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Autori principali: Rojas, Carlos J. G., Cano, Esteban Lage, Özkan, Leyla
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2604.00667
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author Rojas, Carlos J. G.
Cano, Esteban Lage
Özkan, Leyla
author_facet Rojas, Carlos J. G.
Cano, Esteban Lage
Özkan, Leyla
contents This paper presents two explicit Model Predictive Control formulations for linear systems parameterized in terms of design variables. Such parameter dependent behavior commonly arises from operating point dependent linearization of nonlinear systems as well as from variations in mechanical, electrical, or thermal properties associated with material selection in the design of the process or system components. In contrast to explicit MPC approaches that treat design parameter variations and dependencies as disturbances, the proposed methods incorporate the parameters directly into the system matrices in an affine manner. However, explicitly incorporating these dependencies significantly increases the complexity of explicit MPC formulations due to resulting nonlinear terms involving decision variables and parameters. We address this complexity by proposing two approximation methods. Both methods are applied to two examples, and their performances are compared with respect to the exact eMPC implementation.
format Preprint
id arxiv_https___arxiv_org_abs_2604_00667
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Explicit MPC for Parameter Dependent Linear Systems
Rojas, Carlos J. G.
Cano, Esteban Lage
Özkan, Leyla
Systems and Control
This paper presents two explicit Model Predictive Control formulations for linear systems parameterized in terms of design variables. Such parameter dependent behavior commonly arises from operating point dependent linearization of nonlinear systems as well as from variations in mechanical, electrical, or thermal properties associated with material selection in the design of the process or system components. In contrast to explicit MPC approaches that treat design parameter variations and dependencies as disturbances, the proposed methods incorporate the parameters directly into the system matrices in an affine manner. However, explicitly incorporating these dependencies significantly increases the complexity of explicit MPC formulations due to resulting nonlinear terms involving decision variables and parameters. We address this complexity by proposing two approximation methods. Both methods are applied to two examples, and their performances are compared with respect to the exact eMPC implementation.
title Explicit MPC for Parameter Dependent Linear Systems
topic Systems and Control
url https://arxiv.org/abs/2604.00667