English

Near-Optimal Multi-Agent Learning for Safe Coverage Control

Machine Learning 2022-10-13 v1 Artificial Intelligence Multiagent Systems Robotics Optimization and Control

Abstract

In multi-agent coverage control problems, agents navigate their environment to reach locations that maximize the coverage of some density. In practice, the density is rarely known a priori\textit{a priori}, further complicating the original NP-hard problem. Moreover, in many applications, agents cannot visit arbitrary locations due to a priori\textit{a priori} unknown safety constraints. In this paper, we aim to efficiently learn the density to approximately solve the coverage problem while preserving the agents' safety. We first propose a conditionally linear submodular coverage function that facilitates theoretical analysis. Utilizing this structure, we develop MacOpt, a novel algorithm that efficiently trades off the exploration-exploitation dilemma due to partial observability, and show that it achieves sublinear regret. Next, we extend results on single-agent safe exploration to our multi-agent setting and propose SafeMac for safe coverage and exploration. We analyze SafeMac and give first of its kind results: near optimal coverage in finite time while provably guaranteeing safety. We extensively evaluate our algorithms on synthetic and real problems, including a bio-diversity monitoring task under safety constraints, where SafeMac outperforms competing methods.

Keywords

Cite

@article{arxiv.2210.06380,
  title  = {Near-Optimal Multi-Agent Learning for Safe Coverage Control},
  author = {Manish Prajapat and Matteo Turchetta and Melanie N. Zeilinger and Andreas Krause},
  journal= {arXiv preprint arXiv:2210.06380},
  year   = {2022}
}

Comments

Accepted at NeurIPS 2022

R2 v1 2026-06-28T03:27:58.748Z