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Publicaciones

Stability of Gaussian Process Learning Based Output Feedback Model Predictive Control

Autores

Maiworm, Michael , Limón, Daniel , MANZANO CRESPO, JOSÉ MARÍA, Findeisen, Rolf

Publicación externa

Si

Medio

IFAC PAPERSONLINE

Alcance

Conference Paper

Naturaleza

Científica

Cuartil JCR

Cuartil SJR

Impacto SJR

0.298

Fecha de publicacion

01/01/2018

ISI

000451092800070

Scopus Id

2-s2.0-85056821769

Abstract

We present an output feedback nonlinear model predictive control approach that uses a Gaussian process model for prediction. We show nominal stability assuming that the Gaussian process model is able to represent the real process and establish input-to-state stability assuming a bounded error between the real process and the Gaussian model approximation. These results are achieved using a predictive control formulation without terminal region. The approach is illustrated using a continuous stirred-tank reactor benchmark problem. © 2018

Palabras clave

Convergence of numerical methods; Gaussian distribution; Gaussian noise (electronic); Model predictive control; Predictive control systems; Stability; Gaussian Processes; learning; Output feedback; Predictive control; robust; Feedback

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