Application of parallel particle swarm optimization on power system state estimation

hee-myung jeong, Hwa-Seok Lee, Juneho Park
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引用次数: 16

Abstract

In power system operations, state estimation plays an important role in security control. For the state estimation problem, the weighted least squares (WLS) method is widely used at present. However, these algorithms can converge to local optimal solutions. Recently, modern heuristic optimization methods such as Particle Swarm Optimization (PSO) have been introduced to overcome the disadvantage of the classical optimization problem. However, heuristic optimization methods based on populations require a lengthy computing time to find an optimal solution. In this paper, we used particle swarm optimization (PSO) to search for the optimal solution of state estimation in power systems. To overcome the shortcoming of heuristic optimization methods, we proposed parallel processing of the PSO algorithm based on the PC cluster system. The proposed approach was tested with the IEEE-118 bus systems. From the simulation results, we found that the parallel PSO based on the PC cluster system can be applicable for power system state estimation.
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并行粒子群算法在电力系统状态估计中的应用
在电力系统运行中,状态估计在安全控制中起着重要的作用。对于状态估计问题,目前广泛使用的是加权最小二乘方法。然而,这些算法可以收敛到局部最优解。近年来,粒子群优化(PSO)等现代启发式优化方法被引入,以克服经典优化问题的缺点。然而,基于种群的启发式优化方法需要较长的计算时间才能找到最优解。本文将粒子群算法应用于电力系统状态估计问题的最优解求解。为克服启发式优化方法的不足,提出了基于PC集群系统的并行处理粒子群算法。提出的方法在IEEE-118总线系统上进行了测试。仿真结果表明,基于PC集群系统的并行粒子群算法可用于电力系统状态估计。
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