一种新的基于regen的混合动力在线控制能量管理策略

Lucas Bruck, A. Emadi
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摘要

制造电动汽车的日益增长的必要性也代表了控制这种动力系统的控制器开发的增加。本文以等效消耗最小化策略(ECMS)方法为基础,提出了一种基于区域的等效消耗最小化策略(R-ECMS)。基于优化的算法在计算等效燃料成本时考虑了再生制动提供的充电。虽然基于ECMS,但R-ECMS没有许多常见的限制,例如其性能受其优化的驱动循环的限制,以及对电荷耗尽情况有额外控制规则的必要性。结果表明,R-ECMS方法更加灵活,能够提供持续充电和燃油效率的性能,这是插电式混合动力车的关键。此外,在优化情况下,其燃油效率略高于ECMS算法在相同优化任务下的燃油效率。尽管如此,必须进行制动轮廓预测研究,以便在实际应用中充分利用R-ECMS算法的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Regen-based Energy Management Strategy for Online Control of Hybrid Powertrains
The increasing necessity of manufacturing electrified vehicles also represent an increase in developing controllers that govern such powertrains. This paper uses the equivalent consumption minimization strategy (ECMS) method as the backbone of a novel approach named regen-based equivalent consumption minimization strategy (R-ECMS). The optimization-based algorithm accounts for the charge provided by the regenerative braking when computing the equivalent fuel cost. Although based on the ECMS, the R-ECMS does not share many of the usual limitations, such as having its performance constrained to drive cycles it is optimized for, and the necessity of having extra control rules for charge depletion situations. The results show that the R-ECMS method is more flexible and able to deliver charge sustaining and fuel efficient performances, which is key for plug-in hybrids. Besides, its fuel efficiency for the optimized case has shown to be slightly higher than the fuel efficiency achieved by the ECMS algorithm for the same optimized mission. Nonetheless, research on brake profile prediction must be conducted to allow leveraging the benefits of the R-ECMS algorithm in real applications.
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