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Energy management based on reinforcement learning with double deep Q- learning for a hybrid electric tracked vehicle

机译:基于强化学习和双深度Q学习的混合动力电动履带车能源管理

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摘要

An energy management strategy, based on double deep Q-learning algorithm, is proposed for a dual-motor driven hybrid electric tracked-vehicle. Typical model framework of tracked-vehicle is established where the lateral dynamic can be taken into consideration. For the propose of optimizing the fuel consumption performance, a double deep Q-learning-based control structure is put forward. Compared to conventional deep Q-learning, the proposed strategy prevents training process falling into the overoptimistic estimate of policy value and highlights its significant advantages in terms of the iterative convergence rate and optimization performance. Unique observation states are selected as input variables of reinforcement learning algorithm in view of revealing tracked-vehicles characteristic. The conventional deep Q-learning and dynamic programming are also employed and compared with the proposed strategy for different driving schedules. Simulation results demonstrate the fuel economy of proposed methodology achieves 7.1% better than that of conventional deep Q learning-based strategy and reaches 93.2% level of Dynamic programing benchmark. Moreover, the designed algorithm has a good performance in battery SOC retention with different initial values.
机译:提出了一种基于双深度Q学习算法的能量管理策略,用于双电机驱动的混合动力履带车辆。建立了履带车辆的典型模型框架,其中可以考虑横向动力。为了优化油耗性能,提出了一种基于双深度Q学习的控制结构。与传统的深度Q学习相比,该策略可以防止训练过程陷入对政策价值的过度乐观估计,并突出其在迭代收敛速度和优化性能方面的显着优势。考虑到跟踪车辆的特征,选择独特的观察状态作为强化学习算法的输入变量。还采用了常规的深度Q学习和动态编程,并将其与针对不同驾驶计划的拟议策略进行了比较。仿真结果表明,所提方法的燃油经济性比传统的基于深度Q学习的策略高7.1%,并达到了动态编程基准的93.2%。此外,所设计的算法在不同初始值下的电池SOC保持性能良好。

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