群智能与无功电压控制的进化方法

L. Grant, G. Venayagamoorthy, G. Krost, G. Bakare
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引用次数: 33

摘要

本文比较了基于群智能和进化技术的电网系统损耗最小化和电压分布改善方法。通过调整发电机的励磁、变压器的有载分接开关位置以及适当地开关电感或电容器的分立部分,可以实现电网中无功功率的有效分配。这是一个混合整数非线性优化问题,其中元启发式技术已被证明适合提供最优解。本文探讨了四种算法:差分进化(DE)算法、粒子群优化(PSO)算法、粒子群优化与粒子群优化的混合组合算法以及变异粒子群优化(MPSO)算法。根据算法的解质量和收敛特性对算法的有效性进行了评价。对尼日利亚电力系统的仿真研究表明,在降低实际功率损失的同时,将电压分布保持在可接受的范围内,基于粒子群的解决方案比DE方法更有效。结果还表明,MPSO允许进一步降低实际功率损失,同时保持令人满意的电压分布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Swarm intelligence and evolutionary approaches for reactive power and voltage control
This paper presents a comparison of swarm intelligence and evolutionary techniques based approaches for minimization of system losses and improvement of voltage profiles in a power network. Efficient distribution of reactive power in an electric network can be achieved by adjusting the excitation on generators, the on-load tap changer positions of transformers, and proper switching of discrete portions of inductors or capacitors. This is a mixed integer non-linear optimization problem where metaheuristics techniques have proven suitable for providing optimal solutions. Four algorithms explored in this paper include differential evolution (DE), particle swarm optimization (PSO), a hybrid combination of DE and PSO, and a mutated PSO (MPSO) algorithm. The effectiveness of these algorithms is evaluated based on their solution quality and convergence characteristic. Simulation studies on the Nigerian power system show that a PSO based solution is more effective than a DE approach in reducing real power losses while keeping the voltage profiles within acceptable limits. The results also show that MPSO allows for further reduction of the real power losses while maintaining a satisfactory voltage profile.
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