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 ex...
The primary concern in the pharmaceutical industry is not the optimisation of product yield or the r...
In monitoring biological processes, measurement of key variables is often impeded by the lack of rel...
In this study we bridge traditional standalone data-driven and knowledge-driven process monitoring a...
In a decade when Industry 4.0 and quality by design are major technology drivers of biopharma, autom...
An improved state estimation technique for bioprocess control applications is proposed where a hybri...
The monitoring and optimization of hybridoma cell fed-batch cultures depend on the availability of a...
In order to mantain hybridoma cell cultures in optimal operating conditions, on-line measurements of...
Model-based online optimization has not been widely applied to bioprocesses due to the challenges of...
In this work, we aim to introduce the concept of the degree of hybridization for cell culture proces...
Operating lignocellulosic fermentation processes to produce fuels and chemicals is challenging due t...
Fed-batch cultures of hybridoma cells are commonly used for the production of monoclonal antibodies ...
This paper deals with advanced state estimation algorithms for estimation of biomass concentration a...
The goal of bioprocessing is to optimize process variables, such as product quantity and quality, in...
<p>The primary concern in the pharmaceutical industry is not the optimisation of product yield...
Cultures of hybridoma cells in bioreactors are commonly used to produce monoclonal antibodies. As an...
The primary concern in the pharmaceutical industry is not the optimisation of product yield or the r...
In monitoring biological processes, measurement of key variables is often impeded by the lack of rel...
In this study we bridge traditional standalone data-driven and knowledge-driven process monitoring a...
In a decade when Industry 4.0 and quality by design are major technology drivers of biopharma, autom...
An improved state estimation technique for bioprocess control applications is proposed where a hybri...
The monitoring and optimization of hybridoma cell fed-batch cultures depend on the availability of a...
In order to mantain hybridoma cell cultures in optimal operating conditions, on-line measurements of...
Model-based online optimization has not been widely applied to bioprocesses due to the challenges of...
In this work, we aim to introduce the concept of the degree of hybridization for cell culture proces...
Operating lignocellulosic fermentation processes to produce fuels and chemicals is challenging due t...
Fed-batch cultures of hybridoma cells are commonly used for the production of monoclonal antibodies ...
This paper deals with advanced state estimation algorithms for estimation of biomass concentration a...
The goal of bioprocessing is to optimize process variables, such as product quantity and quality, in...
<p>The primary concern in the pharmaceutical industry is not the optimisation of product yield...
Cultures of hybridoma cells in bioreactors are commonly used to produce monoclonal antibodies. As an...
The primary concern in the pharmaceutical industry is not the optimisation of product yield or the r...
In monitoring biological processes, measurement of key variables is often impeded by the lack of rel...
In this study we bridge traditional standalone data-driven and knowledge-driven process monitoring a...