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Optimal Design of Photovoltaic–Battery Systems Using Interval Type-2 Fuzzy Adaptive Genetic Algorithm

机译:基于区间2型模糊自适应遗传算法的光伏电池系统优化设计

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? Many countries have been triggered to provide a new energy policy which promotes renewable energy applications because of public awareness to reduce the global warming and rising in fuel prices. Renewable energy sources such as solar energy are green and promising energy in the future for widespread use. Combining renewable energy sources with battery makes electricity supply more economical and reliable to meet all possible load level. This paper proposed a new hybrid method to optimize Photovoltaic (PV)-Battery systems. The proposed method was named Interval type-2 fuzzy adaptive genetic algorithm (IT2FAGA). Genetic algorithm (GA) is one of modern optimization techniques that has been successfully applied in various areas of power systems. To enhance the ability of GA to prevent trapping in? local optima and increase convergence in a global optima, the crossover probability (pcross) and the mutation probability (pmut), parameters in GA, are tuned using interval type-2 fuzzy logic (IT2FL). Objective function used in this paper was the annual cost of sytem (ACS) consisting of the annual capital cost (ACC), annual replacement cost (ARC), annual operation cost maintenance (AOM). The proposed method was also compared to fuzzy adaptive genetic algorithm (FGA) and standard genetic algorithm (SGA). Simulation results indicated that the proposed<
机译:?由于公众意识到减少全球变暖和燃料价格上涨的意识,许多国家被触发提供新能源政策以促进可再生能源的应用。太阳能等可再生能源是绿色的,并且有望在未来得到广泛使用。将可再生能源与电池结合使用,可以更加经济,可靠地满足所有可能的负荷水平。本文提出了一种新的混合方法来优化光伏(PV)-电池系统。该方法被称为区间2型模糊自适应遗传算法(IT2FAGA)。遗传算法(GA)是现代优化技术之一,已成功应用于电力系统的各个领域。增强GA防止被困的能力?局部最优和全局最优增加收敛性,使用区间2型模糊逻辑(IT2FL)调整遗传算法中的交叉概率(pcross)和变异概率(pmut)。本文使用的目标函数是系统的年度成本(ACS),包括年度资本成本(ACC),年度更换成本(ARC),年度运营成本维护(AOM)。将该方法与模糊自适应遗传算法(FGA)和标准遗传算法(SGA)进行了比较。仿真结果表明,提出的<

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