Two adaptive type-2 fuzzy logic controllers with minimum number of rules are developed and compared by simulation for control of a bioreactor in which aerobic alcoholic fermentation for the growth of Saccharomyces cerevisiae takes place. The bioreactor model is characterized by nonlinearity and parameter uncertainty. The first adaptive fuzzy controller is a type-2 fuzzy-neuro-predictive controller (T2FNPC) that combines the capability of type-2 fuzzy logic to handle uncertainties, with the ability of predictive control to predict future plant performance making use of a neural network model of the nonlinear system. The second adaptive fuzzy controller is instead a self-tuning type-2 PI controller, where the output scaling factor is adjusted online by fuzzy rules according to the current trend of the controlled process. The performance of a type-2 fuzzy logic controller with 49 rules is used as reference.

Galluzzo, M., Cosenza, B. (2010). Adaptive Type-2 Fuzzy Logic Control of a Bioreactor. CHEMICAL ENGINEERING SCIENCE, 65, 4208-4221 [10.1016/j.ces.2010.04.023].

Adaptive Type-2 Fuzzy Logic Control of a Bioreactor

GALLUZZO, Mose';COSENZA, Bartolomeo
2010-01-01

Abstract

Two adaptive type-2 fuzzy logic controllers with minimum number of rules are developed and compared by simulation for control of a bioreactor in which aerobic alcoholic fermentation for the growth of Saccharomyces cerevisiae takes place. The bioreactor model is characterized by nonlinearity and parameter uncertainty. The first adaptive fuzzy controller is a type-2 fuzzy-neuro-predictive controller (T2FNPC) that combines the capability of type-2 fuzzy logic to handle uncertainties, with the ability of predictive control to predict future plant performance making use of a neural network model of the nonlinear system. The second adaptive fuzzy controller is instead a self-tuning type-2 PI controller, where the output scaling factor is adjusted online by fuzzy rules according to the current trend of the controlled process. The performance of a type-2 fuzzy logic controller with 49 rules is used as reference.
2010
Settore ING-IND/26 - Teoria Dello Sviluppo Dei Processi Chimici
Galluzzo, M., Cosenza, B. (2010). Adaptive Type-2 Fuzzy Logic Control of a Bioreactor. CHEMICAL ENGINEERING SCIENCE, 65, 4208-4221 [10.1016/j.ces.2010.04.023].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10447/56311
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