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Distributed State Estimation Using a Modified Partitioned Moving Horizon Strategy for Power Systems

机译:电力系统的改进分区移动视界策略进行分布式状态估计

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摘要

In this paper, a distributed state estimation method based on moving horizon estimation (MHE) is proposed for the large-scale power system state estimation. The proposed method partitions the power systems into several local areas with non-overlapping states. Unlike the centralized approach where all measurements are sent to a processing center, the proposed method distributes the state estimation task to the local processing centers where local measurements are collected. Inspired by the partitioned moving horizon estimation (PMHE) algorithm, each local area solves a smaller optimization problem to estimate its own local states by using local measurements and estimated results from its neighboring areas. In contrast with PMHE, the error from the process model is ignored in our method. The proposed modified PMHE (mPMHE) approach can also take constraints on states into account during the optimization process such that the influence of the outliers can be further mitigated. Simulation results on the IEEE 14-bus and 118-bus systems verify that our method achieves comparable state estimation accuracy but with a significant reduction in the overall computation load.
机译:针对大规模电力系统状态估计问题,提出了一种基于移动视界估计的分布式状态估计方法。所提出的方法将电力系统划分为多个具有非重叠状态的局部区域。与将所有测量值都发送到处理中心的集中式方法不同,所提出的方法将状态估计任务分配给收集本地测量值的本地处理中心。受分区移动视野估计(PMHE)算法的启发,每个局部区域都解决了一个较小的优化问题,即通过使用局部测量值和来自其邻近区域的估计结果来估计其自身的局部状态。与PMHE相比,过程模型中的错误在我们的方法中被忽略。所提出的改进的PMHE(mPMHE)方法还可以在优化过程中考虑对状态的约束,从而可以进一步减轻异常值的影响。在IEEE 14总线和118总线系统上的仿真结果证明,我们的方法可以达到可比的状态估计精度,但总体计算量却大大降低了。

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