全局和局部意识:结合强化学习和基于模型的控制来避免碰撞

IF 4.6 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE IEEE Open Journal of Intelligent Transportation Systems Pub Date : 2024-07-05 DOI:10.1109/OJITS.2024.3424587
Luman Zhao;Guoyuan Li;Houxiang Zhang
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引用次数: 0

摘要

在这项研究中,我们重点开发了一种用于避免多船碰撞的自主系统。所提出的方法结合了基于深度强化学习(DRL)的全局路径规划和局部运动控制,以提高计算效率并减轻对航向角变化的敏感性。为此,首先使用 DRL 学习将目标船只的可观测状态映射到预测航点序列的策略。这项学习任务旨在生成特定轨迹,同时避免与目标船只发生碰撞,以符合防止海上碰撞的国际法规(COLREGs)。学习到的策略在导航过程中用作全局路径规划器。其次,应用视线(LOS)制导系统,根据按照策略生成的无碰撞轨迹计算所需的航向指令。最后,实施基于模型的控制策略,在满足所需的指令的同时,控制飞船在无碰撞空间内达到特定目标。我们以自主水面飞行器为例演示了该方法的性能。与其他方法相比,我们提出的控制方法能提供更稳定、更平滑的操纵效果。
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Global and Local Awareness: Combine Reinforcement Learning and Model-Based Control for Collision Avoidance
In this research, we focus on developing an autonomous system for multiship collision avoidance. The proposed approach combines global path planning based on deep reinforcement learning (DRL) and local motion control to improve computational efficiency and alleviate the sensitivity to heading angle changes. To achieve this, firstly, DRL is used to learn a policy that maps observable states of target ships to a sequence of predicted waypoints. This learning task aims to generate a specific trajectory while avoiding collision with target ships complying with the international regulations for preventing collisions at sea (COLREGs). The learned policy is used as a global path planner during navigation. Secondly, the line-of-sight (LOS) guidance system is applied to calculate the desired course command based on the collision-free trajectory generated according to the policy. Lastly, a model-based control strategy is implemented to control the ship to the specific goal in collision-free space while satisfying the desired commands. We demonstrate the performance of the approach using an example of an autonomous surface vehicle. In comparison to other methods, our proposed control can provide a more stable and smoother maneuvering effect.
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