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Conflict Mitigation in Shared Environments using Flow-Aware Multi-Agent Path Finding

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Deploying multi-robot systems in environments shared with dynamic and uncontrollable agents presents significant challenges, especially for large robot fleets. In such environments, individual robot operations can be delayed due to unforeseen conflicts with uncontrollable agents. While existing research primarily focuses on preserving the completeness of Multi-Agent Path Finding (MAPF) solutions considering delays, there is limited emphasis on utilizing additional environmental information to enhance solution quality in the presence of other dynamic agents. To this end, we propose Flow-Aware Multi-Agent Path Finding (FA-MAPF), a novel framework that integrates learned motion patterns of uncontrollable agents into centralized MAPF algorithms. Our evaluation, conducted on a diverse set of benchmark maps with simulated uncontrollable agents and on a real-world map with recorded human trajectories, demonstrates the effectiveness of FA-MAPF compared to state-of-the-art baselines. The experimental results show that FA-MAPF can consistently reduce conflicts with uncontrollable agents, up to 55%, without compromising task efficiency.

Lukas Heuer, Yufei Zhu, Luigi Palmieri, Andrey Rudenko, Anna Mannucci, Sven Koenig, Martin Magnusson• 2026

Related benchmarks

TaskDatasetResultRank
Multi-Agent Path Findingden312d agents: 200
UA Conflicts10.52
6
Multi-Agent Path Findingempty-32-32 # agents: 300
UA Conflicts6.52
6
Multi-Agent Path Findinght_chantry # agents: 500
UA Conflicts9.77
6
Multi-Agent Path Findingmaze 32-32-2 (# agents: 30)
UA Conflicts7.59
6
Multi-Agent Path Findingmaze-32-32-4 (# agents: 30)
UA Conflicts4.75
6
Multi-Agent Path Findingrandom-32-32-10 # agents: 300
UA Conflicts8.1
6
Multi-Agent Path Findingrandom-32-32-20 # agents: 200
UA Conflicts6.74
6
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