Distributed State Estimation for Multi-Feeder Distribution Grids

Marco Pau;Ferdinanda Ponci;Antonello Monti;Carlo Muscas;Paolo Attilio Pegoraro
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引用次数: 2

Abstract

The real-time monitoring of electric distribution grids via state estimation is a fundamental requirement to deploy smart automation and control in the distribution system. Due to the large size of distribution networks and the poor coverage of measurement instrumentation on the field, designing fast state estimation algorithms and achieving accurate results are two major challenges associated to distribution system state estimation. In this paper, an efficient and accurate solution for performing state estimation in multi-feeder radial distribution grids is presented. The proposed algorithm is based on a two-step approach. In the first step, state estimation is performed in parallel on the different feeders suitably processing the available measurements and pseudo-measurements and taking into account their uncertainty characteristics. In the second step, the results on each feeder are post-processed to refine the estimations and to improve the accuracy performance. To this purpose, the second step considers how measurement uncertainties propagate towards the final estimates and how measurements shared among the feeders could adversely affect the final estimation. Performed tests show that the conceived design leads to accuracy performance very close to those achievable by running state estimation on the full grid. At the same time, the parallelization of the estimation process on the different feeders allows decentralizing the state estimation problem, with the associated benefits in terms of computation time and distribution of the communication and storage requirements.
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多馈线配电网的分布式状态估计
通过状态估计对配电网进行实时监测是在配电系统中部署智能自动化和控制的基本要求。由于配电网规模大,现场测量仪器覆盖率低,设计快速的状态估计算法和获得准确的结果是配电系统状态估计的两大挑战。本文提出了一种在多馈电线径向配电网中进行状态估计的有效而准确的解决方案。所提出的算法基于两步方法。在第一步中,在不同的馈线上并行执行状态估计,适当地处理可用的测量和伪测量,并考虑它们的不确定性特性。在第二步中,对每个馈线上的结果进行后处理,以细化估计并提高精度性能。为此,第二步考虑测量不确定性如何向最终估计传播,以及馈线之间共享的测量如何对最终估计产生不利影响。执行的测试表明,所设想的设计使精度性能非常接近于在全网格上运行状态估计所能实现的精度性能。同时,不同馈线上估计过程的并行化允许分散状态估计问题,并在计算时间以及通信和存储需求的分布方面带来相关好处。
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