基于斜坡合并决策模型的深度强化学习算法

Zeyu Chen, Yu Du, Anni Jiang, Siqi Miao
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引用次数: 0

摘要

匝道并线是自动驾驶中一个复杂的交通场景。由于驾驶环境的不确定性,大多数基于规则的模型无法解决此类问题。本文设计了一种基于深度确定性策略梯度算法(DDPG)的匝道并线决策模型来解决车辆并线问题。针对以往深度强化学习算法在智能车辆匝道并线领域存在的算法并线速度慢、鲁棒性差导致智能车辆并线成功率低等问题,首先,我们引入一个简单的递归单元(SRU)用于提取智能车辆状态和环境特征,并使用 DDPG 算法进行智能车辆决策。其次,通过使用优先采样代替均匀采样,改进了 DDPG 算法的经验回放池。最后,在训练过程中设置了多目标奖励函数,考虑了安全和效率等因素。仿真实验表明,改进后的算法提高了模型的并线速度,降低了碰撞率,使车辆能做出更合理的决策。此外,通过与先进方法的比较,证明了该方法的优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep reinforcement learning algorithm based ramp merging decision model
On-ramp merge is a complex traffic scenario in autonomous driving. Because of the uncertainty of the driving environment, most rule-based models cannot solve such a problem. This paper designs a ramp merging decision model based on deep deterministic policy gradient algorithm (DDPG) to solve the vehicle merging problem. To address the problems of slow algorithm merging and poor robustness of previous deep reinforcement learning algorithms in the field of intelligent vehicle ramp merging leading to the low success rate of intelligent vehicle merging, first, we introduce a simple recurrent unit (SRU) for extracting intelligent vehicle states and environment features and use the DDPG algorithm for intelligent vehicle decision making. Second, the experience playback pool of DDPG algorithm is improved by using priority sampling instead of uniform sampling. Finally, a multi-objective reward function is set up during training, considering factors such as safety and efficiency. The simulation experiments show that the improved algorithm improves the merging speed of the model, reduces the collision rate, and enables the vehicle to make more reasonable decisions. In addition, the superiority of the method is demonstrated by comparing with the advanced method.
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