Modeling difficulty, time-varying model, and uncertain external inputs are the main challenges for energy management of fuel cell hybrid electric vehicles. In the paper, a fuzzy reinforcement learning-based energy management strategy for fuel cell hybrid electric vehicles is proposed to reduce fuel consumption, maintain the batteries' long-term operation, and extend the lifetime of the fuel cells system. Fuzzy Q-learning is a model-free reinforcement learning that can learn itself by interacting with the environment, so there is no need for modeling the fuel cells system. In addition, frequent startup of the fuel cells will reduce the remaining useful life of the fuel cells system. The proposed method suppresses frequent fuel cells startup by considering the penalty for the times of fuel cell startups in the reward of reinforcement learning. Moreover, applying fuzzy logic to approximate the value function in Q-Learning can solve continuous state and action space problems. Finally, a python-based training and testing platform verify the effectiveness and self-learning improvement of the proposed method under conditions of initial state change, model change and driving condition change.
翻译:建模困难、时间差异模型和不确定的外部投入是燃料电池混合电动车辆能源管理的主要挑战。在论文中,提议对燃料电池混合电动车辆采取模糊强化学习型能源管理战略,以减少燃料消耗,维持电池的长期运行,延长燃料电池系统的寿命。Fuzzy Q 学习是一种无模型强化学习,可以通过与环境互动学习,从而无需建模燃料电池系统。此外,频繁启动燃料电池将减少燃料电池系统的剩余使用寿命。拟议方法通过在奖励强化学习时考虑对燃料电池启动时间的处罚来抑制频繁的燃料电池启动。此外,运用模糊逻辑来估计Q-学习的价值功能可以解决持续的状态和行动空间问题。最后,一个基于Python的培训和测试平台在初始状态变化、模式改变和驱动条件改变的条件下核查拟议方法的有效性和自学改进。