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Publication detail
VYCHODIL, H. SCHMIDT, M. NEPEVNÝ, P. PIVOŇKA, P.
Original Title
Generalized Predictive Control with a Non-linear Autoregressive Model
Type
conference paper
Language
English
Original Abstract
This paper presents a solution to computation of predictive control using non-linear auto-regressive models. For the non-linear model a neural network is used as a perspective tool for modelling of dynamic systems. However, the described approach is applicable to any type of auto-regressive model. The model is not linearized in the operating point, but in each control optimization step the models derivative is computed (linearization) for all points in the prediction horizon. The method can be used in real-time control. This is verified by porting the algorithm directly to the PLC.
Keywords
Neural network, Modelling, Non-linear model, Predictive control
Authors
VYCHODIL, H.; SCHMIDT, M.; NEPEVNÝ, P.; PIVOŇKA, P.
RIV year
2005
Released
14. 3. 2005
Publisher
WSEAS
Location
Praha
ISBN
960-8457-12-2
Book
Automatic Control Modeling and Simulation
Pages from
85
Pages to
89
Pages count
5
BibTex
@inproceedings{BUT17482, author="Hynek {Vychodil} and Michal {Schmidt} and Petr {Nepevný} and Petr {Pivoňka}", title="Generalized Predictive Control with a Non-linear Autoregressive Model", booktitle="Automatic Control Modeling and Simulation", year="2005", pages="85--89", publisher="WSEAS", address="Praha", isbn="960-8457-12-2" }