AIMADec 17, 2023

Improved Anonymous Multi-Agent Path Finding Algorithm

arXiv:2312.10572v410 citationsh-index: 5AAAI
Originality Incremental advance
AI Analysis

This addresses a bottleneck in multi-agent path planning for robotics or logistics, though it appears incremental as it builds on existing flow-based methods.

The paper tackles the Anonymous Multi-Agent Path-Finding problem by developing a search algorithm that compresses bulks of states to reduce runtime and memory, achieving the ability to solve all MovingAI benchmark instances in under 30 seconds.

We consider an Anonymous Multi-Agent Path-Finding (AMAPF) problem where the set of agents is confined to a graph, a set of goal vertices is given and each of these vertices has to be reached by some agent. The problem is to find an assignment of the goals to the agents as well as the collision-free paths, and we are interested in finding the solution with the optimal makespan. A well-established approach to solve this problem is to reduce it to a special type of a graph search problem, i.e. to the problem of finding a maximum flow on an auxiliary graph induced by the input one. The size of the former graph may be very large and the search on it may become a bottleneck. To this end, we suggest a specific search algorithm that leverages the idea of exploring the search space not through considering separate search states but rather bulks of them simultaneously. That is, we implicitly compress, store and expand bulks of the search states as single states, which results in high reduction in runtime and memory. Empirically, the resultant AMAPF solver demonstrates superior performance compared to the state-of-the-art competitor and is able to solve all publicly available MAPF instances from the well-known MovingAI benchmark in less than 30 seconds.

Foundations

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