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Model Predictive Control for Nonlinear Systems in State Space using Fuzzy System Model


Affiliations
1 Department of Network Systems and Information Technology, University of Madras, Chennai, India
2 Instrumentation Department, University of Madras, India
     

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Model predictive (MPC) is a common method used in chemical process industries. Usually, the state space method is applicable for linear systems with a quadratic performance index to find the optimised control law based on a solution of the Riccatti equation. However, a nonlinear system can only be modeled by a fuzzy logic based function of the variables. The method of optimal control requires a performance index to be met, which is not necessarily a quadratic type of index but a nonlinear function of the process variables. It could be similarly modeled by another fuzzy inference system. The MPC method for such a fuzzy modeled state space system would be able to provide good predictive control for any nonlinear control system. The evaluation of the control steps by prediction for such a fuzzy model with fuzzy performance index is described in this paper. The optimal control steps are found by iterative search using the Box's Complex search method over a range of control values. Then, the prediction outputs are checked for constraint inequality satisfaction, such as pressure limit for example. Such a control step is applied at the current time step. The paper describes such a technique for a nonlinear process with a nonlinear performance index, also with constraints in the process variables.

Keywords

Fuzzy Control System, Control Law Optimisation, Model Predictive Control, Model Predictive Control.
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  • Model Predictive Control for Nonlinear Systems in State Space using Fuzzy System Model

Abstract Views: 291  |  PDF Views: 0

Authors

S. Ananthi
Department of Network Systems and Information Technology, University of Madras, Chennai, India
G. Venkata Ramu
Instrumentation Department, University of Madras, India
K. Padmanabhan
Instrumentation Department, University of Madras, India

Abstract


Model predictive (MPC) is a common method used in chemical process industries. Usually, the state space method is applicable for linear systems with a quadratic performance index to find the optimised control law based on a solution of the Riccatti equation. However, a nonlinear system can only be modeled by a fuzzy logic based function of the variables. The method of optimal control requires a performance index to be met, which is not necessarily a quadratic type of index but a nonlinear function of the process variables. It could be similarly modeled by another fuzzy inference system. The MPC method for such a fuzzy modeled state space system would be able to provide good predictive control for any nonlinear control system. The evaluation of the control steps by prediction for such a fuzzy model with fuzzy performance index is described in this paper. The optimal control steps are found by iterative search using the Box's Complex search method over a range of control values. Then, the prediction outputs are checked for constraint inequality satisfaction, such as pressure limit for example. Such a control step is applied at the current time step. The paper describes such a technique for a nonlinear process with a nonlinear performance index, also with constraints in the process variables.

Keywords


Fuzzy Control System, Control Law Optimisation, Model Predictive Control, Model Predictive Control.