| Literature DB >> 33716616 |
Abdolrahimahim Yousefi-Darani1, Olivier Paquet-Durand1, Jörg Hinrichs2, Bernd Hitzmann1.
Abstract
Real-time information about the concentrations of substrates and biomass is the key to accurate monitoring and control of bioprocess. However, on-line measurement of these variables is a challenging task and new measurement systems are still required. An alternative are software sensors, which can be used for state and parameter estimation in bioprocesses. The software sensors predict the state of the process by using mathematical models as well as data from measured variables. The Kalman filter is a type of such sensors. In this paper, we have used the Unscented Kalman Filter (UKF) which is a nonlinear extension of the Kalman filter for on-line estimation of biomass, glucose and ethanol concentration as well as for estimating the growth rate parameters in S. cerevisiae batch cultivation, based on infrequent ethanol measurements. The UKF algorithm was validated on three different cultivations with variability of the substrate concentrations and the estimated values were compared to the off-line values. The results obtained showed that the UKF algorithm provides satisfactory results with respect to estimation of concentrations of substrates and biomass as well as the growth rate parameters during the batch cultivation.Entities:
Keywords: Unscented Kalman filter; batch cultivation; bioprocess supervision; ethanol; state estimation
Year: 2020 PMID: 33716616 PMCID: PMC7923586 DOI: 10.1002/elsc.202000058
Source DB: PubMed Journal: Eng Life Sci ISSN: 1618-0240 Impact factor: 2.678