Event-triggered control of nonlinear singularly perturbed systems based only on the slow dynamics
Mahmoud Abdelrahim, Romain Postoyan, Jamal Daafouz

TL;DR
This paper develops event-triggered control strategies for nonlinear singularly perturbed systems based solely on slow dynamics, ensuring stability and practical implementability despite communication constraints.
Contribution
It adapts existing event-triggering conditions to singularly perturbed systems and introduces a hybrid approach combining event-triggered and time-triggered transmissions for improved stability.
Findings
Ensures semiglobal practical stability with adapted event-triggering conditions.
Proposes a hybrid transmission technique guaranteeing global asymptotic stability.
Allows direct tuning of minimum inter-transmission intervals.
Abstract
Controllers are often designed based on a reduced or simplified model of the plant dynamics. In this context, we investigate whether it is possible to synthesize a stabilizing event-triggered feedback law for networked control systems (NCS) which have two time-scales, based only on an approximate model of the slow dynamics. We follow an emulation-like approach as we assume that we know how to solve the problem in the absence of sampling and then we study how to design the event-triggering rule under communication constraints. The NCS is modeled as a hybrid singularly perturbed system which exhibits the feature to generate jumps for both the fast variable and the error variable induced by the sampling. The first conclusion is that a triggering law which guarantees the stability and the existence of a uniform minimum amount of time between two transmissions for the slow model may not…
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Taxonomy
TopicsStability and Control of Uncertain Systems · Neural Networks Stability and Synchronization · Distributed Control Multi-Agent Systems
