Title :
A new approach for robust model predictive control with an application to an air-conditioning system
Author :
Moreira, Vicente Delgado ; Amaral, Wagner Caradori do ; Augusto, Paulo ; Ferreira, Valente
Author_Institution :
DCA, UNICAMP, Campinas, Brazil
Abstract :
A new approach for modeling and controlling a class of hybrid systems described by interacting physical laws, logic rules, and operational requirements is proposed. As recently suggested in the literature, logic rules and operational requirements are integrated into the model as equivalent linear inequality constraints involving both continuous and binary variables. The distinguishing feature of the approach proposed is the use of orthonormal series for modeling the process dynamics. The model, which is referred as MLDOSF-mixed logical dynamical, based on orthonormal series function - can be easily estimated with only approximate knowledge of the system dynamics. The orthonormal basis is able to represent a stable system with fewer parameters than in a finite impulse response model. Uncertainties in the process dynamics are incorporated into the output equation only, reducing the model politopic space. A robust predictive control sequence is obtained by optimizing a performance index in a min-max sense, subject to the model constraints. An application to an air-conditioning control system illustrates the main characteristics of the MLDOSF framework proposed.
Keywords :
air conditioning; constraint theory; linear matrix inequalities; minimax techniques; performance index; predictive control; reduced order systems; robust control; transient response; uncertain systems; air conditioning control system; binary variable constraints; continuous variable constraints; finite impulse response model; hybrid system controlling; hybrid system modeling; linear inequality constraints; logic rules; minmax techniques; mixed logical dynamical system; operational requirements; orthonormal series function; performance index optimization; physical law interaction; politopic space model reduction; process dynamic modeling; robust model predictive control; stable system; uncertain systems; Control systems; Cost function; Equations; Logic; Predictive control; Predictive models; Robust control; State-space methods; Uncertain systems; Uncertainty;
Conference_Titel :
Control Applications, 2004. Proceedings of the 2004 IEEE International Conference on
Print_ISBN :
0-7803-8633-7
DOI :
10.1109/CCA.2004.1387289