Minimizing Energy Loss Decisions for Green Driving Platoon

Zhiru Gu, Zhongwei Liu, Ziji Ma, Feilong Wang, Xiaogang Zhang
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Abstract

This paper presents the application of reinforcement learning (RL) in the vehicle communication simulation framework (Veins). Reinforcement learning methods for energy saving and greening in the field of autonomous driving have rarely been studied. Under a CACC platoon of green environmental protection, we investigate the use of reinforcement learning algorithms to train the behavior of member vehicles in the event of a serious collision in the front vehicle, so that platoon members can minimize collision damage and energy consumption from behavior which is not in line with the green theme. In terms of energy consumption metrics, the gradient policy algorithm has good convergence in computing the energy consumption problem. It is a feasible training decision planning algorithm for solving the minimization of energy consumption caused by decision behavior in platoon avoidance behavior.
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最小化绿色驾驶排的能量损失决策
本文介绍了强化学习(RL)在车辆通信仿真框架(vein)中的应用。在自动驾驶领域,针对节能和绿化的强化学习方法研究较少。在绿色环保的CACC组队中,我们研究了使用强化学习算法来训练组队车辆在前车发生严重碰撞时的行为,使组队车辆在不符合绿色主题的行为下最大限度地减少碰撞损伤和能量消耗。在能耗指标方面,梯度策略算法在计算能耗问题方面具有较好的收敛性。它是一种可行的训练决策规划算法,用于解决排回避行为中决策行为导致的能量消耗最小化问题。
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