Event-Triggered Adaptive Consensus for Multi-Robot Task Allocation
Fidel Aznar, Mar Pujol, \'Alvaro D\'iez

TL;DR
This paper introduces an event-triggered adaptive consensus framework for multi-robot task allocation, significantly reducing communication overhead while maintaining high efficiency, robustness, and adaptability in dynamic environments.
Contribution
The paper proposes a novel event-triggered coordination approach that enhances efficiency and resilience in heterogeneous robotic swarms, outperforming existing communication strategies.
Findings
Reduces network communication compared to traditional strategies.
Maintains high task completion rates and mission effectiveness.
Demonstrates robustness to agent failures and environmental challenges.
Abstract
Coordinating robotic swarms in dynamic and communication-constrained environments remains a fundamental challenge for collective intelligence. This paper presents a novel framework for event-triggered organization, designed to achieve highly efficient and adaptive task allocation in a heterogeneous robotic swarm. Our approach is based on an adaptive consensus mechanism where communication for task negotiation is initiated only in response to significant events, eliminating unnecessary interactions. Furthermore, the swarm self-regulates its coordination pace based on the level of environmental conflict, and individual agent resilience is managed through a robust execution model based on Behavior Trees. This integrated architecture results in a collective system that is not only effective but also remarkably efficient and adaptive. We validate our framework through extensive simulations,…
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