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Improved Coyote Optimization Algorithm for Optimally Installing Solar Photovoltaic Distribution Generation Units in Radial Distribution Power Systems

机译:改进的Coyote优化算法,用于在径向分配动力系统中最佳地安装太阳能光伏分配装置

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This paper proposes an improved coyote optimization algorithm (ICOA) for optimizing the location and sizing of solar photovoltaic distribution generation units (PVDGUs) in radial distribution systems. In the considered problem, four single objectives consisting of total power losses, capacity of all PVDGUs, voltage profile index, and harmonic distortions are minimized independently while satisfying branch current limits, voltage limits, and harmonic distortion limits exactly and simultaneously. The performance of the proposed ICOA method has been improved significantly since two improvements were carried out on the two new solution generations of the conventional coyote optimization algorithm (COA). By finding four single objectives from two IEEE distribution power systems with 33 buses and 69 buses, the impact of each proposed improvement and two proposed improvements on the real performance of ICOA has been investigated. ICOA was superior to COA in terms of capability of finding higher quality solutions, more stable search ability, and faster convergence speed. Furthermore, we have also applied five other metaheuristic algorithms consisting of biogeography-based optimization (BBO), genetic algorithm (GA), particle swarm optimization algorithm (PSO), sunflower optimization (SFO), and salp swarm algorithm (SSA) for dealing with the same problem and evaluating further performance of ICOA. The result comparisons have also indicated the outstanding performance of ICOA because it could find much better results than these methods, especially SFO, SSA, and GA. Consequently, the proposed ICOA is a very effective method for finding the optimal location and capacity of PVDGUs in radial distribution power systems.
机译:本文提出了一种改进的Coyote优化算法(ICOA),用于优化径向分布系统中太阳能光伏分布生成单元(PVDGU)的位置和尺寸。在考虑的问题中,四个由总功率损耗,所有PVDGU,电压曲线索引和谐波失真组成的单个目标,同时满足分支电流限制,电压限制和谐波失真限制,精确且同时。拟议的ICOA方法的性能得到了显着的提高,因为在传统的Coyote优化算法(COA)的两种新的解决方案一代新的解决方案上进行了两种改进。通过使用33个公共汽车和69公共汽车的两个IEEE分配电力系统的四个单一目标,研究了每个提出的改进和两次提出对ICOA的实际性能的影响。在找到更高质量的解决方案,更稳定的搜索能力和更快的收敛速度方面,ICOA优于COA。此外,我们还应用了由基于生物地理的优化(BBO),遗传算法(GA),粒子群优化优化算法(PSO),向日葵优化(SFO)和SALP Swarm算法(SSA)组成的其他五种成群质算法同样的问题和评估ICOA的进一步表现。结果比较也表明了ICOA的出色表现,因为它可以找到比这些方法更好的结果,特别是SFO,SSA和GA。因此,所提出的ICOA是一种非常有效的方法,用于在径向分配动力系统中找到PVDGU的最佳位置和容量。

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