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First published August 1, 1997

Data-driven structured modelling of a biotechnological fed-batch fermentation by means of genetic programming

Abstract

This paper describes an approach for data-driven generation of structured models of complex and unknown processes by means of genetic programming. The basic approach which is used to generate and to modify symbolic model descriptions represented as block diagrams is introduced and an application for modelling of an industrial biotechnological fed-batch fermentation process is presented.

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References

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Published In

Article first published: August 1, 1997
Issue published: August 1, 1997

Keywords

  1. genetic programming
  2. system identification
  3. biotechnology
  4. fermentation processes

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© 1997 Institution of Mechanical Engineers.

Authors

Affiliations

P Marenbach
Hoechst AG, Corporate Research and Technology Frankfurt am Main, Germany
K D Bettenhausen
BASF AG Ludwigshafen, Germany

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This article was published in Proceedings of the Institution of Mechanical Engineers, Part I: Journal of Systems and Control Engineering.

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