Power System State Recovery using Local and Global Smoothness of its Graph Signals

Md Abul Hasnat, M. Rahnamay-Naeini
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引用次数: 1

Abstract

Recovering the state of unobservable power system components due to cyber attacks or limited meter availability is a crucial problem to address to enable efficient monitoring and operation of power systems. The graph signal processing (GSP) framework provides new opportunities to improve power system data analysis by capturing the topological information of the system. In this paper, the recovery of the unobservable states in power systems is formulated as a graph signal reconstruction problem in a GSP framework. Specifically, a novel reconstruction technique based on the statistics of the local smoothness of the graph signals along with the global smoothness of the graph signals is casted into an optimization framework. In contrast to many graph signal reconstruction techniques, which assume band-limited signals to be recovered, the proposed technique is applicable to general graph signals irrespective of their bandwidth. The performance evaluation of the proposed method using simulated graph signals for the IEEE 118 bus system show promising reconstruction accuracy.
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基于图信号局部和全局平滑的电力系统状态恢复
恢复由于网络攻击或电表可用性有限而不可观测的电力系统组件的状态是实现电力系统有效监测和运行的关键问题。图信号处理(GSP)框架通过捕获系统的拓扑信息,为改进电力系统数据分析提供了新的机会。本文将电力系统中不可观测状态的恢复问题表述为GSP框架下的图信号重构问题。具体地说,基于图信号的局部平滑统计和图信号的全局平滑统计的一种新的重构技术被投射到一个优化框架中。与许多图信号重建技术假设要恢复的信号是带限的不同,本文提出的技术适用于一般的图信号,而不考虑其带宽。利用ieee118总线系统的模拟图形信号对该方法进行了性能评估,结果表明该方法具有良好的重构精度。
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