Modeling of the pyruvate production with Escherichia coli : comparison of mechanistic and neural networks-based models

Three different models: the unstructured mechanistic black-box model, the input-output neural network-based model and the externally recurrent neural network model were used to describe the pyruvate production process from glucose and acetate using the genetically modified Escherichia coli YYC202 ld...

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Veröffentlicht in:Bioprocess and biosystems engineering 2006-06, Vol.29 (1), p.39-47
Hauptverfasser: ZELIE, B, BOLF, N, VASIC-RACKI, D
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description Three different models: the unstructured mechanistic black-box model, the input-output neural network-based model and the externally recurrent neural network model were used to describe the pyruvate production process from glucose and acetate using the genetically modified Escherichia coli YYC202 ldhA::Kan strain. The experimental data were used from the recently described batch and fed-batch experiments [ Zelić B, Study of the process development for Escherichia coli-based pyruvate production. PhD Thesis, University of Zagreb, Faculty of Chemical Engineering and Technology, Zagreb, Croatia, July 2003. (In English); Zelić et al. Bioproc Biosyst Eng 26:249-258 (2004); Zelić et al. Eng Life Sci 3:299-305 (2003); Zelić et al Biotechnol Bioeng 85:638-646 (2004)]. The neural networks were built out of the experimental data obtained in the fed-batch pyruvate production experiments with the constant glucose feed rate. The model validation was performed using the experimental results obtained from the batch and fed-batch pyruvate production experiments with the constant acetate feed rate. Dynamics of the substrate and product concentration changes was estimated using two neural network-based models for biomass and pyruvate. It was shown that neural networks could be used for the modeling of complex microbial fermentation processes, even in conditions in which mechanistic unstructured models cannot be applied.
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subjects Acetates - metabolism
Artificial Intelligence
Biological and medical sciences
Biotechnology
Chemical engineering
Computer Simulation
E coli
Escherichia coli
Escherichia coli - metabolism
Experimental data
Fermentation
Fundamental and applied biological sciences. Psychology
Glucose - metabolism
Models, Biological
Nerve Net
Neural networks
Pyruvic Acid - metabolism
Studies
title Modeling of the pyruvate production with Escherichia coli : comparison of mechanistic and neural networks-based models
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