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Autori principali: Krupa, Pablo, Zanon, Mario, Bemporad, Alberto
Natura: Preprint
Pubblicazione: 2023
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Accesso online:https://arxiv.org/abs/2312.11409
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author Krupa, Pablo
Zanon, Mario
Bemporad, Alberto
author_facet Krupa, Pablo
Zanon, Mario
Bemporad, Alberto
contents This work presents a nonlinear control framework that guarantees asymptotic offset-free tracking of generic reference trajectories by learning a nonlinear disturbance model, which compensates for input disturbances and model-plant mismatch. Our approach generalizes the well-established method of using an observer to estimate a constant disturbance to allow tracking constant setpoints with zero steady-state error. In this paper, the disturbance model is generalized to a nonlinear static function of the plant's state and command input, learned online, so as to perfectly track time-varying reference trajectories under certain assumptions on the model and provided that future reference samples are available. We compare our approach with the classical constant disturbance model in numerical simulations, showing its superiority.
format Preprint
id arxiv_https___arxiv_org_abs_2312_11409
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Learning disturbance models for offset-free reference tracking
Krupa, Pablo
Zanon, Mario
Bemporad, Alberto
Systems and Control
This work presents a nonlinear control framework that guarantees asymptotic offset-free tracking of generic reference trajectories by learning a nonlinear disturbance model, which compensates for input disturbances and model-plant mismatch. Our approach generalizes the well-established method of using an observer to estimate a constant disturbance to allow tracking constant setpoints with zero steady-state error. In this paper, the disturbance model is generalized to a nonlinear static function of the plant's state and command input, learned online, so as to perfectly track time-varying reference trajectories under certain assumptions on the model and provided that future reference samples are available. We compare our approach with the classical constant disturbance model in numerical simulations, showing its superiority.
title Learning disturbance models for offset-free reference tracking
topic Systems and Control
url https://arxiv.org/abs/2312.11409