论文标题
电动汽车中基于AI的能源管理的经验分析:有关增强学习的案例研究
Empirical Analysis of AI-based Energy Management in Electric Vehicles: A Case Study on Reinforcement Learning
论文作者
论文摘要
基于强化学习(基于RL的)能源管理策略(EMS)被认为是具有多种电源的电动汽车能源管理的有前途解决方案。已经显示,关于节能和实时性能的能源管理问题中的传统方法表现出色。但是,以前的研究尚未系统地检查基于RL的EMS的基本要素。本文介绍了插电式混合动力汽车(PHEV)和燃料电池电动汽车(FCEV)中基于RL的EMS的经验分析。经验分析在四个方面开发:算法,感知和决策粒度,超参数和奖励功能。结果表明,与其他算法相比,在整个驾驶周期内,非政策算法有效地开发了一种更省油的解决方案。改善感知和决策粒度并不能产生更理想的节能解决方案,而是更好地平衡电池功率和燃料消耗。基于瞬时电荷状态(SOC)变化的等效能量优化目标是参数敏感的,可以帮助RL-EMSS实现更有效的能量成本策略。
Reinforcement learning-based (RL-based) energy management strategy (EMS) is considered a promising solution for the energy management of electric vehicles with multiple power sources. It has been shown to outperform conventional methods in energy management problems regarding energy-saving and real-time performance. However, previous studies have not systematically examined the essential elements of RL-based EMS. This paper presents an empirical analysis of RL-based EMS in a Plug-in Hybrid Electric Vehicle (PHEV) and Fuel Cell Electric Vehicle (FCEV). The empirical analysis is developed in four aspects: algorithm, perception and decision granularity, hyperparameters, and reward function. The results show that the Off-policy algorithm effectively develops a more fuel-efficient solution within the complete driving cycle compared with other algorithms. Improving the perception and decision granularity does not produce a more desirable energy-saving solution but better balances battery power and fuel consumption. The equivalent energy optimization objective based on the instantaneous state of charge (SOC) variation is parameter sensitive and can help RL-EMSs to achieve more efficient energy-cost strategies.