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首页> 外文期刊>Vehicular Technology, IEEE Transactions on >Multiobjective Optimization of HEV Fuel Economy and Emissions Using the Self-Adaptive Differential Evolution Algorithm
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Multiobjective Optimization of HEV Fuel Economy and Emissions Using the Self-Adaptive Differential Evolution Algorithm

机译:自适应差分进化算法的混合动力汽车燃油经济性和排放多目标优化

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摘要

This paper describes the application of a novel multiobjective self-adaptive differential evolution (MOSADE) algorithm for the simultaneous optimization of component sizing and control strategy in parallel hybrid electric vehicles (HEVs). Based on an electric assist control strategy, the HEV optimal design problem is formulated as a nonlinear constrained multiobjective problem with competing and noncommensurable objectives of fuel consumption and emissions. The driving performance requirements are considered constraints. The proposed MOSADE approach adopts an external elitist archive to retain nondominated solutions that are found during the evolutionary process. To preserve the diversity of Pareto optimal solutions, a progressive comparison truncation operator based on the normalized nearest neighbor distance is proposed. Moreover, a fuzzy set theory is employed to extract the best compromise solution. Finally, the optimization is performed over the following three typical driving cycles that are currently used in the U.S. and European communities: 1) the file transfer protocol; 2) ECE $+$EUDC; and 3) Urban Dynamometer Driving Schedule. The results demonstrate the capability of the proposed approach to generate well-distributed Pareto optimal solutions of the HEV multiobjective optimization design problem. The comparison with the reported results of genetic-algorithm-based weighting sum approaches and Nondominated Sorting Genetic Algorithm II reveals the superiority of the proposed approach and confirms its potential for optimal HEV design.
机译:本文介绍了一种新颖的多目标自适应差分进化(MOSADE)算法在并行混合电动汽车(HEV)的零部件尺寸和控制策略的同时优化中的应用。基于电动辅助控制策略,混合动力汽车的最佳设计问题被表述为一个非线性约束的多目标问题,其目标是相互竞争且不可估量的燃料消耗和排放。驾驶性能要求被认为是制约因素。拟议的MOSADE方法采用外部精英档案,以保留在进化过程中发现的非主导解决方案。为了保持帕累托最优解的多样性,提出了一种基于归一化最近邻距离的渐进比较截断算子。此外,采用模糊集理论来提取最佳折衷解决方案。最后,在美国和欧洲社区当前使用的以下三个典型行驶周期内进行优化:1)文件传输协议; 2)ECE $ + $ EUDC; 3)城市测功机驾驶时间表。结果证明了该方法能够生成HEV多目标优化设计问题的分布均匀的Pareto最优解。与基于遗传算法的加权总和方法和非支配排序遗传算法II的报告结果进行比较,揭示了该方法的优越性,并证实了其在优化HEV设计中的潜力。

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