Heterogeneity in Multi-Robot Environmental Monitoring for Resolving Time-Conflicting Tasks
Connor York, Zachary R Madin, Paul O'Dowd, Edmund R Hunt

TL;DR
This paper explores how heterogeneity in roles and sensing capabilities among multi-robot teams can optimize performance in tasks with conflicting time constraints, like patrolling and signal detection.
Contribution
It introduces a systematic evaluation of behavioral and sensing heterogeneity effects on multi-robot task trade-offs, highlighting the benefits of role specialization and sensing restrictions.
Findings
Heterogeneous teams often achieve better trade-offs than homogeneous teams.
Sensing restrictions can reduce costs without significantly impacting performance.
Role and sensing heterogeneity can be tuned to prioritize different tasks.
Abstract
Multi-robot systems performing continuous tasks face a performance trade-off when interrupted by urgent, time-critical sub-tasks. We investigate this trade-off in a scenario where a team must balance area patrolling with locating an anomalous radio signal. To address this trade-off, we evaluate both behavioral heterogeneity through agent role specialization ("patrollers" and "searchers") and sensing heterogeneity (i.e., only the searchers can sense the radio signal). Through simulation, we identify the Pareto-optimal trade-offs under varying team compositions, with behaviorally heterogeneous teams demonstrating the most balanced trade-offs in the majority of cases. When sensing capability is restricted, heterogeneous teams with half of the sensing-capable agents perform comparably to homogeneous teams, providing cost-saving rationale for restricting sensor payload deployment. Our…
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Taxonomy
TopicsDistributed Control Multi-Agent Systems · Reinforcement Learning in Robotics · Distributed Sensor Networks and Detection Algorithms
