Title of article
Constructive learning neural network applied to identification and control of a fuel-ethanol fermentation process
Author/Authors
Meleiro، نويسنده , , Luiz Augusto da Cruz and Von Zuben، نويسنده , , Fernando José and Filho، نويسنده , , Rubens Maciel، نويسنده ,
Pages
15
From page
201
To page
215
Abstract
In the present work, a constructive learning algorithm was employed to design a near-optimal one-hidden layer neural network structure that best approximates the dynamic behavior of a bioprocess. The method determines not only a proper number of hidden neurons but also the particular shape of the activation function for each node. Here, the projection pursuit technique was applied in association with the optimization of the solvability condition, giving rise to a more efficient and accurate computational learning algorithm. As each activation function of a hidden neuron is defined according to the peculiarities of each approximation problem, better rates of convergence are achieved, guiding to parsimonious neural network architectures. The proposed constructive learning algorithm was successfully applied to identify a MIMO bioprocess, providing a multivariable model that was able to describe the complex process dynamics, even in long-range horizon predictions. The resulting identification model was considered as part of a model-based predictive control strategy, producing high-quality performance in closed-loop experiments.
Keywords
Model predictive control , Constructive neural networks , Bioprocess identification , Fermentation process , Dynamic simulation
Journal title
Astroparticle Physics
Record number
2046439
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