Impact of Predictive Battery Thermal Management for a 48V Hybrid Electric Vehicle

P. G. Anselma, Federico Miretti, E. Spessa
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Abstract

Overheating of battery packs in electrified vehicles is detrimental to their lifetime and performance. Unfortunately, designing a control strategy that ensures battery protection without jeopardizing fuel economy is not a straightforward task. In this paper, we investigate battery temperature-sensitive optimal energy management for a 48V mild-hybrid electric vehicle to prevent overheating with minimal fuel consumption increase. Indeed, this family of hybrid architectures is challenging due to the absence of an active cooling system.In particular, we modeled a p0 parallel-hybrid with a 48V battery pack and we employed dynamic programming to numerically investigate the fuel economy capability while tracking the battery pack temperature.First, we tuned a battery current-constrained powertrain control strategy in order to avoid battery overheating, which could be easily implemented on-board. Then, we implemented a predictive temperature-constrained strategy that exploits the a priori knowledge of driving conditions and temperature constraints to maximize fuel economy.Results show that both strategies are able to meet the battery temperature constraints, although the predictive temperature-constrained control strategy outperforms the current-constrained strategy in terms of fuel economy. This case study demonstrates the theoretical benefits of a predictive battery thermal management for 48V mild hybrids.
预测电池热管理对48V混合动力汽车的影响
电动汽车电池组的过热对其使用寿命和性能都是有害的。不幸的是,设计一种既能保护电池又不损害燃油经济性的控制策略并不是一项简单的任务。在本文中,我们研究了48V轻度混合动力汽车电池温度敏感的最优能量管理,以防止过热,同时最小的油耗增加。事实上,由于缺乏主动冷却系统,这种混合架构系列具有挑战性。特别地,我们建立了一个带有48V电池组的p0并联混合动力车模型,并在跟踪电池组温度的同时,采用动态规划方法对燃油经济性进行了数值研究。首先,我们调整了电池电流受限的动力系统控制策略,以避免电池过热,这可以很容易地在车上实现。然后,我们实施了一种预测温度约束策略,该策略利用驾驶条件和温度约束的先验知识来最大化燃油经济性。结果表明,尽管预测温度约束控制策略在燃油经济性方面优于电流约束策略,但两种策略都能满足电池温度约束。该案例研究证明了48V轻度混合动力电池热管理的理论优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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