Active Target Tracking with Self-Triggered Communications in Multi-Robot Teams
Lifeng Zhou, Pratap Tokekar

TL;DR
This paper introduces a self-triggered communication strategy for multi-robot teams to efficiently track a target, reducing communication needs while maintaining convergence to optimal formations in both stationary and mobile target scenarios.
Contribution
It proposes a novel self-triggered communication method that minimizes information exchange among robots while ensuring convergence in decentralized target tracking tasks.
Findings
Self-triggered strategy reduces communication without sacrificing convergence.
The approach is effective for both stationary and mobile targets.
Simulations demonstrate comparable performance to constant communication methods.
Abstract
We study the problem of reducing the amount of communication in decentralized target tracking. We focus on the scenario where a team of robots are allowed to move on the boundary of the environment. Their goal is to seek a formation so as to best track a target moving in the interior of the environment. The robots are capable of measuring distances to the target. Decentralized control strategies have been proposed in the past that guarantee that the robots asymptotically converge to the optimal formation. However, existing methods require that the robots exchange information with their neighbors at all time steps. Instead, we focus on decentralized strategies to reduce the amount of communication among robots. We propose a self-triggered communication strategy that decides when a particular robot should seek up-to-date information from its neighbors and when it is safe to operate with…
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Taxonomy
TopicsDistributed Control Multi-Agent Systems · Target Tracking and Data Fusion in Sensor Networks · Distributed Sensor Networks and Detection Algorithms
