Title :
Wiener model identification and predictive control of a pH neutralisation process
Author :
Gomez, J.C. ; Jutan, A. ; Baeyens, E.
Author_Institution :
Lab. for Syst. Dynamics & Signal Process., Univ. Nacional de Rosario, Argentina
fDate :
5/23/2004 12:00:00 AM
Abstract :
Wiener model identification and predictive control of a pH neutralisation process is presented. Input-output data from a nonlinear, first principles simulation model of the pH neutralisation process are used for subspace-based identification of a black-box Wiener-type model. The proposed nonlinear subspace identification method has the advantage of delivering a Wiener model in a format which is suitable for its use in a standard linear-model-based predictive control scheme. The identified Wiener model is used as the internal model in a model predictive controller (MPC) which is used to control the nonlinear white-box simulation model. To account for the unmeasurable disturbance, a nonlinear observer is proposed. The performance of the Wiener model predictive control (WMPC) is compared with that of a linear MPC, and with a more traditional feedback control, namely a PID control. Simulation results show that the WMPC outperforms the linear MPC and the PID controllers.
Keywords :
chemical variables control; feedback; identification; predictive control; stochastic processes; three-term control; PID control; Wiener model identification; black-box Wiener-type model; feedback control; model predictive controller; nonlinear first principles simulation model; nonlinear subspace identification method; pH neutralisation process; subspace-based identification;
Journal_Title :
Control Theory and Applications, IEE Proceedings
DOI :
10.1049/ip-cta:20040438