Multi-Agent Path Finding Among Dynamic Uncontrollable Agents with Statistical Safety Guarantees
Multi-Agent Path Finding Among Dynamic Uncontrollable Agents with Statistical Safety Guarantees
Existing multi-agent path finding (MAPF) solvers do not account for uncertain behavior of uncontrollable agents. We present a novel variant of Enhanced Conflict-Based Search (ECBS), for both one-shot and lifelong MAPF in dynamic environments with uncontrollable agents. Our method consists of (1) training a learned predictor for the movement of uncontrollable agents, (2) quantifying the prediction error using conformal prediction (CP), a tool for statistical uncertainty quantification, and (3) integrating these uncertainty intervals into our modified ECBS solver. Our method can account for uncertain agent behavior, comes with statistical guarantees on collision-free paths for one-shot missions, and scales to lifelong missions with a receding horizon sequence of one-shot instances. We run our algorithm, CP-Solver, across warehouse and game maps, with competitive throughput and reduced collisions.
Kegan J. Strawn、Thomy Phan、Eric Wang、Nora Ayanian、Sven Koenig、Lars Lindemann
计算技术、计算机技术
Kegan J. Strawn,Thomy Phan,Eric Wang,Nora Ayanian,Sven Koenig,Lars Lindemann.Multi-Agent Path Finding Among Dynamic Uncontrollable Agents with Statistical Safety Guarantees[EB/OL].(2025-07-29)[2025-08-06].https://arxiv.org/abs/2507.22282.点此复制
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