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引用次数: 0
摘要
强化学习(RL)由于其在研究多车辆和动态环境之间的相互作用方面的优势,已经吸引了大量的研究工作来指导自动驾驶汽车(AV)寻找无碰撞路径。本研究部署了一种基于深度q网络(DQN)的RL算法,该算法带有奖励整形,用于在多车辆环境中控制自我自动驾驶汽车。具体来说,RL算法的状态空间取决于期望的目的地、自我车辆的位置和方向以及系统中其他车辆的位置。所提出的强化学习算法的训练时间比目前大多数基于图像的算法要短得多。RL算法还提供了一个可扩展的框架,以包括环境中不同数量的车辆,并且可以很容易地适应不同的地图,而无需改变RL算法的设置。在Cars Learn to Act (CARLA)模拟器中模拟了三种场景,以检验RL算法在引导自动驾驶汽车在直线和弯曲道路上与多辆车辆交互时的效果。我们的研究结果表明,在所有测试场景中,自我自动驾驶汽车都可以在5000集内学会到达目的地。
Reinforcement Learning-Based Guidance of Autonomous Vehicles
Reinforcement learning (RL) has attracted significant research efforts to guide an autonomous vehicle (AV) for a collision-free path due to its advantages in investigating interactions among multiple vehicles and dynamic environments. This study deploys a Deep Q-Network (DQN) based RL algorithm with reward shaping to control an ego AV in an environment with multiple vehicles. Specifically, the state space of the RL algorithm depends on the desired destination, the ego vehicle’s location and orientation, and the location of other vehicles in the system. The training time of the proposed RL algorithm is much shorter than most current image-based algorithms. The RL algorithm also provides an extendable framework to include a varying number of vehicles in the environment and can be easily adapted to different maps without changing the setup of the RL algorithm. Three scenarios were simulated in the Cars Learn to Act (CARLA) simulator to examine the effects of the proposed RL algorithm on guiding the ego AV interacting with multiple vehicles on straight and curvy roads. Our results showed that the ego AV could learn to reach its destination within 5000 episodes for all scenarios tested.