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Hybrid power system state estimation using Taguchi differential evolution algorithm

机译:使用Taguchi差分进化算法的混合电力系统状态估计

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摘要

Hybridising of different optimisation techniques provides a scope to improve global exploration capability of the resulting method. In this study, an enhanced differential evolution (DE) algorithm, called hybrid Taguchi-differential evolution (TDE) algorithm is proposed to solve power system state estimation problem as an optimisation problem. TDE combines the positive properties of the Taguchi's method to the classical DE algorithm for improving the accuracy and reliability of state estimation problem. The systematic reasoning ability of the Taguchi method is incorporated after crossover operation of DE algorithm to obtain the potential chromosome, better convergence rate and subsequently, to improve the robustness of the results. The proposed method is tested on IEEE test bus systems along with two ill-conditioned systems under different simulated conditions. The results reveal that solutions yield towards global optimum and it compares far better than conventional DE, particle swarm optimisation, gravitational search algorithm and weighted least square based state estimation techniques in terms of optimisation performance, solution quality and the statistical error analysis.
机译:不同优化技术的混合为提高所得方法的整体勘探能力提供了一个空间。在这项研究中,提出了一种改进的差分进化(DE)算法,称为混合Taguchi-差分进化(TDE)算法,以解决作为优化问题的电力系统状态估计问题。 TDE将Taguchi方法的积极特性与经典DE算法相结合,以提高状态估计问题的准确性和可靠性。 Taguchi方法的系统推理能力在DE算法交叉操作后被纳入,以获得潜在的染色体,更好的收敛速度,从而提高结果的鲁棒性。在不同的模拟条件下,该方法在IEEE测试总线系统以及两个病态系统上进行了测试。结果表明,解决方案可实现全局最优,并且在优化性能,解决方案质量和统计误差分析方面,其比传统DE,粒子群优化,重力搜索算法和基于加权最小二乘法的状态估计技术要好得多。

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