Multi-criteria optimization in nonlinear predictive control

Multi-criteria optimization in nonlinear predictive control

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Article ID: iaor20102064
Volume: 76
Issue: 5-6
Start Page Number: 363
End Page Number: 374
Publication Date: Jan 2008
Journal: Mathematics and Computers in Simulation
Authors: , ,
Keywords: heuristics: genetic algorithms, neural networks
Abstract:

The multi-criteria predictive control of nonlinear dynamical systems based on Artificial Neural Networks (ANNs) and genetic algorithms (GAs) are considered. The (ANNs) are used to determine process models at each operating level; the control action is provided by minimizing a set of control objective which is function of the future prediction output and the future control actions in tacking in account constraints in input signal. An aggregative method based on the Non-dominated Sorting Genetic Algorithm (NSGA) is applied to solve the multi-criteria optimization problem. The results obtained with the proposed control scheme are compared in simulation to those obtained with the multi-model control approach.

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