Título Output Feedback MPC based on Smoothed Projected Kinky Inference
Autores MANZANO CRESPO, JOSÉ MARÍA, LIMÓN MARRUEDO, DANIEL , MUÑOZ DE LA PEÑA SEQUEDO, DAVID , Calliess, Jan Peter
Publicación externa Si
Medio IET Contr. Theory Appl.
Alcance Article
Naturaleza Científica
Cuartil JCR 1
Cuartil SJR 1
Impacto JCR 3.34300
Impacto SJR 1.35800
Fecha de publicacion 01/01/2019
ISI 000464580000007
DOI 10.1049/iet-cta.2018.5522
Abstract In this study, the authors propose a stabilising data-based model predictive controller for systems subject to constraints in which the prediction model is inferred from experimental data of the plant using a machine learning technique. The inference method is a modification of the kinky inference tailored for model predictive control. In particular, the modified method has a lower computational effort and provides smoother predictions than the original method. The controller formulation considers soft constraints in the outputs, hard constraints in the inputs and guarantees closed-loop robust stability as well as performance by means of the use of different control and prediction horizons and a weighted terminal cost. Under the assumption that the model of the system is Holder continuous, they prove that the closed-loop system is input-to-state stable with respect to the estimation errors. The results are demonstrated in a case study of a continuously stirred-tank reactor.
Miembros de la Universidad Loyola

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