Artículos de revistas
Iterative design of dynamic experiments in modeling for optimization of innovative bioprocesses
Fecha
2009-05Registro en:
Cristaldi, Mariano Daniel; Grau, Ricardo José Antonio; Martínez, Ernesto Carlos; Iterative design of dynamic experiments in modeling for optimization of innovative bioprocesses; De Gruyter; Chemical Product and Process Modeling; 4; 2; 5-2009; 6-34
1934-2659
CONICET Digital
CONICET
Autor
Cristaldi, Mariano Daniel
Grau, Ricardo José Antonio
Martínez, Ernesto Carlos
Resumen
Finding optimal operating conditions fast with a scarce budget of experimental runs is a key problem to speed up the development and scaling up of innovative bioprocesses. In this paper, a novel iterative methodology for the model-based design of dynamic experiments in modeling for optimization is developed and successfully applied to the optimization of a fed-batch bioreactor related to the production of r-interleukin-11 (rIL-11) whose DNA sequence has been cloned in an Escherichia coli strain. At each iteration, the proposed methodology resorts to a library of tendency models to increasingly bias bioreactor operating conditions towards an optimum. By selecting the ‘most informative’ tendency model in the sequel, the next dynamic experiment is defined by re-optimizing the input policy and calculating optimal sampling times. Model selection is based on minimizing an error measure which distinguishes between parametric and structural uncertainty to selectively bias data gathering towards improved operating conditions. The parametric uncertainty of tendency models is iteratively reduced using Global Sensitivity Analysis (GSA) to pinpoint which parameters are keys for estimating the objective function. Results obtained after just a few iterations are very promising.