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When Sampling Works in Data-Driven Control: Informativity for Stabilization in Continuous Time

Jaap Eising, Jorge Cortés

2024IEEE Transactions on Automatic Control15 citationsDOI

Abstract

This article introduces a notion of data informativity for stabilization tailored to continuous-time signals and systems. We establish results comparable to those known for discrete-time systems with sampled data. We justify that additional assumptions on the properties of the noise signals are needed to understand when sampled versions of continuous-time signals are informative for stabilization, thereby introducing the notions of square Lipschitzness and total bounded variation. This allows us to connect the continuous and discrete domains, yielding sufficient conditions to synthesize a stabilizing controller for the true continuous-time system on the basis of sampled data. Simulations illustrate our results.

Topics & Concepts

Sampled data systemsComputer scienceSampling (signal processing)Control theory (sociology)Control (management)Control systemEngineeringArtificial intelligenceTelecommunicationsElectrical engineeringDetectorFault Detection and Control Systems