Title of article :
Application of recurrent neural networks in bCitch reactors
Part 1. NARMA modelling of the dynamic behaviour of the heat
transfer fluid temperature
Author/Authors :
I.M. Galvan ، نويسنده , , j.M. Zaldivar، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 1997
Abstract :
This paper is focused on the development of nonlinear models, using artificial neural networks, able to provide appropriate
predictions when acting as process simulators. The dynamic behaviour of the heat transfer fluid temperature in a jacketed
chemical reactor has been selected as a case study. Different structures of NARMA (Non-linear ARMA) models have been
studied. The experimental results have allowed to carry out a comparison between the different neural approaches and a
first-principles model. The best neural results are obtained using a parallel model structure based on a recurrent neural network
architecture, which guarantees better dynamic approximations than currently employed neural models. The results suggest that
parallel models built up with recurrent networks can be seen as an alternative to phenomenological models for simulating the
dynamic behaviour of the heating/cooling circuits which change from batch installation to installation
Keywords :
Batch reactors , Systems identification , mathematical modelling , NEURAL NETWORKS
Journal title :
Chemical Engineering and Processing: Process Intensification
Journal title :
Chemical Engineering and Processing: Process Intensification