info:eu-repo/semantics/article
Hybrid-EKF: Hybrid model coupled with extended Kalman filter for real-time monitoring and control of mammalian cell culture
Fecha
2020-05Registro en:
Narayanan, Harini; Behle, Lars; Luna, Martín Francisco; Sokolov, Michael; Guillén Gosálbez, Gonzalo; et al.; Hybrid-EKF: Hybrid model coupled with extended Kalman filter for real-time monitoring and control of mammalian cell culture; John Wiley & Sons Inc; Bioengineering And Biotechnology; 117; 9; 5-2020; 2703-2714
0006-3592
CONICET Digital
CONICET
Autor
Narayanan, Harini
Behle, Lars
Luna, Martín Francisco
Sokolov, Michael
Guillén Gosálbez, Gonzalo
Morbidelli, Massimo
Butté, Alessandro
Resumen
In a decade when Industry 4.0 and quality by design are major technology drivers of biopharma, automated and adaptive process monitoring and control are inevitable requirements and model-based solutions are key enablers in fulfilling these goals. Despite strong advancement in process digitalization, in most cases, the generated datasets are not sufficient for relying on purely data-driven methods, whereas the underlying complex bioprocesses are still not completely understood. In this regard, hybrid models are emerging as a timely pragmatic solution to synergistically combine available process data and mechanistic understanding. In this study, we show a novel application of the hybrid-EKF framework, that is, hybrid models coupled with an extended Kalman filter for real-time monitoring, control, and automated decision-making in mammalian cell culture processing. We show that, in the considered application, the predictive monitoring accuracy of such a framework improves by at least 35% when developed with hybrid models with respect to industrial benchmark tools based on PLS models. In addition, we also highlight the advantages of this approach in industrial applications related to conditional process feeding and process monitoring. With regard to the latter, for an industrial use case, we demonstrate that the application of hybrid-EKF as a soft sensor for titer shows a 50% improvement in prediction accuracy compared with state-of-the-art soft sensor tools.