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Lightweight Decentralized Neural Network-Based Strategies for Multi-Robot Patrolling

James Ward, Ryan McConville, Edmund R. Hunt

Year
2025
Citations
3
Access
Open access

Abstract

The problem of decentralized multi-robot patrol has previously been approached primarily with hand-designed strategies for minimization of "idlenes" over the vertices of a graph-structured environment. Here we present two lightweight neural network-based strategies to tackle this problem, and show that they significantly outperform existing strategies in both idleness minimization and against an intelligent intruder model, as well as presenting an examination of robustness to communication failure. Our results also indicate important considerations for future strategy design.

Keywords

PatrollingComputer scienceArtificial neural networkRobotArtificial intelligenceDistributed computing

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