Title of article :
A computer-aided design tool for robustness analysis and control-relevant identification of Horizon Predictive Control with application to a binary distillation column
Author/Authors :
K. S. Jun، نويسنده , , D. E. Rivera، نويسنده , , E. Elisante and V. E. Sater، نويسنده ,
Abstract :
This paper describes a MATLAB-based computer-aided design tool, IRA-HPC, which accomplishes
integrated system identification and robustness analysis for Horizon Predictive Control (HPC), a model
predictive control algorithm implemented on the Application Module of the Honeywell TDC 3000
distributed control system. The tool addresses lifecycle as well as functional aspects of the technology,
with the goal of making advanced control principles more accessible to the practising control engineer.
IRA-HPC systematically performs the various stages of system identification in a control-relevant framework
(addressing input design, parameter estimation, and model validation from the standpoint of the
final purpose of the model, which is control system design), followed by robust HPC controller tuning
using the Structured Singular Value (/1) paradigm as a basis. The benefits of the tool are shown experimentally
in the modelling and control of a methanol/isopropanol pilot-scale distillation column,
interfaced to an industrial-scale real-time computing testbed. The example demonstrates the practical
feasibility of this tool and its benefits in terms of simplifying the choices of design variables in integrated
identification and control design.
Keywords :
Predictive control , Robust control , Identification , Distillation
Journal title :
Astroparticle Physics