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Hybrid Electric Vehicle Powertrain Control Based on Reinforcement Learning

机译:基于强化学习的混合动力汽车动力总成控制

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摘要

Hybrid Electric Vehicles (HEVs) achieve better fuel economy than conventional vehicles by employing two different power sources: a mechanical engine and an electrical motor. These power sources have conventionally been controlled by a rule-based algorithm or optimization-based control. Besides these conventional approaches, reinforcement learning-based control algorithms have actively been studied recently. To investigate the benefits of the reinforcement learning-based approach, a model -free control algorithm for an HEV is proposed in this article using a Twin Delayed Deep Deterministic policy gradient (TD3), which is an online, off-policy Deep Reinforcement Learning (DRL) algorithm. The effectiveness of the proposed algorithm is studied by applying the TD3 algorithm to a 48V mild HEV (MHEV) model and the optimal operating strategy is obtained for maximum fuel economy. The simulation results show that the proposed TD3-based algorithm improves the average fuel economy by 1.89 on standard driving cycles and 2.20 on real-world driving cycles when compared to the Deep Deterministic Policy Gradient (DDPG) algorithm.
机译:混合动力电动汽车(hev)达到更好比传统汽车燃油经济性采用两种不同的力量来源:a机械引擎和一个电机。传统的电源控制通过一个基于规则的算法或文中针对控制。基于强化学习控制算法最近积极研究。调查钢筋的好处上优于方法,无模型控制本文提出算法的戊肝病毒使用双延迟深度确定的政策梯度(TD3),这是一个在线,off-policy深入强化学习(DRL)算法。该算法的有效性研究了TD3算法应用到48 v轻微的戊肝病毒(MHEV)模型和最优操作策略是获得最大的燃油经济性。仿真结果表明,提出的TD3-based算法提高了平均燃料经济1.89%标准周期和开车2.20%真实的驾驶周期相比深决定性策略梯度(DDPG)

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