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Distributed Kalman Filter for Large-Scale Power Systems With State Inequality Constraints

机译:用于具有状态不等式约束的大型电源系统的分布式卡尔曼滤波器

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摘要

This article is concerned with a hybrid distributed dynamic state estimation (DSE) algorithm for large-scale power grids. Based on the mixed phasor measurement unit (PMU) and remote terminal unit measurements model, a modified distributed Kalman filter (KF) is designed. Different from the centralized KF algorithm, the distributed approach is capable of independently estimating local states by local measurements. Moreover, in each local region, the multiple missing measurements problem is considered in the modified distributed KF algorithm design. The internodal transformation theory is employed to deal with the communication problem between the distributed subsystems. Therefore, the proposed method can reduce the communication latency while ensuring the estimation accuracy. Considering the inequality constraints, the particle swarm optimization algorithm and the probability-maximization method are applied to tackle the corresponding constrained estimation issue. The proposed distributed DSE algorithm is tested on an IEEE benchmark 14-bus system to demonstrate its effectiveness and applicability.
机译:本文涉及用于大型电网的混合分布式动态状态估计(DSE)算法。基于混合量相测量单元(PMU)和远程终端单元测量模型,设计了一种改进的分布式卡尔曼滤波器(KF)。与集中式KF算法不同,分布式方法能够通过本地测量独立地估计本地状态。此外,在每个局部区域中,在修改的分布式KF算法设计中考虑了多缺失的测量问题。专区转换理论用于处理分布式子系统之间的沟通问题。因此,所提出的方法可以在确保估计精度的同时降低通信延迟。考虑到不平等约束,应用粒子群优化算法和概率最大化方法来解决相应的受限估计问题。在IEEE基准14总线系统上测试了所提出的分布式DSE算法,以展示其有效性和适用性。

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