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Reinforcement Learning Based on Equivalent Consumption Minimization Strategy for Optimal Control of Hybrid Electric Vehicles

机译:基于等效消耗最小化策略的加固学习,以实现混合动力电动汽车的最优控制

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摘要

Hybrid electric vehicles, operated by engines and motors, require an energy management strategy to achieve competitive fuel economy performance. The equivalent consumption minimization strategy is a well-known algorithm that can be employed for the energy management of hybrid electric vehicles, based on the concept of the equivalent cost of fossil fuels and electric battery energy. However, in the equivalent consumption minimization strategy approach, a parameter called the equivalent factor should be determined to obtain the optimal control policy. In this study, reinforcement learning based approaches are proposed to determine the equivalent factor. First, we show that the equivalent factor can be indirectly extracted from the reinforcement learning results, using the control action from reinforcement learning for the specific driving cycle. In addition, a novel approach that combines reinforcement learning and the equivalent consumption minimization strategy is proposed, where the equivalent factor is determined based on the interaction between the reinforcement learning agent and driving environment, while the control input is decided by the equivalent consumption minimization strategy based on the determined equivalent factor. A model-based reinforcement learning method is used, and the proposed method is validated for vehicle simulation using a parallel hybrid electric vehicle. The simulation results show that the proposed method can achieve a near-optimal solution, which is close to the global solution obtained with the dynamic programming approach (96.7% compared to dynamic programming result in average), and improved performance of 4.3% in average compared with the existing adaptive equivalent consumption minimization strategy.
机译:由发动机和电机操作的混合动力电动汽车需要能源管理战略来实现竞争性燃料经济性能。等效消耗最小化策略是一种众所周知的算法,可以用于混合动力电动车辆的能量管理,基于化石燃料和电池能量的等效成本的概念。然而,在等效的消耗最小化策略方法中,应确定称为等效因子的参数以获得最佳控制策略。在这项研究中,提出了基于加强学习的方法来确定等效因子。首先,我们表明,使用来自增强件学习的控制作用,可以从增强学习结果中间接地提取等效因子。此外,提出了一种结合增强学习和等效消耗最小化策略的新方法,其中基于增强学习代理和驾驶环境之间的相互作用来确定等效因子,而控制输入由等效的消耗最小化策略决定基于所确定的等价因素。使用基于模型的增强学习方法,并且使用并行混合动力电动车辆验证了所提出的方法。仿真结果表明,该方法可以实现近最优的解决方案,该解决方案靠近通过动态规划方法获得的全局解决方案(96.7%,平均动态规划相比),平均平均增强的性能为4.3%具有现有的自适应等效消耗最小化策略。

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