Multi-Robot Trajectory Planning With Feasibility Guarantee and Deadlock Resolution: An Obstacle-Dense Environment
Yuda Chen, Chenghan Wang, Meng Guo, Zhongkui Li
- 发表年份
- 2023
- 引用次数
- 25
摘要
This letter presents a multi-robot trajectory planning method which not only guarantees optimization feasibility and but also resolves deadlocks in obstacle-dense environments. The method is proposed via formulating a recursive optimization problem, where a novel safe corridor is generated online to ensure obstacle avoidance in trajectory planning. A dynamic-priority mechanism is combined with the right-hand rule to handle potential deadlocks that are much harder to resolve due to static obstacles. Comparisons with other state-of-the-art results are conducted to validate the improved safety and success rate. Additional hardware experiments are carried out with up to eight nano-quadrotors in various cluttered scenarios.
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