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Anytime Multi-Agent Path Finding using Operation Parallelism in Large Neighborhood Search

2 February 2024
Shao-Hung Chan
Zhe Chen
Dian-Lun Lin
Yue Zhang
Daniel Harabor
Tsung-Wei Huang
Sven Koenig
Thomy Phan
    AI4CE
ArXiv (abs)PDFHTML
Abstract

Multi-Agent Path Finding (MAPF) is the problem of finding a set of collision-free paths for multiple agents in a shared environment while minimizing the sum of travel time. Since solving the MAPF problem optimally is NP-hard, anytime algorithms based on Large Neighborhood Search (LNS) are promising to find good-quality solutions in a scalable way by iteratively destroying and repairing the paths. We propose Destroy-Repair Operation Parallelism for LNS (DROP-LNS), a parallel framework that performs multiple destroy and repair operations concurrently to explore more regions of the search space within a limited time budget. Unlike classic MAPF approaches, DROP-LNS can exploit parallelized hardware to improve the solution quality. We also formulate two variants of parallelism and conduct experimental evaluations. The results show that DROP-LNS significantly outperforms the state-of-the-art and the variants.

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