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Reinforcement Learning of Adaptive Energy Management With Transition Probability for a Hybrid Electric Tracked Vehicle

机译:混合动力履带车辆具有过渡概率的自适应能量管理的强化学习

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摘要

A reinforcement learning-based adaptive energy management (RLAEM) is proposed for a hybrid electric tracked vehicle (HETV) in this paper. A control oriented model of the HETV is first established, in which the state-of-charge (SOC) of battery and the speed of generator are the state variables, and the engine's torque is the control variable. Subsequently, a transition probability matrix is learned from a specific driving schedule of the HETV. The proposed RLAEM decides appropriate power split between the battery and engine-generator set (EGS) to minimize the fuel consumption over different driving schedules. With the RLAEM, not only is driver's power requirement guaranteed, but also the fuel economy is improved as well. Finally, the RLAEM is compared with the stochastic dynamic programming (SDP)-based energy management for different driving schedules. The simulation results demonstrate the adaptability, optimality, and learning ability of the RLAEM and its capacity of reducing the computation time.
机译:本文提出了一种基于强化学习的自适应能源管理(RLAEM)的混合动力电动履带车辆(HETV)。首先建立HETV的面向控制的模型,其中电池的充电状态(SOC)和发电机的速度是状态变量,而发动机的扭矩是控制变量。随后,从HETV的特定驾驶时间表中学习转变概率矩阵。拟议的RLAEM决定在电池组和发动机发电机组(EGS)之间进行适当的功率分配,以最大程度地减少不同行驶时间表下的燃油消耗。使用RLAEM,不仅可以保证驾驶员的动力要求,而且还可以改善燃油经济性。最后,将RLAEM与基于随机动态规划(SDP)的能源管理进行比较,以适用于不同的驾驶时间表。仿真结果证明了RLAEM的适应性,最优性和学习能力以及减少计算时间的能力。

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