Neuro-fuzzy prediction of uricase production

被引:0
|
作者
S. Vassileva
B. Tzvetkova
C. Katranoushkova
L. Losseva
机构
[1] Institute of Control and Systems Research – BAS,
[2] Acad. G. Bonchev str.,undefined
[3] bl. 2,undefined
[4] P.O. Box 79,undefined
[5] 1113 Sofia,undefined
[6] Bulgaria,undefined
[7] Institute of Microbiology – BAS,undefined
[8] Acad. G. Bonchev str.,undefined
[9] bl. 26,undefined
[10] 1113 Sofia,undefined
[11] Bulgaria,undefined
来源
Bioprocess Engineering | 2000年 / 22卷
关键词
Uric Acid; Artificial Neural Network; Candida; Fuzzy Model; Biotechnological Process;
D O I
暂无
中图分类号
学科分类号
摘要
Recent biotechnology requires implementation of new modelling methods based on knowledge principles and learning structures, comprised in fuzzy knowledge-based systems (FKBS), neural networks (NN) and different hybrid methods. The intelligent modelling approaches solve sufficiently a very important problem – processing of scarce, uncertainty and incomplete numerical and linguistic information about multivariate non-linear and non-stationary systems as well as biotechnological processes. The paper deals with prediction of an enzyme oxidizing uric acid to alantoin – the uricase, produced by Candida utilis 90-12 employing neuro-fuzzy knowledge-based approach. The implemented predictive technique exploits the fact that the fuzzy model can be seen as a network structure, similar to artificial NN, which on computational level assure a high model accuracy. The predictors implemented are four different by nature variables. The developed predictive model shows that best predictors of uricase production are biomass and limiting substrate concentrations.
引用
收藏
页码:363 / 367
页数:4
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