Modification of the Luedeking and Piret model with a delay time parameter for biotechnological lactic acid production

Objectives To obtain a mathematical model that adequately describes the time lag between biomass generation and lactic acid production of lactic fermentations. Methods Seven experimental kinetics from other research works were studied to validate our proposal: four studies of Fungal Submerged Fermen...

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Veröffentlicht in:Biotechnology letters 2022-03, Vol.44 (3), p.415-427
Hauptverfasser: Groff, M. Carla, Scaglia, Gustavo, Ortiz, Oscar A., Noriega, Sandra E.
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Sprache:eng
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Zusammenfassung:Objectives To obtain a mathematical model that adequately describes the time lag between biomass generation and lactic acid production of lactic fermentations. Methods Seven experimental kinetics from other research works were studied to validate our proposal: four studies of Fungal Submerged Fermentation and three cases of Bacterial Submerged Fermentation, including the data recollected by Luedeking and Piret. Results We introduce a modification to the Luedeking and Piret model that consist in the introduction of a time delay parameter in the model, this parameter would account for the lag time that exists between the production of biomass and lactic acid. It is possible to determine this time delay in a simple way by approximating the biomass and product formation considering that they behave as a first order plus dead time system. The duration of this phenomenon, which is not described with the classical Luedeking and Piret model, is a function of microorganism physiology (ease of biomass growth), environment (nutrients) and type of inoculum. Conclusion The Luedeking and Piret with delay model applications reveal an increase of the R 2 in all cases, evidencing the quality of fit and the simplicity of the method proposed. These model would improve the accuracy of bioprocess scaling up.
ISSN:0141-5492
1573-6776
DOI:10.1007/s10529-022-03227-0