Kinetic Model Study on Enzymatic Hydrolysis of Cellulose Using Artificial Neural Networks


Autoria(s): Zhang, Y; Xu, JL; Yuan, ZH; Zhuang, XS; Lu, PM
Data(s)

2009

Resumo

Enzymatic hydrolysis of cellulose was highly complex because of the unclear enzymatic mechanism and many factors that affect the heterogeneous system. Therefore, it is difficult to build a theoretical model to study cellulose hydrolysis by cellulase. Artificial neural network (ANN) was used to simulate and predict this enzymatic reaction and compared with the response surface model (RSM). The independent variables were cellulase amount X-1, substrate concentration X-2, and reaction time X-3, and the response variables were reducing sugar concentration Y-1 and transformation rate of the raw material Y-2. The experimental results showed that ANN was much more suitable for studying the kinetics of the enzymatic hydrolysis than RSM. During the simulation process, relative errors produced by the ANN model were apparently smaller than that by RSM except one and the central experimental points. During the prediction process, values produced by the ANN model were much closer to the experimental values than that produced by RSM. These showed that ANN is a persuasive tool that can be used for studying the kinetics of cellulose hydrolysis catalyzed by cellulase.

国家高技术研究发展计划(863计划, 2007AA100702-4 和 2007AA05Z406);中国科学院知识创新工程重大项目(KSCX1-YW-11-A3)和重要方向项目(KSCX2-YW-G-063-1)

Identificador

http://ir.giec.ac.cn/handle/344007/3334

http://www.irgrid.ac.cn/handle/1471x/70271

Idioma(s)

中文

Fonte

Zhang, Y; Xu, JL; Yuan, ZH; Zhuang, XS; Lu, PM.Kinetic Model Study on Enzymatic Hydrolysis of Cellulose Using Artificial Neural Networks,CHINESE JOURNAL OF CATALYSIS,2009,30(4):355-358

Palavras-Chave #enzymatic kinetics #enzymatic hydrolysis of cellulose #artificial neural network #response surface model #heterogeneous catalysis #酶催化动力学 #纤维素酶水解 #人工神经网络 #响应面模型 #异相催化
Tipo

期刊论文