Pairwise symmetry reasoning for multi-agent path finding search

作者:

Highlights:

• Symmetric conflicts arise extremely frequently in MAPF.

• Symmetric conflicts have an exponential number of possible resolutions, and enumerating them often leads to timeout failure.

• We introduce reasoning techniques to efficiently detect symmetric conflicts and resolve them in a single branching step.

• We report massive improvements in a wide range of experiments: up to 4 orders for runtime and up to 30x for scalability.

摘要

Multi-Agent Path Finding (MAPF) is a challenging combinatorial problem that asks us to plan collision-free paths for a team of cooperative agents. In this work, we show that one of the reasons why MAPF is so hard to solve is due to a phenomenon called pairwise symmetry, which occurs when two agents have many different paths to their target locations, all of which appear promising, but every combination of them results in a collision. We identify several classes of pairwise symmetries and show that each one arises commonly in practice and can produce an exponential explosion in the space of possible collision resolutions, leading to unacceptable runtimes for current state-of-the-art (bounded-sub)optimal MAPF algorithms. We propose a variety of reasoning techniques that detect the symmetries efficiently as they arise and resolve them by using specialized constraints to eliminate all permutations of pairwise colliding paths in a single branching step. We implement these ideas in the context of a leading optimal MAPF algorithm CBS and show that the addition of the symmetry reasoning techniques can have a dramatic positive effect on its performance — we report a reduction in the number of node expansions by up to four orders of magnitude and an increase in scalability by up to thirty times. These gains allow us to solve to optimality a variety of challenging MAPF instances previously considered out of reach for CBS.

论文关键词:Multi-agent path finding,Symmetry breaking,Multi-robot system

论文评审过程:Received 21 February 2021, Revised 1 August 2021, Accepted 2 August 2021, Available online 9 August 2021, Version of Record 19 August 2021.

论文官网地址:https://doi.org/10.1016/j.artint.2021.103574