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Parallel domain decomposition based distributed state estimation for large-scale power systems

机译:大规模电力系统中基于并行域分解的分布式状态估计

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Growing system sizes and complexity along with the large amount of data provided by phasor measurement units (PMUs) are the drivers to accurate state estimation algorithms for online monitoring and operation of power systems. In this paper a distributed weighted least square (WLS) state estimation method using additive Schwarz domain decomposition technique is proposed to reduce the computational execution time. The proposed approach divides the data set into several subsets to be processed in parallel using a multi-processor architecture considering data exchange among distributed areas. The slow coherency method and balanced partitioning are utilized to reduce the communication overhead and increase accuracy. Moreover, bad data analysis is also investigated in a distributed manner. The performance of the proposed distributed state estimator along with the speed-up for several test systems was compared with traditional centralized state estimator. The simulation results show a speed-up of 6.5 for a 4992-bus system.
机译:系统尺寸和复杂性的增长以及相量测量单元(PMU)提供的大量数据是用于在线监测和运行电力系统的精确状态估计算法的驱动力。为了减少计算执行时间,本文提出了一种使用加性Schwarz域分解技术的分布式加权最小二乘(WLS)状态估计方法。考虑到分布式区域之间的数据交换,所提出的方法使用多处理器体系结构将数据集划分为多个子集,以并行处理。利用慢速一致性方法和平衡分区来减少通信开销并提高准确性。而且,不良数据分析也以分布式方式进行研究。所提出的分布式状态估计器的性能以及多个测试系统的提速与传统的集中式状态估计器进行了比较。仿真结果表明,4992总线系统的速度提高了6.5。

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