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Dynamic modeling of syngas fermentation in a continuous stirred-tank reactor: Multi-response parameter estimation and process optimization
Authors:Elisa M de Medeiros  John A Posada  Henk Noorman  Rubens Maciel Filho
Institution:1. Department of Biotechnology, Delft University of Technology, Delft, The Netherlands;2. Department of Biotechnology, Delft University of Technology, Delft, The Netherlands

DSM Biotechnology Center, Delft, The Netherlands;3. Laboratory of Optimization, Design and Advanced Control (LOPCA), School of Chemical Engineering, University of Campinas (UNICAMP), Campinas, São Paulo, Brazil

Abstract:Syngas fermentation is one of the bets for the future sustainable biobased economies due to its potential as an intermediate step in the conversion of waste carbon to ethanol fuel and other chemicals. Integrated with gasification and suitable downstream processing, it may constitute an efficient and competitive route for the valorization of various waste materials, especially if systems engineering principles are employed targeting process optimization. In this study, a dynamic multi-response model is presented for syngas fermentation with acetogenic bacteria in a continuous stirred-tank reactor, accounting for gas–liquid mass transfer, substrate (CO, H2) uptake, biomass growth and death, acetic acid reassimilation, and product selectivity. The unknown parameters were estimated from literature data using the maximum likelihood principle with a multi-response nonlinear modeling framework and metaheuristic optimization, and model adequacy was verified with statistical analysis via generation of confidence intervals as well as parameter significance tests. The model was then used to study the effects of process conditions (gas composition, dilution rate, gas flow rates, and cell recycle) as well as the sensitivity of kinetic parameters, and multiobjective genetic algorithm was used to maximize ethanol productivity and CO conversion. It was observed that these two objectives were clearly conflicting when CO-rich gas was used, but increasing the content of H2 favored higher productivities while maintaining 100% CO conversion. The maximum productivity predicted with full conversion was 2 g·L?1·hr?1 with a feed gas composition of 54% CO and 46% H2 and a dilution rate of 0.06 hr?1 with roughly 90% of cell recycle.
Keywords:dynamic model  ethanol  multiobjective optimization  parameter estimation  statistical analysis  syngas fermentation
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