Multi-area state estimation using distributed SDP for nonlinear power systems

Hao Zhu, G. Giannakis
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引用次数: 18

Abstract

State estimation (SE) is an important task allowing power networks to monitor accurately the underlying system state, while multi-area SE is becoming increasingly popular as the power grid comprises multiple interconnected “subgrids.” For nonlinear AC power systems, SE per subgrid amounts to minimizing a nonlinear least-squares cost that is inherently nonconvex, thus giving rise to many local optima. Despite the non-convexity, a recent SE approach based on semidefinite programming (SDP) has been effective in approaching globally optimal performance at the price of higher computational cost. A novel reduced-complexity algorithm is developed in this paper for local control areas to solve the centralized SDP-based SE problem in a distributed fashion. It leverages results on positive semidefinite matrix completion to split a global state matrix constraint into local ones, which further allows for parallel implementation using the alternating-direction method of multipliers (ADMM). With minimal data exchanges among neighboring areas, each control center can efficiently perform local updates that scale with each area's size (number of buses). Numerical simulations using the IEEE 14-bus system demonstrate the asymptotic convergence of local state matrices, and desirable estimation accuracy attainable with a limited number of exchanges.
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基于分布式SDP的非线性电力系统多区域状态估计
状态估计(SE)是电网准确监测底层系统状态的一项重要任务,而随着电网由多个相互连接的“子电网”组成,多区域状态估计越来越受欢迎。对于非线性交流电力系统,每个子网的SE等于最小化固有非凸的非线性最小二乘成本,从而产生许多局部最优。尽管存在非凸性,但最近一种基于半确定规划(SDP)的SE方法以较高的计算成本为代价,有效地接近了全局最优性能。本文针对局部控制区域,提出了一种新的降低复杂度的算法,以分布式的方式解决集中式基于sdp的SE问题。它利用正半定矩阵补全的结果将全局状态矩阵约束拆分为局部状态矩阵约束,这进一步允许使用乘法器的交替方向方法(ADMM)并行实现。由于相邻区域之间的数据交换最少,每个控制中心都可以有效地执行与每个区域的大小(总线数量)相匹配的本地更新。使用IEEE 14总线系统的数值模拟证明了局部状态矩阵的渐近收敛性,并且在有限数量的交换下可以达到理想的估计精度。
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