Optimal sizing of distributed generation by using quantum-inspired evolutionary programming

Z. M. Yasin, T. Rahman, I. Musirin, S. Rahim
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引用次数: 16

Abstract

The paper proposes a novel evolutionary programming inspired by quantum mechanics, called a quantum-inspired evolutionary programming (QIEP). The proposed algorithm consists of three levels, quantum individuals, quantum groups and quantum universes. The proposed algorithm is implemented to determine the optimal sizing of distributed generation (DG) for loss minimization at the optimal location. The location of the distributed generation was identified using the sensitivity indices. In order to demonstrate its performance, comparative studies are performed with conventional evolutionary programming in terms of loss minimization and computation time. The installation of single DG and multiple DG also presented and the results shows better improvement in terms of loss minimization and voltage profile. The proposed study was conducted on the IEEE 69-bus test system.
基于量子进化规划的分布式发电规模优化
本文提出了一种受量子力学启发的新型进化规划,称为量子启发进化规划(QIEP)。该算法由量子个体、量子群和量子宇宙三个层次组成。该算法用于确定分布式发电(DG)在最优位置上的最优规模,以实现损失最小化。利用灵敏度指标确定了分布式发电的位置。为了证明其性能,在损失最小化和计算时间方面与传统进化规划进行了比较研究。此外,还介绍了单DG和多DG的安装,结果表明在损耗最小化和电压分布方面有较好的改善。该研究是在IEEE 69总线测试系统上进行的。
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