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CTS-CBS: A New Approach for Multi-Agent Collaborative Task Sequencing and Path Finding

26 March 2025
Junkai Jiang
Ruochen Li
Yibin Yang
Yihe Chen
Yuning Wang
Shaobing Xu
Jianqiang Wang
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Abstract

This paper addresses a generalization problem of Multi-Agent Pathfinding (MAPF), called Collaborative Task Sequencing - Multi-Agent Pathfinding (CTS-MAPF), where agents must plan collision-free paths and visit a series of intermediate task locations in a specific order before reaching their final destinations. To address this problem, we propose a new approach, Collaborative Task Sequencing - Conflict-Based Search (CTS-CBS), which conducts a two-level search. In the high level, it generates a search forest, where each tree corresponds to a joint task sequence derived from the jTSP solution. In the low level, CTS-CBS performs constrained single-agent path planning to generate paths for each agent while adhering to high-level constraints. We also provide heoretical guarantees of its completeness and optimality (or sub-optimality with a bounded parameter). To evaluate the performance of CTS-CBS, we create two datasets, CTS-MAPF and MG-MAPF, and conduct comprehensive experiments. The results show that CTS-CBS adaptations for MG-MAPF outperform baseline algorithms in terms of success rate (up to 20 times larger) and runtime (up to 100 times faster), with less than a 10% sacrifice in solution quality. Furthermore, CTS-CBS offers flexibility by allowing users to adjust the sub-optimality bound omega to balance between solution quality and efficiency. Finally, practical robot tests demonstrate the algorithm's applicability in real-world scenarios.

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@article{jiang2025_2503.20324,
  title={ CTS-CBS: A New Approach for Multi-Agent Collaborative Task Sequencing and Path Finding },
  author={ Junkai Jiang and Ruochen Li and Yibin Yang and Yihe Chen and Yuning Wang and Shaobing Xu and Jianqiang Wang },
  journal={arXiv preprint arXiv:2503.20324},
  year={ 2025 }
}
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