Hybrid neural network model for simulating sorbitol synthesis by glucose-fructose oxidoreductase in Zymomonas mobilis CP4

A hybrid neural network model for simulating the process of enzymatic reduction of fructose to sorbitol process catalyzed by glucose-fructose oxidoreductase in Zymomonas mobilis CP4 is presented. Data used to derive and validate the model was obtained from experiments carried out under different con...

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Main Authors: Bravo S., Diez M. C., Shene C.
Format: Article
Language:English
Published: Brazilian Society of Chemical Engineering 2004-01-01
Series:Brazilian Journal of Chemical Engineering
Subjects:
Online Access:http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0104-66322004000400001
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spelling doaj-1b6f3cbc53b542bdb927282473fc4f292020-11-25T01:32:40ZengBrazilian Society of Chemical EngineeringBrazilian Journal of Chemical Engineering0104-66321678-43832004-01-01214509518Hybrid neural network model for simulating sorbitol synthesis by glucose-fructose oxidoreductase in Zymomonas mobilis CP4Bravo S.Diez M. C.Shene C.A hybrid neural network model for simulating the process of enzymatic reduction of fructose to sorbitol process catalyzed by glucose-fructose oxidoreductase in Zymomonas mobilis CP4 is presented. Data used to derive and validate the model was obtained from experiments carried out under different conditions of pH, temperature and concentrations of both substrates (glucose and fructose) involved in the reaction. Sonicated and lyophilized cells were used as source of the enzyme. The optimal pH for sorbitol synthesis at 30º C is 6.5. For a value of pH of 6, the optimal temperature is 35º C. The neural network in the model computes the value of the kinetic relationship. The hybrid neural network model is able to simulate changes in the substrates and product concentrations during sorbitol synthesis under pH and temperature conditions ranging between 5 and 7.5 and 25 and 40º C, respectively. Under these conditions the rate of sorbitol synthesis shows important differences. Values computed using the hybrid neural network model have an average error of 1.7·10-3 mole.http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0104-66322004000400001sorbitol synthesisneural network modelglucose-fructose oxidoreductase in Zymomonas mobilis CP4
collection DOAJ
language English
format Article
sources DOAJ
author Bravo S.
Diez M. C.
Shene C.
spellingShingle Bravo S.
Diez M. C.
Shene C.
Hybrid neural network model for simulating sorbitol synthesis by glucose-fructose oxidoreductase in Zymomonas mobilis CP4
Brazilian Journal of Chemical Engineering
sorbitol synthesis
neural network model
glucose-fructose oxidoreductase in Zymomonas mobilis CP4
author_facet Bravo S.
Diez M. C.
Shene C.
author_sort Bravo S.
title Hybrid neural network model for simulating sorbitol synthesis by glucose-fructose oxidoreductase in Zymomonas mobilis CP4
title_short Hybrid neural network model for simulating sorbitol synthesis by glucose-fructose oxidoreductase in Zymomonas mobilis CP4
title_full Hybrid neural network model for simulating sorbitol synthesis by glucose-fructose oxidoreductase in Zymomonas mobilis CP4
title_fullStr Hybrid neural network model for simulating sorbitol synthesis by glucose-fructose oxidoreductase in Zymomonas mobilis CP4
title_full_unstemmed Hybrid neural network model for simulating sorbitol synthesis by glucose-fructose oxidoreductase in Zymomonas mobilis CP4
title_sort hybrid neural network model for simulating sorbitol synthesis by glucose-fructose oxidoreductase in zymomonas mobilis cp4
publisher Brazilian Society of Chemical Engineering
series Brazilian Journal of Chemical Engineering
issn 0104-6632
1678-4383
publishDate 2004-01-01
description A hybrid neural network model for simulating the process of enzymatic reduction of fructose to sorbitol process catalyzed by glucose-fructose oxidoreductase in Zymomonas mobilis CP4 is presented. Data used to derive and validate the model was obtained from experiments carried out under different conditions of pH, temperature and concentrations of both substrates (glucose and fructose) involved in the reaction. Sonicated and lyophilized cells were used as source of the enzyme. The optimal pH for sorbitol synthesis at 30º C is 6.5. For a value of pH of 6, the optimal temperature is 35º C. The neural network in the model computes the value of the kinetic relationship. The hybrid neural network model is able to simulate changes in the substrates and product concentrations during sorbitol synthesis under pH and temperature conditions ranging between 5 and 7.5 and 25 and 40º C, respectively. Under these conditions the rate of sorbitol synthesis shows important differences. Values computed using the hybrid neural network model have an average error of 1.7·10-3 mole.
topic sorbitol synthesis
neural network model
glucose-fructose oxidoreductase in Zymomonas mobilis CP4
url http://www.scielo.br/scielo.php?script=sci_arttext&pid=S0104-66322004000400001
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AT diezmc hybridneuralnetworkmodelforsimulatingsorbitolsynthesisbyglucosefructoseoxidoreductaseinzymomonasmobiliscp4
AT shenec hybridneuralnetworkmodelforsimulatingsorbitolsynthesisbyglucosefructoseoxidoreductaseinzymomonasmobiliscp4
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