Optimal DG Allocation Based on Pay-back Period by a Proposed Modification for Coronavirus Herd Immunity Optimization

T. Boghdady, E. Eldin, Howaida M. Ragab, A. Elmorshedy
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Abstract

Distribued Generations (DG) have economic, financial, and environmental benefits. DG reduces power losses in the distribution system but has a negative impact on the protection devices. In this article, the IEEE 33 bus system will be used and tested by adding up to three DG units using MATLAB/SIMULINK software. the optimization techniques that will be used are Grey Wolf Optimizer, Whale Optimization Algorithm, Genetic Algorithm, and Coronavirus Herd Immunity or COVID-19 optimization techniques to select the optimal site and size of the DG units based on the lowest pay-back period considering the voltage limits and power losses. The paper proposes a modified mutation operator for COVID-19 based on Gaussian and Cauchy mutations to have better performance and lower variance. The proposed algorithm is compared with the other optimization techniques. The proposed algorithm achieved better results, which proved to have competitive performance with state-of-the-art evolutionary algorithms.
基于回报期的冠状病毒群体免疫优化DG优化分配
分布式代(DG)具有经济、金融和环境效益。DG减少了配电系统的功率损耗,但对保护装置有负面影响。在本文中,将使用IEEE 33总线系统,并通过使用MATLAB/SIMULINK软件将最多三个DG单元相加进行测试。采用灰狼优化算法、鲸鱼优化算法、遗传算法和冠状病毒群体免疫(COVID-19)优化技术,在考虑电压限值和功率损耗的情况下,以最短的投资回放期为基础,选择DG机组的最优选址和规模。本文提出了一种基于高斯和柯西突变的改进的COVID-19突变算子,具有更好的性能和更小的方差。将该算法与其他优化技术进行了比较。该算法取得了较好的结果,与目前最先进的进化算法具有竞争力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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