A Suboptimality Approach to Distributed $\mathcal{H}_2$ Optimal Control
Junjie Jiao, Harry L. Trentelman, M. Kanat Camlibel

TL;DR
This paper presents a suboptimal distributed control approach for linear multi-agent systems to achieve state synchronization with guaranteed performance bounds, using Riccati inequalities related to the agents and network topology.
Contribution
It introduces two methods for designing suboptimal distributed $ ext{H}_2$ control protocols based on Riccati inequalities, applicable to multi-agent systems with performance guarantees.
Findings
Protocols ensure state synchronization with performance bounds.
Control gains derived from Riccati inequalities involving agent and network parameters.
Applicable to linear multi-agent systems with identical dynamics.
Abstract
This paper deals with the distributed optimal control problem for linear multi-agent systems. In particular, we consider a suboptimal version of the distributed optimal control problem. Given a linear multi-agent system with identical agent dynamics and an associated cost functional, our aim is to design a distributed diffusive static protocol such that the protocol achieves state synchronization for the controlled network and such that the associated cost is smaller than an a priori given upper bound. We first analyze the performance of linear systems and then apply the results to linear multi-agent systems. Two design methods are provided to compute such a suboptimal distributed protocol. For each method, the expression for the local control gain involves a solution of a single Riccati inequality of dimension equal to the…
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Taxonomy
TopicsDistributed Control Multi-Agent Systems · Stability and Control of Uncertain Systems · Advanced Control Systems Optimization
