Novel approaches using semidefinite programming method for power systems state estimation

Yang Weng, B. Fardanesh, M. Ilić, R. Negi
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引用次数: 10

Abstract

This paper is motivated by the open questions concerning effective nonlinear state estimation (SE) approaches. The basic difficulty comes from the highly nonlinear functions relating measurements and voltages defined by the AC power flow models. Today's AC power flow SE approach is, therefore, a highly non-convex problem and, as such, it is prone to convergence problems and sub-optimal solutions. We describe how two recently proposed methods overcome this problem by following a common idea of mapping the voltage space into higher dimensional space in which the problem can be posed as a convex optimization problem because the measurements can be expressed as linear functions in a higher-dimensional space. It is intriguing that the semi-definite programming (SDP)-based SE approach and the direct non-iterative method-based SE approach both employ a similar mapping of voltages into higher dimensional matrix W of voltage products at neighboring buses as new states. These recently discovered similarities are described in some detail by posing both approaches without loss of generality on a three bus system. The two methods differ significantly in their approaches to re-computing actual voltages once the voltage products are estimated. The SDP-based SE approach utilizes the structure of the mapping and states a sufficient rank one condition for matrix W to ensure the unique reconstruction of the actual bus voltages. Both methods are computationally demanding. To overcome this inherent problem, an approximate distributed SDP-based SE algorithm is proposed by performing: 1) a decomposition of the large power grid networks into much smaller clusters where extensive information exchange is not needed; and 2) by performing a Lagrangian dual decomposition-based computation and message-passing within each cluster. The accuracy of the SDP-based distributed algorithm is illustrated by comparing the results to those obtained using the SDP-based SE estimator. Advantages of the SDP-based methods when compared to today's AC power flow based SE are illustrated by showing numerical problems experienced when using the IEEE test systems.
半定规划法在电力系统状态估计中的应用
有效的非线性状态估计(SE)方法的开放性问题激发了本文的研究。最基本的困难来自于交流潮流模型所定义的与测量值和电压相关的高度非线性函数。因此,今天的交流潮流SE方法是一个高度非凸问题,因此,它容易出现收敛问题和次优解。我们描述了最近提出的两种方法如何通过遵循将电压空间映射到高维空间的共同思想来克服这一问题,在高维空间中,由于测量可以表示为线性函数,因此问题可以被提出为凸优化问题。有趣的是,基于半确定规划(SDP)的SE方法和基于直接非迭代方法的SE方法都采用相似的电压映射到相邻母线电压乘积的高维矩阵W中作为新状态。这些最近发现的相似之处通过在三总线系统上提出两种方法而不失去一般性来详细描述。这两种方法在重新计算实际电压的方法上有很大的不同。基于sdp的SE方法利用映射的结构,为矩阵W规定了一个足够的秩一条件,以确保对实际母线电压的唯一重构。这两种方法的计算量都很高。为了克服这一固有问题,提出了一种近似的基于分布式sdp的SE算法:1)将大型电网网络分解为不需要大量信息交换的更小的簇;2)在每个簇内执行基于拉格朗日对偶分解的计算和消息传递。通过与基于sdp的SE估计器的结果比较,说明了基于sdp的分布式算法的准确性。与目前基于交流潮流的SE相比,基于sdp的方法的优势通过使用IEEE测试系统时遇到的数值问题来说明。
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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