We explore the use of Artificial Potential Fields (APFs) to solve Multi-Agent Path Finding (MAPF) and Lifelong MAPF (LMAPF) problems. In MAPF, a team of agents must move to their goal locations without collisions, whereas in LMAPF, new goals are generated upon arrival. We propose methods for incorporating APFs in a range of MAPF algorithms, including Prioritized Planning, MAPF-LNS2, and Priority Inheritance with Backtracking (PIBT). Experimental results show that using APF is not beneficial for MAPF but yields up to a 7-fold increase in overall system throughput for LMAPF.
@article{arxiv.2505.22753,
title = {Enhancing Lifelong Multi-Agent Path-finding by Using Artificial Potential Fields},
author = {Arseniy Pertzovsky and Roni Stern and Ariel Felner and Roie Zivan},
journal= {arXiv preprint arXiv:2505.22753},
year = {2025}
}