Zelić B, Bolf N, Vasić-Racki D
Faculty of Chemical Engineering and Technology, University of Zagreb, Marulićev trg 19, HR-10000, Zagreb, Croatia.
Bioprocess Biosyst Eng. 2006 Jun;29(1):39-47. doi: 10.1007/s00449-006-0054-3. Epub 2006 Mar 10.
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.
非结构化机理黑箱模型、基于输入-输出神经网络的模型和外部递归神经网络模型,来描述利用基因工程改造的大肠杆菌YYC202 ldhA::Kan菌株从葡萄糖和乙酸盐生产丙酮酸的过程。实验数据来自最近描述的分批和补料分批实验[Zelić B,基于大肠杆菌的丙酮酸生产工艺开发研究。博士论文,萨格勒布大学,化学工程与技术学院,克罗地亚萨格勒布,2003年7月。(英文);Zelić等人,《生物过程与生物系统工程》26:249 - 258(2004年);Zelić等人,《工程生命科学》3:299 - 305(2003年);Zelić等人,《生物技术与生物工程》85:638 - 646(2004年)]。神经网络是根据在葡萄糖进料速率恒定的补料分批丙酮酸生产实验中获得的实验数据构建的。使用在乙酸盐进料速率恒定的分批和补料分批丙酮酸生产实验中获得的实验结果进行模型验证。使用两个基于神经网络的生物量和丙酮酸模型估计底物和产物浓度变化的动态。结果表明,神经网络可用于复杂微生物发酵过程的建模,即使在无法应用机理非结构化模型的条件下也是如此。