DocumentCode :
700894
Title :
Suboptimal and optimal extended horizon predictive control of the Hammerstein model
Author :
Haber, R. ; Bars, R. ; Abufaris, A.
Author_Institution :
Dept. of Process Eng., Cologne Inst. of Technol. (Fachhochschule Koln), Köln, Germany
fYear :
1997
fDate :
1-7 July 1997
Firstpage :
2749
Lastpage :
2754
Abstract :
Predictive control algorithms have been worked out mainly to control linear plants. There is a great demand to apply different control ideas for nonlinear systems. Using predictive control algorithms for nonlinear systems is a promising technique. Extended horizon predictive control algorithms are given here for the nonlinear simple Hammerstein model as for this model the control algorithm can be derived easily as a straightforward extension of the linear case. A quadratic cost function is minimized, which considers the quadratic deviation of the reference signal and the output signal predicted in a future point beyond the dead time and also punishes big control signal increments. For prediction of the output signal on the basis of the information of the input and output signal available up to the actual time point a predictive model is needed. Predictive transformation of the Hammerstein model is given. Incremental model is advantageous since the cost function contains the control increment and not the control signal itself. Incremental transformation of the predictive Hammerstein model is described. Suboptimal and optimal extended horizon control algorithms are discussed with different assumptions for the control signal during the control horizon. The effect of the different strategies and the effect of the tuning parameters is investigated through simulation examples.
Keywords :
minimisation; nonlinear control systems; prediction theory; predictive control; suboptimal control; control signal; dead time; incremental model; incremental transformation; nonlinear simple Hammerstein model; nonlinear systems; optimal extended horizon predictive control algorithms; output signal prediction; parameters tuning; predictive Hammerstein model; predictive transformation; quadratic cost function minimization; quadratic deviation; reference signal; suboptimal control; Cost function; Mathematical model; Nonlinear systems; Prediction algorithms; Predictive control; Predictive models; Hammerstein model; Predictive control; nonlinear control; optimal control;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Control Conference (ECC), 1997 European
Conference_Location :
Brussels
Print_ISBN :
978-3-9524269-0-6
Type :
conf
Filename :
7082525
Link To Document :
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