Differential Inequalities in Multi-Agent Coordination and Opinion Dynamics Modeling
Anton V. Proskurnikov, Ming Cao

TL;DR
This paper introduces a unified approach using differential inequalities to analyze convergence in various multi-agent coordination algorithms, including opinion dynamics, by establishing dichotomy criteria that ensure bounded solutions lead to consensus.
Contribution
It develops a novel, unified framework based on differential inequalities to analyze Laplacian-type multi-agent algorithms, extending existing convergence results.
Findings
Established dichotomy criteria for differential inequalities in multi-agent systems.
Unified analysis method applicable to various coordination and opinion dynamics algorithms.
Demonstrated convergence of bounded solutions to consensus under connectivity conditions.
Abstract
Distributed algorithms of multi-agent coordination have attracted substantial attention from the research community; the simplest and most thoroughly studied of them are consensus protocols in the form of differential or difference equations over general time-varying weighted graphs. These graphs are usually characterized algebraically by their associated Laplacian matrices. Network algorithms with similar algebraic graph theoretic structures, called being of Laplacian-type in this paper, also arise in other related multi-agent control problems, such as aggregation and containment control, target surrounding, distributed optimization and modeling of opinion evolution in social groups. In spite of their similarities, each of such algorithms has often been studied using separate mathematical techniques. In this paper, a novel approach is offered, allowing a unified and elegant way to…
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