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Multi-verse optimizer for identifying the optimal parameters of PEMFC model

机译:用于识别PEMFC模型最佳参数的多诗词优化器

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In this paper, a recent optimization algorithm named multi-verse optimizer (MVO) is applied to identify the optimal parameters of the proton exchange membrane fuel cell (PEMFC) under certain operating conditions. seven parameters to be optimized are xi(1), xi(2), xi(3), xi(4), lambda, R-c, b in order to obtain polarization curves closely converged to those obtained in the manufacture's datasheet. MVO is characterized by simple construction, less controlling parameters and requiring less effort in computation process. Four sets of experimental voltage stack are taken into consideration; two of them are used for optimization process while the others are used for model validation in the presence of two types of parameter constraints. Comparative studies including statistical parameters with two types of methods are performed; the first methods are reported in the literature like SGA, HGA, HABC, RGA and HADE while the second approaches are programmed such as grey wolf optimizer (GWO), artificial bee colony (ABC), mine blast algorithm (MBA) and flower pollination algorithm (FPA). The obtained results reveal that MVO is the best choice among the others since it presents less fitness function and less convergence time. (C) 2017 Elsevier Ltd. All rights reserved.
机译:在本文中,最近的一种称为多宇宙优化器(MVO)的优化算法被应用于在特定操作条件下识别质子交换膜燃料电池(PEMFC)的最佳参数。 xi(1),xi(2),xi(3),xi(4),lambda,R-c,b七个要优化的参数,以获得与制造商数据表中获得的偏振曲线紧密收敛的偏振曲线。 MVO的特点是结构简单,控制参数更少,计算过程所需的精力更少。考虑了四组实验电压堆栈;其中两个用于优化过程,而其他两个则在存在两种类型的参数约束的情况下用于模型验证。进行包括两种参数的统计参数的比较研究;第一种方法在文献中有所报道,例如SGA,HGA,HABC,RGA和HADE,而第二种方法则已编程,例如灰狼优化器(GWO),人工蜂群(ABC),地雷爆炸算法(MBA)和花授粉算法(FPA)。所得结果表明,MVO是最理想的选择,因为它具有较少的适应度函数和较少的收敛时间。 (C)2017 Elsevier Ltd.保留所有权利。

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