Speed up of data-driven state estimation using low-complexity indexing method

Yang Weng, C. Faloutsos, M. Ilie, R. Negi
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引用次数: 2

Abstract

Traditional power system state estimation methods lack the ability to track and manage increasing uncertainties inherent in the new technologies, such as recent and ongoing massive penetration of renewable energy, distribution intelligence, and plug-in electric vehicles. To deal with the inability, a recent work proposes to utilize the unused historical data for power system state estimation. Although able to achieve much higher accuracy, the new approach is slow due to the burden by sequential similarity check over large volumes of high dimensional historical measurements, making it unsuitable for online services. This calls for a general approach to preprocess the historical data. In this paper, we propose to achieve such a goal with three steps. First, because the power systems are with periodic patterns, which create clustered measurement data, dimension reduction is proposed to remove redundancy, but still able to retrieve similar measurements. To further reduce the computational time, the k-dimensional tree indexing approach is employed in step two to group the clustered power system data into a tree structure, resulting in a log-reduction over searching time. Finally, we verify the obtained historical power system states via AC power system model and the current measurements to filter out bad historical data. Simulation results show that the new method can dramatically reduce the necessary computational time for online data-driven state estimation, while producing a highly accurate state estimate.
利用低复杂度索引方法提高数据驱动状态估计的速度
传统的电力系统状态估计方法缺乏跟踪和管理新技术中固有的不断增加的不确定性的能力,例如最近和正在进行的可再生能源、配电智能和插电式电动汽车的大规模渗透。为了解决这一问题,最近一项研究提出利用未使用的历史数据进行电力系统状态估计。虽然能够达到更高的精度,但由于对大量高维历史测量进行顺序相似性检查的负担,新方法速度很慢,使其不适合在线服务。这就需要一种通用的方法来预处理历史数据。在本文中,我们提出了实现这一目标的三个步骤。首先,由于电力系统具有周期性模式,会产生聚类测量数据,因此提出了降维方法来消除冗余,但仍然能够检索到相似的测量数据。为了进一步减少计算时间,在第二步中采用k维树索引方法将聚类电力系统数据分组为树结构,从而减少了搜索时间。最后,我们通过交流电力系统模型和电流测量来验证得到的历史电力系统状态,以过滤掉不良的历史数据。仿真结果表明,该方法可以大大减少在线数据驱动状态估计所需的计算时间,同时产生高精度的状态估计。
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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