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Reinforcement learning-based real-time power management for hybrid energy storage system in the plug-in hybrid electric vehicle

机译:基于增强学习的插电式混合动力汽车混合动力储能系统实时电源管理

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摘要

Power allocation is a crucial issue for hybrid energy storage system (HESS) in a plug-in hybrid electric vehicle (PHEV). To obtain the best power distribution between the battery and the ultracapacitor, the reinforcement learning (RL)-based real-time power-management strategy is raised. Firstly, a long driving cycle, which includes various speed variations, is chosen, and the power transition probability matrices based on stationary Markov chain are calculated. Then, the RL algorithm is employed to obtain a control strategy aiming at minimizing the energy loss of HESS. To reduce the energy loss further, the power transition probability matrices should be updated according to the new application driving cycle and Kullback-Leibler (KL) divergence rate is used to judge when the updating of power management strategy is triggered. The conditions of different forgetting factors and ILL divergence rates are discussed to seek the optimal value. A comparison between the RL-based online power management and the rule -based power management shows that the RL-based online power management strategy can lessen the energy loss effectively and the relative decrease of the total energy loss can reach 16.8%. Finally, the strategy is verified in different conditions, such as temperatures, states of health, initials of SoC and driving cycles. The results indicate that not only can the RL-based real-time power-management strategy limit the maximum discharge current and reduce the charging frequency of the battery pack, but also can decrease the energy loss and optimize the system efficiency.
机译:功率分配是插电式混合动力汽车(PHEV)中混合动力储能系统(HESS)的关键问题。为了获得电池和超级电容器之间的最佳功率分配,提出了基于强化学习(RL)的实时功率管理策略。首先,选择一个包括各种速度变化的长驾驶周期,并计算基于平稳马尔可夫链的功率转移概率矩阵。然后,采用RL算法获得旨在最小化HESS能量损失的控制策略。为了进一步减少能量损失,应根据新的应用程序驱动周期来更新功率转换概率矩阵,并使用Kullback-Leibler(KL)发散率来判断何时触发功率管理策略的更新。讨论了不同遗忘因子和ILL发散率的条件,以寻求最佳值。通过基于RL的在线电源管理和基于规则的电源管理的比较表明,基于RL的在线电源管理策略可以有效地减少能耗,总能耗的相对降低可以达到16.8%。最后,可以在不同条件下验证该策略,例如温度,运行状况,SoC的首字母缩写和行驶周期。结果表明,基于RL的实时功率管理策略不仅可以限制最大放电电流并降低电池组的充电频率,而且可以减少能量损失并优化系统效率。

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