Towards effective clustering techniques for the analysis of electric power grids

Emilie Hogan, E. C. Sanchez, M. Halappanavar, Shaobu Wang, Patrick Mackey, P. Hines, Zhenyu Huang
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引用次数: 11

Abstract

Clustering is an important data analysis technique with numerous applications in the analysis of electric power grids. Standard clustering techniques are oblivious to the rich structural and dynamic information available for power grids. Therefore, by exploiting the inherent topological and electrical structure in the power grid data, we propose new methods for clustering with applications to model reduction, locational marginal pricing, phasor measurement unit (PMU or synchrophasor) placement, and power system protection. We focus our attention on model reduction for analysis based on time-series information from synchrophasor measurement devices, and spectral techniques for clustering. By comparing different clustering techniques on two instances of realistic power grids we show that the solutions are related and therefore one could leverage that relationship for a computational advantage. Thus, by contrasting different clustering techniques we make a case for exploiting structure inherent in the data with implications for several domains including power systems.
面向电网分析的有效聚类技术
聚类是一种重要的数据分析技术,在电网分析中有着广泛的应用。标准的聚类技术忽略了电网中丰富的结构信息和动态信息。因此,通过利用电网数据中固有的拓扑和电气结构,我们提出了新的聚类方法,并将其应用于模型缩减、位置边际定价、相量测量单元(PMU或同步相量)放置和电力系统保护。我们将重点放在基于同步相量测量设备的时间序列信息的模型缩减和聚类的光谱技术上。通过在两个实际电网实例上比较不同的聚类技术,我们表明解决方案是相关的,因此可以利用这种关系来获得计算优势。因此,通过对比不同的聚类技术,我们提出了一个利用数据固有结构的案例,其中包括电力系统在内的几个领域。
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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