强化学习
避碰
钢筋
碰撞
计算机科学
心理学
人工智能
计算机安全
社会心理学
作者
Pu Feng,Rongye Shi,Size Wang,Junkang Liang,Xin Yu,Simin Li,Wenjun Wu
出处
期刊:IEEE robotics and automation letters
日期:2024-10-29
卷期号:9 (12): 11138-11145
被引量:15
标识
DOI:10.1109/lra.2024.3487491
摘要
Reinforcement learning (RL) has shown great promise in addressing multi-agent collision avoidance challenges. However, existing RL-based methods often suffer from low training efficiency and poor action safety. To tackle these issues, we introduce a physics-informed reinforcement learning framework equipped with two modules: a Potential Field (PF) module and a Multi-Agent Multi-Level Safety (MAMLS) module. The PF module uses the Artificial Potential Field method to compute a regularization loss, adaptively integrating it into the critic's loss to enhance training efficiency. The MAMLS module formulates action safety as a constrained optimization problem, deriving safe actions by solving this optimization. Furthermore, to better address the characteristics of multi-agent collision avoidance tasks, multi-agent multi-level constraints are introduced. The results of simulations and real-world experiments showed that our physics-informed framework offers a significant improvement in terms of both the efficiency of training and safety-related metrics over advanced baseline methods.
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