Title :
Robust model predictive control of nonlinear systems using input-output models
Author :
Chikkula, Yugender ; Lee, Jay H. ; Ogunnaike, Babatunde A.
Author_Institution :
Dept. of Chem. Eng., Auburn Univ., AL, USA
Abstract :
Presents a framework for nonlinear input-output-model-based predictive control from a Bayesian decision theoretic view point. The parameters are modelled as random variables and their probability distributions are computed and used explicitly in the control computation. The framework naturally yields on-line model refinement and “cautious control” against parametric uncertainties. This is important as nonlinear input-output models often contain a large number of parameters and input excitation needed for acceptable parameter estimation is difficult to achieve off-line. The feasibility of the framework is demonstrated by deriving a prototype algorithm for the second order Volterra model. The algorithm is interpreted in the classical model predictive control (MPC) framework and connections to other robust control strategies are discussed
Keywords :
nonlinear control systems; parameter estimation; predictive control; robust control; Bayesian decision theory; input excitation; input-output models; nonlinear input-output models; nonlinear input-output-model-based predictive control; online model refinement; parametric uncertainties; probability distributions; random variables; robust model predictive control; second order Volterra model; Bayesian methods; Distributed computing; Nonlinear systems; Parameter estimation; Predictive control; Predictive models; Probability distribution; Random variables; Robust control; Uncertainty;
Conference_Titel :
American Control Conference, Proceedings of the 1995
Conference_Location :
Seattle, WA
Print_ISBN :
0-7803-2445-5
DOI :
10.1109/ACC.1995.531361