Semiglobal exponential input-to-state stability of sampled-data systems based on approximate discrete-time models
Alexis J. Vallarella, Paula Cardone, Hernan Haimovich

TL;DR
This paper establishes less restrictive conditions for semiglobal exponential input-to-state stability of sampled-data systems using approximate models, applicable to both uniform and nonuniform sampling, and demonstrates the use of Runge-Kutta models.
Contribution
It introduces new stability conditions for approximate models that are less stringent and applicable to nonuniform sampling, expanding control design options.
Findings
Conditions based on SE-ISS are less restrictive than previous criteria.
Explicit Runge-Kutta models satisfy the proposed stability conditions.
An example demonstrates stabilization using approximate discrete-time models.
Abstract
Exact discrete-time models of nonlinear systems are difficult or impossible to obtain, and hence approximate models may be employed for control design. Most existing results provide conditions under which the stability of the approximate model in closed-loop carries over to the stability of the (unknown) exact model but only in a practical sense, i.e. the trajectories of the closed-loop system are ensured to converge to a bounded region whose size can be made as small as desired by limiting the maximum sampling period. In addition, some very stringent conditions exist for the exact model to exhibit exactly the same type of asymptotic stability as the approximate model. In this context, our main contribution consists in providing less stringent conditions by considering semiglobal exponential input-to-state stability (SE-ISS), where the inputs can successfully represent state-measurement…
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