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Extended Kalman filter-based parallel dynamic state estimation

机译:扩展卡尔曼基于滤波器的并行动态状态估计

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Summary form only given. There is a growing need for accurate and efficient real-time state estimation with increasing complexity, interconnection, and insertion of new devices in power systems. In this paper, a massively parallel dynamic state estimator is developed on a graphic processing unit (GPU), which is especially designed for processing large data sets. Within the massively parallel framework, a lateral two-level dynamic state estimator is proposed based on the extended Kalman filter method, utilizing both supervisory control and data acquisition, and phasor measurement unit (PMU) measurements. The measurements at the buses without PMU installations are predicted using previous data. The results of the GPU-based dynamic state estimator are compared with a multithread CPU-based code. Moreover, the effects of direct and iterative linear solvers on the state estimation algorithm are investigated. The simulation results show a total speed-up of up to 15 times for a 4992-bus system.
机译:摘要表格仅给出。随着电力系统中的复杂性,互连和插入新设备的复杂性,互连和插入新设备,越来越需要准确和有效的实时估计。在本文中,在图形处理单元(GPU)上显影了大量平行的动态状态估计器,其特别设计用于处理大数据集。在大规模并行框架内,基于扩展的卡尔曼滤波方法提出横向两级动态状态估计器,利用监控和数据采集,以及Phasor测量单元(PMU)测量。使用先前的数据预测没有PMU安装的总线的测量值。基于GPU的动态状态估计器的结果与基于多线程CPU的代码进行了比较。此外,研究了直接和迭代线性溶剂对状态估计算法的影响。仿真结果显示为4992总线系统的总速度高达15倍。

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