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Model Reduction in Emulsion Polymerization Using Hybrid First Principles/Artificial Neural Networks Models, 2
Authors:Gurutze Arzamendi  Alicia d'Anjou  Manuel Graa  Jos R Leiza  Jos M Asua
Abstract:Summary: A “series” hybrid model based on material balances and artificial neural networks to predict the evolution of weight average molecular weight, , in semicontinuous emulsion polymerization with long chain branching kinetics is presented. The core of the model is composed by two artificial neural networks (ANNs) that calculate polymerization rate, Rp, and instantaneous weight‐average molecular weight, from reactor process variables. The subsequent integration of the material balances allowed to obtain the time evolution of conversion and , along the polymerization process. The accuracy of the proposed model under a wide range of conditions was assessed. The low computer‐time load makes the hybrid model suitable for optimization strategies.

Effect of the monomer feed rate on .

Keywords:artificial neural networks  emulsion polymerization  long‐chain branching  modeling  molecular weight
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