避碰
稳健性(进化)
适应性
运动规划
计算机科学
互惠的
移动机器人
概率逻辑
机器人
数学优化
碰撞
分布式计算
路径(计算)
机制(生物学)
强化学习
感知
人工智能
工程类
概率路线图
最优控制
缩小
作者
Mingkai Jiang,Yuhong Du,Lian Gan,Jie Li
标识
DOI:10.1177/09544062261432692
摘要
This paper aims to overcome the limitations of the traditional optimal reciprocal collision avoidance (ORCA) algorithm—which depends on perfect environmental perception and lacks adaptability—by introducing an enhanced ORCA framework that incorporates reinforcement learning. First, the proposed framework replaces ORCA’s fixed responsibility allocation with a Q-learning mechanism that adaptively determines optimal responsibility weights, thereby improving the algorithm’s adaptability to diverse environments. Second, a probabilistic environmental model is developed to enhance the algorithm’s robustness under perceptual uncertainty. Finally, spatial partitioning is integrated with an efficient neighbor search strategy to improve computational efficiency while maintaining collision safety. Comparative experiments with existing methods verify the superior effectiveness and performance of the proposed algorithm.
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