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Power Systems Topology and State Estimation by Graph Blind Source Separation

机译:图盲源分离的电力系统拓扑和状态估计

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In this paper, we consider the problem of blind estimation of states and topology (BEST) in power systems. We use the linearized dc model of real power measurements with unknown voltage phases (i.e., states) and an unknown admittance matrix (i.e., topology) and show that the BEST problem can be formulated as a blind source separation (BSS) problem with a weighted Laplacian mixing matrix. We develop the constrained maximum likelihood (ML) estimator of the Laplacian matrix for this graph BSS problem with Gaussian-distributed states. The ML-BEST is shown to be only a function of the states' second-order statistics. Since the topology recovery stage of the ML-BEST approach results in a high-complexity optimization problem, we propose two low-complexity methods to implement it: First, two-phase topology recovery, which is based on solving the relaxed convex optimization and then finding the closest Laplacian matrix, and second, augmented Lagrangian topology recovery. We derive a closed-form expression for the associated Cramer-Rao bound (CRB) on the topology matrix estimation. The performance of the proposed methods is evaluated for three case studies: the IEEE-14 bus system, the IEEE 118-bus system, and a random network, and compared with the oracle minimum mean-squared-error state estimator and with the proposed CRB.
机译:在本文中,我们考虑了电力系统中状态和拓扑(BEST)的盲估计问题。我们使用具有未知电压相位(即状态)和未知导纳矩阵(即拓扑)的有功功率的线性化dc模型,并证明BEST问题可以公式化为具有加权的盲源分离(BSS)问题拉普拉斯混合矩阵。我们针对具有高斯分布状态的图BSS问题,开发了Laplacian矩阵的约束最大似然(ML)估计器。 ML-BEST仅显示为州的二阶统计量的函数。由于ML-BEST方法的拓扑恢复阶段会导致高复杂度优化问题,因此我们提出了两种低复杂度的方法来实现该问题:首先,两阶段拓扑恢复,这是基于求解松弛凸优化的基础上,然后找到最接近的拉普拉斯矩阵,其次,增强拉格朗日拓扑恢复。我们在拓扑矩阵估计上为相关的Cramer-Rao界(CRB)得出一个封闭形式的表达式。针对三种案例研究评估了所提出方法的性能:IEEE-14总线系统,IEEE 118总线系统和随机网络,并与oracle最小均方误差状态估计器和拟议的CRB进行了比较。 。

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