当前位置:群英聚首 > 论文著作 > 正文
Microorganism inspired hydrogels: Optimization by response surface methodology and genetic algorithm based on artificial neural network
来源:张青松教授个人网站 发布日期:2023-12-10
作者:田晓康
关键字:酵母菌,发酵,水凝胶
论文来源:期刊
具体来源:Euripean Polymer Journal
发表时间:2023年

To optimize the synthetic process of microorganism inspired multistage porous hydrogel, the mathematical analysis strategies was applied to select the optimal experimental parameters. One-factor-at-a-time (OFAT) design was used to optimize the preparation process of yeast fermentation multistage porous hydrogels. The analysis of variance (ANOVA) was applied to determine the significant influencing factors, and the results revealed that the mass ratio of yeast to glucose (Ryeast/glucose), gelation temperature of yeast fermentation (Tgelation) and reaction time (treaction) had a significant influence on responses. Box-Behnken design (BBD) based response surface methodology (RSM) was used to design experiments and build the relationship between the input parameters and output responses. Ideal point method was used to transform a multi-objective optimization problem into a single-objective optimization problem. Artificial neural network (ANN) coupled genetic algorithm (GA) were employed to further optimize and predict the optimal preparation conditions of yeast fermentation multistage porous hydrogels. The results showed ANN coupled GA was a more effective tool in the modelling and optimization of the preparation of yeast fermentation multistage porous hydrogels. The optimized preparation conditions are Ryeast/glucose 1.84, Tgelation 25.00 ?C, treaction 239.97 min. These values are expected to give us the minimum density, the maximum swelling degree and compressive strength. The research content of this paper

provides theoretical support and factual basis for process optimization with complex influencing factors. 

Copyright © 2005 Polymer.cn All rights reserved
中国聚合物网 版权所有
经营性网站备案信息

京公网安备11010502032929号

工商备案公示信息

京ICP证050801号

京ICP备12003651号