This paper presents a novel method for the system identification of the fed-batch fermentation process defined in the problem statement of the Biotechnological Control Forum Modelling and Control Competition. The identification methodology involves a hybrid of mechanistic modelling and Genetic Programming tech niques. It provides an accurate model of the system which should be extremely useful in both the optimisation and control of this process.
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