Title :
Application of Wiener model predictive control (WMPC) to a pH neutralization experiment
Author :
Norquay, Sandra J. ; Palazoglu, Ahmet ; Romagnoli, Jose Alberto
Author_Institution :
Orica Ltd., Matraville, NSW, Australia
fDate :
7/1/1999 12:00:00 AM
Abstract :
pH control is recognized as an industrially important, yet notoriously difficult control problem. Wiener models, consisting of a linear dynamic element followed in series by a static nonlinear element, are considered to be ideal for representing this and several other nonlinear processes. Wiener models require little more effort in development than a standard linear step-response model, yet offer superior characterization of systems with highly nonlinear gains. These models may be incorporated into model predictive control (MPC) schemes in a unique way which effectively removes the nonlinearity from the control problem, preserving many of the favorable properties of linear MPC. In this paper, Wiener model predictive control (WMPC) is evaluated experimentally, and also compared with benchmark proportional integral derivative (PID) and linear MPC strategies, considering the effects of output constraints and modeling error
Keywords :
Wiener filters; nonlinear control systems; pH control; predictive control; step response; MPC; PID control; WMPC; Wiener model predictive control; highly nonlinear gains; linear dynamic element; linear step-response model; model predictive control; nonlinear processes; pH control; pH neutralization experiment; static nonlinear element; Chemical engineering; Control nonlinearities; Error correction; Industrial control; Multi-layer neural network; Predictive control; Predictive models; Process control; Standards development; Three-term control;
Journal_Title :
Control Systems Technology, IEEE Transactions on