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Original Articles

Metaheuristic Techniques for Optimization of an E. Coli Cultivation Model

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Pages 3870-3876 | Published online: 16 Apr 2014
 

ABSTRACT

In this paper two metaheuristics: Ant Colony Optimization (ACO) and Genetic Algorithms (GA), were compared for parameter identification of an E. coli fed-batch cultivation process model. A system of ordinary differential equations was used to model the biomass growth and substrate utilization. Parameter optimization was performed using a real experimental data set from an E. coli MC4110 fed-batch cultivation process. The GA and ACO adjustments were done based on several pre-tests on the optimization problem considered here. Two techniques were compared based on the obtained “best”, “worst” and “average” values for estimates and the objective function J. The results showed that the “best” value of the objective function J is achieved by ACO. At the same time, GA achieved better results for “worst” and “average” values. Analyzing the results, it could be concluded that both algorithms: ACO and GA, perform satisfactorily for the problem of parameter optimization of an E. coli fed-batch cultivation process model.

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