期刊文献+

头孢菌素C发酵过程状态变量及效益函数预报方法 被引量:4

Prediction of state variables and profit function for cephalosporin C fed-batch fermentation
下载PDF
导出
摘要 Cephalosporin C fed-batch cultivation undergoes great fluctuations. Some key state variables, such as product concentration and carbon source consumption, are very difficult to measure on-line, while these variables are essential to process monitoring and control.A neural network based software prediction of the key state variables for cephalosporin C fed-batch fermentation was investigated. A rolling learning-prediction procedure was used to deal with the time variant property of the process, and was also demonstrated to be beneficial to improving prediction accuracy.The successful prediction of the product formation enabled on-line evaluation of the economic performance of a charge and made optimal scheduling possible.The prediction approach was validated with the data of 49 industrial charges. Cephalosporin C fed-batch cultivation undergoes great fluctuations. Some key state variables,such as product concentration and carbon source consumption, are very difficult to measure on-line, while these variables are essential to process monitoring and control. A neural network based software prediction of the key state variables for cephalosporin C fed-batch fermentation was investigated. A rolling learning-prediction procedure was used to deal with the time variant property of the process, and was also demonstrated to be beneficial to improving prediction accuracy. The successful prediction of the product formation enabled on-line evaluation of the economic performance of a charge and made optimal scheduling possible. The prediction approach was validated with the data of 49 industrial charges.
出处 《化工学报》 EI CAS CSCD 北大核心 2005年第7期1281-1283,共3页 CIESC Journal
基金 国家自然科学基金项目(60174024).~~
关键词 发酵 神经网络 效益函数 滚动学习-预报 fermentation neural networks profit function rolling learning-prediction
  • 相关文献

参考文献6

  • 1De A, Adilson J, Rubens M. Soft sensors development for on-line bioreactor state estimation. Computers and Chemical Engineering, 2000, 24 (2): 1099-1103.
  • 2Warnes M R, Glassey J, Montague G A. Application of radial basis function and feedforward artificial neural networks to the Escherichia coli fermentation process.Neurocomputing, 1998, 20 (1): 67-82.
  • 3Shene C, Diez C, Bravo S. Neural networks for the prediction of the state of Zymomonas mobilis CP4 batch fermentations. Computers and Chemical Engineering, 1999,23 (8): 1097-1108.
  • 4Bishop B F, Combs R G, Banankhah S. Process control system for fed-batch fermentation using a computer to predict nutrient consumption. Biotechnology Advances, 1997, 15(2) : 507.
  • 5Yuan J Q, Vanrolleghem P A. Rolling learning-prediction of product formation in bioprocesses. Journal of Biotechnology, 1999, 69:47-62.
  • 6Yuan J Q, Guo S R, Schuegerl K, Bellgatdt K H. Profit optimization for mycelia fed-batch cultivation. Journal of Biotechnology, 1997, 54:175-193.

同被引文献63

引证文献4

二级引证文献24

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部