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A novel state energy spatialization regenerative braking control strategy based on Q- learning algorithm for a super-mild hybrid electric vehicle

机译:基于Q学习算法的超温和混合动力电动汽车的新型能量空间化制动控制策略

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摘要

Most of the existing regenerative braking control strategies maintain the battery balance by the state of charge (SOC) penalty function. However, the SOC penalty function only realizes the instantaneous balance and ignores the global balance. To solve this problem, this paper proposes a novel state energy spatialization regenerative braking control strategy. Firstly, the battery energy is converted from the time domain to the space domain at each state. Based on the principle of balance between driving energy consumption and braking recovery energy, the mathematical model of referenced recovery energy is established. Then, considering the maximum energy recovery and the global battery energy balance, the return function is formulated, which takes the referenced recovery energy as the constraint condition. Subsequently, the proposed strategy is optimized by Q-learning algorithm and the optimal motor torques of regenerative braking are obtained. Finally, the Kullback-Leibler (KL) divergence rate is adopted to recognize the type of actual driving cycle, and the online optimal motor torque is obtained by looking up the corresponding table. Using the MATLAB/Simulink software, the simulation model of real working condition in Yubei district of Chongqing is established. The simulation results show that the SOC variation of the proposed strategy is 33.5% and 20.1% lower than that of the maximum energy recovery and DP strategy, respectively. The results indicate the proposed strategy maintains the global balance of battery energy better than the conventional strategy.
机译:大多数现有的再生制动控制策略通过充电状态(SOC)惩罚功能来维持电池余额。但是,SoC惩罚功能只实现了瞬时平衡并忽略了全局平衡。为了解决这个问题,本文提出了一种新的状态能量空间化再生制动控制策略。首先,电池能量从时域转换为每个状态的空间域。基于驱动能耗和制动恢复能量之间的平衡原理,建立了参考恢复能量的数学模型。然后,考虑到最大能量回收和全球电池能量平衡,配制了返回功能,从而将参考恢复能量作为约束条件。随后,通过Q学习算法优化所提出的策略,并获得再生制动的最佳电动机扭矩。最后,采用Kullback-Leibler(KL)发散速率来识别实际驾驶循环的类型,并且通过查找相应的表来获得在线最佳电动机扭矩。利用MATLAB / SIMULINK软件,建立了重庆渝北区实际工作条件的仿真模型。仿真结果表明,拟议策略的SOC变异分别比最大能量回收和DP策略低33.5%和20.1%。结果表明,拟议的策略比传统战略更好地保持电池能量的全球平衡。

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