...
首页> 外文期刊>Biotechnology Progress >A Robust Method for the Joint Estimation of Yield Coefficients and Kinetic Parameters in Bioprocess Models
【24h】

A Robust Method for the Joint Estimation of Yield Coefficients and Kinetic Parameters in Bioprocess Models

机译:生物过程模型中产量系数和动力学参数联合估计的鲁棒方法

获取原文
获取原文并翻译 | 示例
   

获取外文期刊封面封底 >>

       

摘要

Bioprocess model structures that require nonlinear parameter estimation,thus initialization values,are often subject to poor identification performances because of the uncertainty on those initialization values. Under some conditions on the model structure,it is possible to partially circumvent this problem by an appropriate decoupling of the linear part of the model from the nonlinear part of it. This article provides a procedure to be followed when these structural conditions are not satisfied. An original method for decoupling two sets of parameters,namely,kinetic parameters from maximum growth,production,decay rates,and yield coefficients,is presented. It exhibits the advantage of requiring only initialization of the first subset of parameters. In comparison with a classical nonlinear estimation procedure,in which all the parameters are freed,results show enhanced robustness of model identification with regard to parameter initialization errors. This is illustrated by means of three simulation case studies: a fed-batch Human Embryo Kidney cell cultivation process using a macroscopic reaction scheme description,a process of cyclodextrin-glucanotransferase production by Bacillus circulans,and a process of simultaneous starch saccharification and glucose fermentation to lactic acid by Lactobacillus delbruckii,both based on a Luedek-ing-Piret model structure. Additionally,perspectives of the presented procedure in the context of systematic bioprocess modeling are promising.
机译:由于初始化值的不确定性,需要非线性参数估计(因此需要初始化值)的生物过程模型结构经常会遇到较差的识别性能。在模型结构的某些条件下,可以通过适当地将模型的线性部分与模型的非线性部分去耦来部分规避此问题。本文提供了不满足这些结构条件时应遵循的程序。提出了一种将两组动力学参数从最大生长量,最大产量,最大腐烂率和最大产量系数解耦的原始方法。它具有仅需要初始化参数的第一子集的优点。与经典的非线性估计程序(其中所有参数均被释放)相比,结果表明,针对参数初始化误差的模型识别具有更高的鲁棒性。这是通过三个模拟案例研究来说明的:使用宏观反应方案描述的分批补料人胚肾脏细胞培养过程,圆芽孢杆菌生产环糊精-葡糖基转移酶的过程,以及同时进行淀粉糖化和葡萄糖发酵的过程。乳酸杆菌由德氏乳杆菌组成,两者均基于Luedek-ing-Piret模型结构。另外,在系统生物过程建模的背景下对所提出的程序的观点是有前途的。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号