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A Comparison of Performance of GA, PSO and Differential Evolution Algorithms for Dynamic Phase Reconfiguration Technology of a Smart Grid

机译:智能电网动态相位重构技术的GA,PSO和差分进化算法性能比较

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Increasing penetration of Distributed Generations (Photovoltaic solar energy (PV), Wind energy, and Battery Energy Storage) and PEVs (Plug-in Electric Vehicles) into smart grid induce network imbalance which reduces power quality. The uncertainty of demand-generation requires balancing for mitigating network imbalance. Several researchers have used various optimization methods for mitigating unbalance. Moreover, a few researchers have done comparative studies of optimization methods for mitigating unbalance till now. This paper proposes a method to mitigate unbalance and reduce the total power loss by optimizing load distribution among phases. This paper compares the performance of Genetic Algorithm (GA), Particle Swarm Optimization (PSO) and Differential Evolution (DE) algorithms on the application of phase balancing. Finally, the efficacy of these algorithms are evaluated for the proposed unbalance mitigation technique, and it is found that the proposed technique using DE algorithm can reduce a significant amount of unbalance at all the buses of the distribution grid with less computational effort.
机译:分布式发电(光伏太阳能(PV),风能和电池储能)和PEV(插电式电动汽车)越来越多地渗透到智能电网中,这会导致网络不平衡,从而降低电能质量。需求生成的不确定性需要平衡以减轻网络不平衡。一些研究人员已使用各种优化方法来缓解不平衡。而且,到目前为止,一些研究人员已经进行了关于减轻不平衡的优化方法的比较研究。本文提出了一种通过优化相间负载分配来减轻不平衡并减少总功率损耗的方法。本文比较了遗传算法(GA),粒子群优化算法(PSO)和差分进化算法(DE)在相位平衡应用中的性能。最后,针对提出的不平衡缓解技术评估了这些算法的有效性,发现使用DE算法的提议技术可以用较少的计算量减少配电网所有总线上的显着不平衡量。

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