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Componentwise Holder Inference for Robust Learning-Based MPC

Autores

MANZANO CRESPO, JOSÉ MARÍA, Munoz de la Pena, David , Calliess, Jan-Peter , Limon, Daniel

Publicación externa

No

Medio

IEEE Trans. Autom. Control

Alcance

Article

Naturaleza

Científica

Cuartil JCR

Cuartil SJR

Impacto JCR

6.549

Impacto SJR

4.172

Fecha de publicacion

01/11/2021

ISI

000711740700053

Abstract

This article presents a novel learning method based on componentwise Holder continuity, which allows one to consider independently the contribution of each input to each output of the function to be learned. The method provides a bounded prediction error, and its learning property is proven. It can be used to obtain a predictor for a nonlinear robust learning-based predictive controller for constrained systems. The resulting controller achieves better closed loop performance and larger domains of attraction than learning methods that only consider nonlinear set membership, as illustrated by a case study.

Palabras clave

Learning systems; Predictive models; Estimation; Uncertainty; Standards; Prediction algorithms; Interpolation; Inference algorithms; machine learning; nonlinear systems; predictive control; robust stability

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