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Operating Point Optimization of Auxiliary Power Unit Based on Dynamic Combined Cost Map and Particle Swarm Optimization

机译:基于动态组合成本图和粒子群算法的辅助动力装置工作点优化

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Series hybrid electric vehicles improvements in fuel consumption and emissions directly depend on the operating point of the auxiliary power unit (APU). A new APU operating point optimization approach based on dynamic combined cost map (DCM) and particle swarm optimization (PSO) is presented in this paper. The influence of coolant temperature, catalyst temperature, and air/fuel (A/F) ratio on fuel consumption characteristics and HC, CO, NOx emission characteristics are quantitatively analyzed first. Then, the DCM is derived by combining the individual cost maps with predefined weighting factors, so as to balance the potentially conflicting goals of fuel consumption and emissions reduction in the choice of operating point. The PSO is utilized to search the optimum APU operating point in the DCM. Finally, bench experiments under three typical driving cycles show that, compared with the results of the traditional static steady-state fuel consumption map-based APU operating point optimization approach, the proposed DCM and PSO-based approach shows significant improvements in emission performance, at the expense of a slight drop in fuel efficiency.
机译:混合动力电动汽车在燃料消耗和排放方面的改进直接取决于辅助动力装置(APU)的工作点。提出了一种基于动态组合成本图(DCM)和粒子群算法(PSO)的APU工作点优化方法。首先定量分析了冷却液温度,催化剂温度和空燃比(A / F)对燃油消耗特性的影响,并对HC,CO,NOx排放特性进行了定量分析。然后,通过将各个成本图与预定义的权重因子相结合来得出DCM,以便在选择工作点时平衡潜在的相互矛盾的燃料消耗和减排目标。 PSO用于在DCM中搜索最佳APU工作点。最后,在三个典型驾驶循环下的实验表明,与传统的基于静态稳态油耗图的APU工作点优化方法的结果相比,基于DCM和PSO的拟议方法在排放性能方面有显着改善。燃油效率略有下降的代价。

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