基于进化策略的配电馈线电容器组配置多目标优化

M. Barukčić, P. Maric, S. Nikolovski
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引用次数: 0

摘要

本文旨在将进化策略应用于多目标优化情况下的电容器组优化分配问题。多目标优化包括功率损耗、电容器成本和电压偏差等多个目标。多目标优化问题是由相互冲突的目标组成的,这些目标需要同时优化。还考虑了其他一些约束条件。本文提出了适用于优化问题的ES突变算子、初始种群的个体编码和生成,以及适用于离散变量优化问题的ES突变算子。该方法已在试验径向给料器上进行了验证,并与已有文献的仿真结果进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Applying an evolutionary strategy for multiobjective optimization of capacitor banks allocation in distribution feeders
This paper aims at applying the Evolutionary Strategy (ES) to capacitor banks optimal allocation problem in the case of multiobjective optimization. The multiobjective optimization includes several objectives such as power losses, capacitor costs and voltage deviation. The multiobjective optimization problem consists of conflicting objectives which need to be simultaneously optimized. Some other constraints are also considered. In the paper the following is proposed: the ES mutation operator adapted to the optimization problem, individual coding and generating of the initial population and finally, the mutation operator adapted to the optimization problem with discrete variables. The proposed approach has been evaluated on the test radial feeder and simulation results have been compared with those existing in the literature.
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