Distributed and Decentralized Control and Task Allocation for Flexible Swarms
Yigal Koifman, Ariel Barel, Alfred M. Bruckstein

TL;DR
This paper presents a bio-inspired, distributed control framework for robotic swarms that enables self-organization and task execution using simple local rules, without explicit communication or memory, validated through simulations.
Contribution
It introduces a layered model and control algorithms based on local interaction principles, facilitating flexible, cohesive, and adaptive swarm behaviors without explicit communication.
Findings
Swarm can maintain connectivity and adapt to environments.
Agents self-organize into ad-hoc leaders for guidance.
Simulations validate effective task performance.
Abstract
This paper introduces a novel bio-mimetic approach for distributed control of robotic swarms, inspired by the collective behaviors of swarms in nature such as schools of fish and flocks of birds. The agents are assumed to have limited sensory perception, lack memory, be Identical, anonymous, and operate without interagent explicit communication. Despite these limitations, we demonstrate that collaborative exploration and task allocation can be executed by applying simple local rules of interactions between the agents. A comprehensive model comprised of agent, formation, and swarm layers is proposed in this paper, where each layer performs a specific function in shaping the swarm's collective behavior, thereby contributing to the emergence of the anticipated behaviors. We consider four principles combined in the design of the distributed control process: Cohesiveness, Flexibility,…
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Taxonomy
TopicsDistributed Control Multi-Agent Systems
