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Main Authors: Liang, Chao, Cosentino, Carlo, Merola, Alessio, Romano, Maria, Amato, Francesco
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2412.15078
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author Liang, Chao
Cosentino, Carlo
Merola, Alessio
Romano, Maria
Amato, Francesco
author_facet Liang, Chao
Cosentino, Carlo
Merola, Alessio
Romano, Maria
Amato, Francesco
contents Some recent papers have extended the concept of finite-time stability (FTS) to the context of 2D linear systems, where it has been referred to as finite-region stability (FRS). FRS methodologies make even more sense than the classical FTS approach developed for 1D-systems, since, typically, at least one of the state variables of 2D-systems is a space coordinate, rather than a time variable. Since space coordinates clearly belong to finite intervals, FRS techniques are much more effective than the classical Lyapunov approach, which looks to the asymptotic behavior of the system over an infinite interval. To this regard, the novel contribution of this paper goes in several directions. First, we provide a novel sufficient condition for the FRS of linear time-varying (LTV) discrete-time 2D-systems, which turns out to be less conservative than those ones provided in the existing literature. Then, an interesting application of FRS to the context of iterative learning control (ILC) is investigated, by exploiting the previously developed theory. In particular, a new procedure is proposed so that the tracking errors of the ILC law converges within the desired bound in a finite number of iterations. Finally, a sufficient condition to solve the finite-region stabilization problem is proposed. All the results provided in the paper lead to optimization problems constrained by linear matrix inequalities (LMIs), that can be solved via widely available software. Numerical examples illustrate and validate the effectiveness of the proposed technique.
format Preprint
id arxiv_https___arxiv_org_abs_2412_15078
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Novel Conditions for the Finite-Region Stability of 2D-Systems with Application to Iterative Learning Control
Liang, Chao
Cosentino, Carlo
Merola, Alessio
Romano, Maria
Amato, Francesco
Systems and Control
Optimization and Control
Some recent papers have extended the concept of finite-time stability (FTS) to the context of 2D linear systems, where it has been referred to as finite-region stability (FRS). FRS methodologies make even more sense than the classical FTS approach developed for 1D-systems, since, typically, at least one of the state variables of 2D-systems is a space coordinate, rather than a time variable. Since space coordinates clearly belong to finite intervals, FRS techniques are much more effective than the classical Lyapunov approach, which looks to the asymptotic behavior of the system over an infinite interval. To this regard, the novel contribution of this paper goes in several directions. First, we provide a novel sufficient condition for the FRS of linear time-varying (LTV) discrete-time 2D-systems, which turns out to be less conservative than those ones provided in the existing literature. Then, an interesting application of FRS to the context of iterative learning control (ILC) is investigated, by exploiting the previously developed theory. In particular, a new procedure is proposed so that the tracking errors of the ILC law converges within the desired bound in a finite number of iterations. Finally, a sufficient condition to solve the finite-region stabilization problem is proposed. All the results provided in the paper lead to optimization problems constrained by linear matrix inequalities (LMIs), that can be solved via widely available software. Numerical examples illustrate and validate the effectiveness of the proposed technique.
title Novel Conditions for the Finite-Region Stability of 2D-Systems with Application to Iterative Learning Control
topic Systems and Control
Optimization and Control
url https://arxiv.org/abs/2412.15078