Coordinated Motion Planning: Multi-Agent Path Finding in a Densely Packed, Bounded Domain
S\'andor P. Fekete, Ramin Kosfeld, Peter Kramer, Jonas, Neutzner, Christian Rieck, Christian Scheffer

TL;DR
This paper investigates multi-agent path finding in densely packed, polygonal domains, providing novel characterizations and algorithms to optimize reconfiguration and minimize makespan in constrained environments.
Contribution
It introduces new characterizations of polyominoes for guaranteed reconfiguration and algorithms for worst-case optimal performance in densely packed settings.
Findings
Characterization of polyominoes with guaranteed reconfiguration
Shape parameters influencing worst-case makespan bounds
Algorithms achieving asymptotic worst-case optimality
Abstract
We study Multi-Agent Path Finding for arrangements of labeled agents in the interior of a simply connected domain: Given a unique start and target position for each agent, the goal is to find a sequence of parallel, collision-free agent motions that minimizes the overall time (the makespan) until all agents have reached their respective targets. A natural case is that of a simply connected polygonal domain with axis-parallel boundaries and integer coordinates, i.e., a simple polyomino, which amounts to a simply connected union of lattice unit squares or cells. We focus on the particularly challenging setting of densely packed agents, i.e., one per cell, which strongly restricts the mobility of agents, and requires intricate coordination of motion. We provide a variety of novel results for this problem, including (1) a characterization of polyominoes in which a reconfiguration plan is…
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