Model Predictive Control for Industrial Applications
G. Papafotiou
ABB Switzerland
Abstract
Model Predictive Control represents an exciting academic research field and at the same time a well established and mature technology in many industrial applications, where physical processes need to be
controlled in an efficient and reliable way. Until recently, however, its appeal has been mainly restricted to processes with rather slow dynamics with sampling times ranging from a few minutes to many hours, such as the ones encountered in the areas of (petro)chemicals, minerals and metals. The main reason for this
restriction can be traced to the computational demand that optimization-based algorithms can pose to the control hardware platforms, since in its most common version MPC requires the online solution of a constrained optimization problem at each time step. Nowadays, however, the increased computational capacity that is becoming available in the commonly employed controllers, coupled with recent algorithmic advances, has encouraged the emergence of MPC applications in the automotive, and more recently the power electronics industry, where the time scales are in the range of milli- or even micro-seconds. This talk tries to emphasize this visible trend in industrial reality and present recent developments in the application of MPC for the efficient control of Medium Voltage induction motor drives.
Full paper
Session
Reference
Papafotiou, G.: Model Predictive Control for Industrial Applications. Editors: Fikar, M. and Kvasnica, M., In Proceedings of the 18th International Conference on Process Control, Tatranská Lomnica, Slovakia, June 14 – 17, 495–495, 2011.
BibTeX
@inProceedings{pc2011-102, | ||
author | = { | Papafotiou, G.}, |
title | = { | Model Predictive Control for Industrial Applications}, |
booktitle | = { | Proceedings of the 18th International Conference on Process Control}, |
year | = { | 2011}, |
pages | = { | 495-495}, |
editor | = { | Fikar, M. and Kvasnica, M.}, |
address | = { | Tatransk\'a Lomnica, Slovakia}, |
publisher | = { | Slovak University of Technology in Bratislava}, |
url | = { | http://www.kirp.chtf.stuba.sk/pc11/data/papers/102.pdf}} |