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Optimal PMU placement for power system dynamic state estimation by using empirical observability Gramian

机译:基于经验可观察性Gramian的电力系统动态状态估计的最优PMU布置

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In this paper, the empirical observability Gramian calculated around the operating region of a power system is used to quantify the degree of observability of the system states under specific phasor measurement unit (PMU) placement. An optimal PMU placement method for power system dynamic state estimation is further formulated as an optimization problem which maximizes the determinant of the empirical observability Gramian and is efficiently solved by the NOMAD solver, which implements the Mesh Adaptive Direct Search (MADS) algorithm. The implementation, validation, and also the robustness to load fluctuations and contingencies of the proposed method are carefully discussed. The proposed method is tested on WSCC 3-machine 9-bus system and NPCC 48-machine 140-bus system by performing dynamic state estimation with square-root unscented Kalman filter. The simulation results show that the determined optimal PMU placements by the proposed method can guarantee good observability of the system states, which further leads to smaller estimation errors and larger number of convergent states for dynamic state estimation compared with random PMU placements. Under optimal PMU placements an obvious observability transition can be observed. The proposed method is also validated to be very robust to both load fluctuations and contingencies.
机译:在本文中,在电力系统的运行区域周围计算的经验可观察性Gramian用于量化特定相量测量单元(PMU)放置下系统状态的可观察性程度。进一步将用于电力系统动态状态估计的最优PMU放置方法作为优化问题,该优化问题最大化了经验可观性Gramian的决定因素,并由实现网格自适应直接搜索(MADS)算法的NOMAD求解器有效地求解。仔细讨论了该方法的实现,验证以及负载波动和突发事件的鲁棒性。通过使用平方根无味卡尔曼滤波器进行动态状态估计,在WSCC 3机9总线系统和NPCC 48机140总线系统上测试了该方法。仿真结果表明,所提出的方法确定的最优PMU位置可以保证系统状态的良好可观察性,与随机PMU位置相比,动态状态估计的估计误差较小,收敛状态数更多。在最佳的PMU放置下,可以观察到明显的可观察性过渡。还验证了所提出的方法对于负载波动和突发事件都非常鲁棒。

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