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PMU placement for optimal three-phase state estimation performance

机译:PMU放置最佳三相状态估计性能

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The future ‘smart’ grid will see increasing deployments of intelligent electronic devices (IED), that sense the state variables of the grid at more locations than present. It is anticipated that sensory devices with Phasor Measurement Unit (PMU)-like capabilities will find deployment within the changing distribution sub-system, to provide greater operational efficiency. However, due to the current high cost of PMU installation, their deployment in the distribution network will continue to be selective for the foreseeable future. Much of the prior literature on PMU placement has focused on how to obtain full observability with minimal number of PMUs for a single-phase power network. Very little work exists for the placement problem for three-phase distribution grid. We further observe that there typically exist multiple minimal-PMU sets that achieve full network observability, affording additional degree of freedom to select an optimal choice among this set. We define the desired solution as the PMU placement that also achieves best overall state estimation performance. Accordingly, we derive the state estimator of all buses in a three-phase network and propose a) greedy algorithm and b) integer programming optimization method to determine the optimal solution. The comparative performance of these two methods is presented via evaluation of transmission and distribution test networks.
机译:未来的“智能”网格将看到智能电子设备(IED)的部署越来越多,从而在更多位置感知网格的状态变量而不是现在。预计具有相量测量单元(PMU)的传感器设备(PMU)将在变化的分配子系统内找到部署,以提供更大的操作效率。但是,由于目前PMU安装的高成本,它们在分销网络中的部署将继续为可预见的未来选择性。 PMU放置的大部分文献都集中在如何利用单相电网的最小数量的PMU获得完全可观察性。三相分布网格的放置问题存在很少的工作。我们进一步观察到通常存在多个Minimal-PMU集,以实现完整的网络可观察性,这是在该组中选择最佳选择的额外自由度。我们将所需的解决方案定义为PMU放置,也实现了最佳的整体状态估计性能。因此,我们从三相网络中推出了所有总线的状态估计,并提出了一种贪婪的算法和B)整数编程优化方法来确定最佳解决方案。通过对传输和分配测试网络的评估来提出这两种方法的比较表现。

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