| Literature DB >> 33285509 |
Peter Sinner1, Marlene Stiegler1, Christoph Herwig1, Julian Kager2.
Abstract
In this study the use of a particle filter algorithm to monitor Corynebacterium glutamicum fed-batch bioprocesses with uncertain raw material input composition is shown. The designed monitoring system consists of a dynamic model describing biomass growth on spent sulfite liquor. Based on particle filtering, model simulations are aligned with continuously and noninvasively measured carbon evolution and oxygen uptake rates, giving an estimate of the most probable culture state. Applied on two validation experiments, culture states were accurately estimated during batch and fed-batch operations with root mean square errors below 1.1 g L-1 for biomass, 0.6 g L-1 for multiple substrate concentrations and 0.01 g g-1 h-1 for biomass specific substrate uptake rates. Additionally, upon fed-batch start uncertain feedstock concentrations were corrected by the estimator without the need of any additional measurements. This provides a solid basis towards a more robust operation of bioprocesses utilizing lignocellulosic side streams.Entities:
Keywords: Corynebacterium glutamicum; Non-linear state estimation; Particle filter; Raw material uncertainty; Soft sensor; Spent sulfite liquor
Year: 2020 PMID: 33285509 DOI: 10.1016/j.biortech.2020.124395
Source DB: PubMed Journal: Bioresour Technol ISSN: 0960-8524 Impact factor: 9.642