International Journal of Soft Computing

Year: 2007
Volume: 2
Issue: 1
Page No. 69 - 74

Constrained Nonlinear Neural Model Based Predictive Control Using Genetic Algorithms

Authors : Mohamed Boumehraz

Abstract: Nonlinear Model Based Predictive Control (MBPC) is one of the most powerful techniques in process control, however, two main problems need to be considered; obtaining a suitable nonlinear model and using an efficient optimization procedure. In this study, a neural network is used as a non-linear prediction model of the plant. The optimization routine is based on Genetic Algorithms (GAs). First a neural model of the non-linear system is derived from input-output data. Next, the neural model is used in an MBPC structure where the critical element is the constrained optimization routine which is no convex and thus difficult to solve. A genetic algorithm based approach is proposed to deal with this problem. The efficiency of this approach had been demonstrated with simulation examples.

How to cite this article:

Mohamed Boumehraz , 2007. Constrained Nonlinear Neural Model Based Predictive Control Using Genetic Algorithms . International Journal of Soft Computing, 2: 69-74.

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