A Riccati-Based Interior Point Method for Efficient Model Predictive Control of SISO Systems

Morten Hagdrup, Rolf Johansson, John Bagterp Jørgensen

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Abstract

This paper presents an algorithm for Model Predictive Control of SISO systems. Based on a quadratic objective in addition to (hard) input constraints it features soft upper as well as lower constraints on the output and an input rate-of-change penalty term. It keeps the deterministic and stochastic model parts separate. The controller is designed based on the deterministic model, while the Kalman filter results from the stochastic part. The controller is implemented as a primal-dual interior point (IP) method using Riccati recursion and the computational savings possible for SISO systems. In particular the computational complexity scales linearly with the control horizon. No warm-start strategies are considered. Numerical examples are included illustrating applications to Artificial Pancreas technology. We provide typical execution times for a single iteration of the IP algorithm and the number of iterations required for convergence in different situations.
Original languageEnglish
Book seriesIFAC-PapersOnLine
Volume50
Issue number1
Pages (from-to)10672-10678
ISSN2405-8963
DOIs
Publication statusPublished - 2017
Event20th World Congress of the International Federation of Automatic Control - Toulouse, France
Duration: 9 Jul 201714 Jul 2017
Conference number: 20
http://www.ifac2017.org/

Conference

Conference20th World Congress of the International Federation of Automatic Control
Number20
Country/TerritoryFrance
CityToulouse
Period09/07/201714/07/2017
Internet address

Keywords

  • Control and Systems Engineering
  • Artificial Pancreas
  • Closed-loop control
  • Constrained optimization
  • Interior point methods
  • Linear systems
  • Predictive control
  • Quadratic programming
  • Riccati iteration

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