Title :
Polynomial approach to nonlinear predictive GMV control
Author :
Grimble, M.J. ; Majecki, P. ; Giovanini, L.
Author_Institution :
Univ. of Strathclyde, Glasgow, UK
Abstract :
A simple approach is described for the design of nonlinear predictive controllers. The Nonlinear Predictive Generalized Minimum Variance (NPGMV) control algorithm is introduced for nonlinear discrete-time multivariable systems. The system is represented by a combination of a stable nonlinear subsystem where no structure is assumed and a linear subsystem that may be unstable and modelled in polynomial matrix form. The multi-step predictive control cost index to be minimised involves both weighted error and control signal costing terms. The solution for the control law is derived in the time-domain using a very nonlinear operator model of the process. The controller includes an internal nonlinear model of the process but because of the assumed structure of the system, that has a linear disturbance model, the polynomial equations for the predictor are linear.
Keywords :
control system synthesis; discrete time systems; matrix algebra; multivariable control systems; nonlinear control systems; polynomials; predictive control; time-domain analysis; NPGMV control algorithm; control law; control signal costing terms; internal nonlinear model; linear disturbance model; multistep predictive control cost index; nonlinear discrete-time multivariable systems; nonlinear operator model; nonlinear predictive GMV control; nonlinear predictive controller design; nonlinear predictive generalized minimum variance control algorithm; nonlinear subsystem; polynomial equations; polynomial matrix form; time-domain; weighted error; Mathematical model; Noise; Optimal control; Polynomials; Predictive control; Vectors;
Conference_Titel :
Control Conference (ECC), 2007 European
Conference_Location :
Kos
Print_ISBN :
978-3-9524173-8-6