一种轻度混合动力汽车优化的验证方法

Markus Dirnberger, H. Herzog
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引用次数: 1

摘要

系统优化是一项具有挑战性的任务。在此过程中,模型和优化算法的调整将影响其成功与否。因此,本文介绍了一种分析方法来验证优化过程所获得的结果。这是通过将观察到的轻度混合动力电动汽车(HEV)推入电机的恢复模式和发电机模式来完成的。现在,物理方程提供了一种验证方法,可以计算由于混合动力汽车动力系统中使用的电机效率变化而产生的额外二氧化碳排放量。在优化过程中,电机的效率变化是在测量效率图上通过增加和减少±10%来完成的。分析验证方法应易于实施,并能够验证优化过程的结果,因此应使用电机的中等效率。与其他方法相比,只考虑二氧化碳排放量的变化。这使得以一种简单的方式对内燃机(ICE)进行建模成为可能。最后,将分析验证方法的结果与优化过程的结果进行了比较。
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A verification approach for the optimization of mild hybrid electric vehicles
Optimization of systems is a challenging task. During this process adjustments of the model and the optimization algorithm will influence its success. Therefore, this paper introduces an analytical approach to verify the results achieved by an optimization process. This is done by pushing the observed mild hybrid electric vehicle (HEV) into the recuperation mode and the generator mode of the electrical machine. Now physical equations enable a verification approach to calculate the additional CO2 emission due to a variation of the efficiency of the electrical machine used in the power train of the HEV. The efficiency variation of the electrical machine is done on a measured efficiency map by increasing and reducing it by ±10% for the optimization process. The analytical verification approach should be easy to implement and enable to verify the results of the optimization process therefore a mid efficiency of the electrical machine is used. Compared to other approaches only changes of the CO2 emission are considered. This enables to model the internal combustion engine (ICE) in an easy way. Finally, the results of the analytical verification approach are compared to the results achieved by the optimization process.
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