The Multi-objective Optimization of Cost, Energy Consumption and Battery Degradation for Fuel Cell-Battery Hybrid Electric Vehicle

Jiageng Ruan, Bin Zhang, Bendong Liu, Shuo Wang
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引用次数: 6

Abstract

As one of the promising solutions to air pollution and energy crisis caused by the transportation sector, fuel cell hybrid electric vehicles (FC HEVs) attract great attention around the world. Given the under power of the fuel cell to meet the requirements of daily driving, a power supplement system, generally battery, is essential to make up a multi-power hybrid powertrain. In this paper, the power matching strategies are optimized, considering the system cost, energy efficiency, and battery degradation, by particle swarm optimization (PSO) algorithm. Based on the change of the degree of hybridization (DOH), two hybrid systems are proposed, and the corresponding optimal hybridization degrees of the hybrid powertrain are found under four groups of weighting factors. Based on multi-objective optimization, the optimal degrees powertrain hybridization of the hybrid are proposed to extend battery life, improve energy consumption, and reduce powertrain cost according to individual requirements.
燃料电池混合动力汽车成本、能耗和电池退化多目标优化
燃料电池混合动力汽车(FC hev)作为解决交通领域大气污染和能源危机的有希望的解决方案之一,受到了世界各国的广泛关注。考虑到燃料电池的功率不足,以满足日常驾驶的要求,一个动力补充系统,通常是电池,是必不可少的,以组成一个多动力混合动力系统。在综合考虑系统成本、能效和电池退化等因素的基础上,采用粒子群优化算法对功率匹配策略进行优化。基于混合度的变化,提出了两种混合动力系统,并在四组加权因子下找到了相应的混合动力系统的最优混合度。在多目标优化的基础上,根据个性化需求,提出了混合动力汽车动力总成的最优混合度,以延长电池寿命、提高能耗、降低动力总成成本。
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