S. Konakalla, R. D. de Callafon
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引用次数: 2

Abstract

Phasor Measurement Unit (PMU) data provides time synchronized measurements of important electrical and power signals in AC power grids. The sheer volume of three phase electric grid PMU data, typically measured at 60 samples second, necessitates the use of automatic event (anomaly) detection for grid monitoring and control. However, this becomes an unwieldy task in cases of PMU data dropouts due to the unobservable state of the grid. Hence, robustness to missing phasor measurements would be critical in order to monitor and control the electric grid in an orderly manner. This paper illustrates an approach for interpolation of PMU data in case of missing data points by optimal filtering of phasor data along with event detection. It is shown that optimal filters can be estimated on the basis of non linear recursive search optimization on real-time PMU data and these filters can be used to generate forecasts in case of missing PMU measurements. The approach is illustrated on phasor data obtained from a microPMU system developed by Power Standards Lab for data ride-through in case of dropouts.
电网中功率和频率事件检测对缺失同步数据的鲁棒性
相量测量单元(PMU)数据提供交流电网中重要电气和电力信号的时间同步测量。三相电网PMU数据的绝对数量,通常以每秒60个样本的速度测量,需要使用自动事件(异常)检测来进行电网监测和控制。然而,在由于网格的不可观察状态而导致PMU数据丢失的情况下,这将成为一项棘手的任务。因此,为了以有序的方式监测和控制电网,对缺失相量测量的鲁棒性至关重要。本文阐述了一种通过相量数据的最优滤波和事件检测来实现PMU数据缺失情况下的插值方法。结果表明,基于非线性递归搜索优化,可以估计出PMU实时数据的最优滤波器,这些滤波器可用于在PMU测量缺失的情况下生成预测。该方法以功率标准实验室开发的微pmu系统的相量数据为例进行了说明,该系统用于在丢失情况下进行数据穿越。
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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