考虑优化目标时域特征的增程混合动力汽车能量管理策略

Xu Wang, Ying Huang, Yongliang Li
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引用次数: 1

摘要

提出了一种考虑优化目标时域特性的自适应等效油耗最小化策略(A-ECMS)。采用短时域车速预测来调整与瞬态条件相关的惩罚系数,以减少发动机频繁瞬态带来的不利影响。存储的长时间域历史车速数据用于调整与SOC轨迹相关的惩罚系数,从而在保持SOC的同时确保更好的燃油经济性。将ECMS与本文提出的A-ECMS进行比较,仿真结果表明,在不同的时间域设置不同目标的惩罚系数,可以提高燃油经济性,有效减少发动机启停次数,从而达到减少污染物排放的目的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Energy management strategy of extended-range hybrid electric vehicle considering time-domain features of optimization targets
An adaptive equivalent fuel consumption minimization strategy (A-ECMS) considering time domain characteristics of the optimization targets is proposed in this paper. Vehicle speed prediction in short time domain is used to adjust the penalty coefficient related to transient conditions, so as to reduce the adverse effects of frequent engine transients. The stored long-time domain historical vehicle speed data is used to adjust the penalty coefficient related to SOC trajectory, so that the SOC can be maintained while ensuring better fuel economy. Comparing the ECMS with the A-ECMS proposed in this paper, the simulation results show that setting up the penalty coefficients of different targets in different time domains can improve the fuel economy and effectively reduce the number of engine starts and stops, thus achieving the purpose of reducing pollutant emissions.
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