AIMARODec 17, 2016

Optimal Target Assignment and Path Finding for Teams of Agents

arXiv:1612.05693v1170 citations
Originality Incremental advance
AI Analysis

This addresses efficient coordination for multi-agent systems in domains like warehouse logistics, though it is incremental as it builds on existing multi-agent path-finding methods.

The paper tackles the combined target-assignment and path-finding (TAPF) problem for teams of agents in known terrain, presenting the CBM algorithm that optimally solves it with proven correctness and scalability to instances with dozens of teams and hundreds of agents.

We study the TAPF (combined target-assignment and path-finding) problem for teams of agents in known terrain, which generalizes both the anonymous and non-anonymous multi-agent path-finding problems. Each of the teams is given the same number of targets as there are agents in the team. Each agent has to move to exactly one target given to its team such that all targets are visited. The TAPF problem is to first assign agents to targets and then plan collision-free paths for the agents to their targets in a way such that the makespan is minimized. We present the CBM (Conflict-Based Min-Cost-Flow) algorithm, a hierarchical algorithm that solves TAPF instances optimally by combining ideas from anonymous and non-anonymous multi-agent path-finding algorithms. On the low level, CBM uses a min-cost max-flow algorithm on a time-expanded network to assign all agents in a single team to targets and plan their paths. On the high level, CBM uses conflict-based search to resolve collisions among agents in different teams. Theoretically, we prove that CBM is correct, complete and optimal. Experimentally, we show the scalability of CBM to TAPF instances with dozens of teams and hundreds of agents and adapt it to a simulated warehouse system.

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