基于ddpg的自动驾驶路径规划方法

Yimin Li, Yanfang Chen, Tianru Li, Jingtao Lao, Xuefang Li
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引用次数: 1

摘要

本工作开发了一种基于ddpg的路径规划算法,该算法将人工势场法与强化学习相结合,可以快速自主地学习和生成无障碍路径。采用车辆运动学模型来描述自动驾驶车辆的运动,并考虑障碍物、道路边界和参考路径点的势场函数来构建强化学习奖励,使车辆能够在避障、防止驶离道路和遵循参考路线之间实现权衡。与现有的路径规划算法相比,该方法能够在不同的驾驶环境下自主学习,更适合自动驾驶车辆。仿真结果进一步验证了该算法的有效性和自适应性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DDPG-Based Path Planning Approach for Autonomous Driving
The present work develops a DDPG-based path planning algorithm that integrates the artificial potential field method into reinforcement learning to learn and generate an obstacle-free path quickly and autonomously. The vehicle kinematic model is adopted to describe the motion of autonomous vehicles, and the potential field function of obstacles, road boundaries as well as reference waypoints are considered to construct rewards of reinforcement learning, which enables the vehicle to realize the tradeoff between avoiding obstacles, preventing driving off the road and following the reference route. In contrast to the existent path planning algorithms, the proposed approach is able to learn autonomously in different driving environments, which is more suitable to autonomous vehicles. Moreover, simulations are provided to further demonstrate the effectiveness and adaptability of the proposed algorithm.
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