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Neural networks for process control and optimization: two industrial applications
Authors:Bloch Gérard  Denoeux Thierry
Affiliation:Centre de Recherche en Automatique de Nancy (CRAN), UMR CNRS 7039, France. gerard.bloch@esstin.uhp-nancy.fr
Abstract:The two most widely used neural models, multilayer perceptron (MLP) and radial basis function network (RBFN), are presented in the framework of system identification and control. The main steps for building such nonlinear black box models are regressor choice, selection of internal architecture, and parameter estimation. The advantages of neural network models are summarized: universal approximation capabilities, flexibility, and parsimony. Two applications are described in steel industry and water treatment, respectively, the control of alloying process in a hot dipped galvanizing line and the control of a coagulation process in a drinking water treatment plant. These examples highlight the interest of neural techniques, when complex nonlinear phenomena are involved, but the empirical knowledge of control operators can be learned.
Keywords:Neural networks   Computer modeling and simulation   Control   Optimization   Steel industry   Drinking water treatment
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