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Fuzzy model predictive control for nonlinear processes
Author(s) -
Jerome Menees,
Rui Araújo
Publication year - 2012
Publication title -
citeseer x (the pennsylvania state university)
Language(s) - English
Resource type - Conference proceedings
DOI - 10.1109/etfa.2012.6489611
Subject(s) - control theory (sociology) , model predictive control , fuzzy logic , fuzzy control system , nonlinear system , controller (irrigation) , computer science , stability (learning theory) , adaptive control , process (computing) , bounded function , lyapunov stability , control engineering , lyapunov function , control (management) , engineering , mathematics , artificial intelligence , machine learning , operating system , mathematical analysis , physics , quantum mechanics , agronomy , biology
The paper proposes an adaptive fuzzy predictive control method for industrial processes, which is based on the Generalized predictive control (GPC) algorithm. To provide good accuracy in the identification of unknown nonlinear plants, an online adaptive law is proposed to adapt a T-S fuzzy model. It is demonstrated that the tracking error remains bounded. The stability of closed-loop control system is studied and proved via the Lyapunov stability theory. To validate the theoretical developments and to demonstrate the performance of the proposed control, the controller is applied on a simulated laboratory-scale liquid-level process. The simulation results show that the proposed method has good performance and disturbance rejection capacity in industrial processes.

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