Integrated framework of nonlinear prediction and process monitoring for complex biological processes

被引:0
作者
Chang Kyoo Yoo
In-Beum Lee
机构
[1] School of Environmental Engineering and Science,Department of Chemical Engineering
[2] POSTECH,Department of Environmental Science and Engineering
[3] Kyung Hee University,undefined
来源
Bioprocess and Biosystems Engineering | 2006年 / 29卷
关键词
Bioprocess monitoring; Fault detection; Fuzzy; Integrated framework; Multivariate statistical process control (MSPC); Nonlinear modeling; Systems engineering;
D O I
暂无
中图分类号
学科分类号
摘要
Bioprocesses and biosystems have nonlinear and multiple operation patterns depending on the influent loads, temperatures, the activity of microorganisms, and other factors. In this paper, an integrated framework of nonlinear modeling and process monitoring methods is developed for a complex biological process. The proposed method is based on modeling by fuzzy partial least squares (FPLS) and on process monitoring by a statistical decomposition, which is suitable for predicting and supervising a nonlinear biological process. Case studies in the bio-simulated process and industrial biological plant show that the proposed method can give superior prediction and monitoring performance in complex biological plants compared to other linear and nonlinear methods, since it can effectively capture the nonlinear causal relationship within the biosystem. This gives us the integrated framework that is able to both model and monitor the nonlinear bioprocess simultaneously.
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页码:213 / 228
页数:15
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