Parameter Optimization of Hybrid Fuel Cell System Based on Genetic Algorithm

Lai Lianfeng, Chang Ting-cheng
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引用次数: 1

Abstract

Based on the power system parameter optimization of the optimization problem of genetic algorithm, genetic algorithm was adopted to optimize the control algorithm parameters. Then the power of fuel cell, the number of lithium batteries as well as the motor power were taken as the design variables, power performance and economic efficiency as the optimization objectives, and then the maximum gradient and maximum speed were regarded as the constraint conditions. The relevant parameters in the control strategy of the whole vehicle power system were obtained after genetic optimization. The deviation of the maximum speed was 0.07%, which basically leveled off. The range increased from 283.4km to 309.1km, which somewhat increased. While the gradeability increased by 16.2%, which greatly improved. The optimization results indicated that it was feasible and reliable to apply this optimization scheme to the parameter optimization of hybrid fuel cell automobile power system.
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基于遗传算法的混合燃料电池系统参数优化
针对电力系统参数优化中的遗传算法优化问题,采用遗传算法对控制算法参数进行优化。然后以燃料电池功率、锂电池数量和电机功率为设计变量,以功率性能和经济性为优化目标,以最大梯度和最大转速为约束条件。通过遗传优化得到整车动力系统控制策略中的相关参数。最大转速偏差为0.07%,基本趋于平稳。射程从283.4公里增加到309.1公里,略有增加。可分级性提高了16.2%,大大提高了。优化结果表明,将该优化方案应用于混合动力燃料电池汽车动力系统参数优化是可行、可靠的。
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