In process engineering, two paradigms of modeling approaches exist: the mechanistic and the data-driven approaches with the former being completely based on knowledge while the latter completely based on data. In our previous work, we highlighted the advantages of using hybrid models that explores the synergy between mechanistic and data-driven models. Here we introduce the concept of developing a series of hybrid models constituted by a progressively increasing extent of process knowledge. Thus, aligning the models on the "degrees of hybridization"axis with data-driven model being 0% hybridized and mechanistic model being 100% hybridized. In this work, the proposed concept is demonstrated for the application of a chromatographic capture st...
The selection of an appropriate descriptive system and modeling framework to capture system dynamics...
Accurately characterising the design space of a process is critical for the development of robust an...
In this thesis critical issues concerning the application of mechanistic models for the development ...
In this work, we aim to introduce the concept of the degree of hybridization for cell culture proces...
The biopharmaceutical industries are continuously faced with the pressure to reduce the development ...
Due to the progressive digitalization of the industry, more and more data is available not only as d...
Abstract: Applying machine learning (ML) techniques is a complex task when the data quality is poor....
Process chromatography modelling for process development, design, and optimization as well as proces...
Chromatography is an increasingly important separation technique in the fine chemical, pharmaceutica...
With the increase in computational power over the last decades, the use of modeling and simulation i...
Preparative and process chromatography is a versatile unit operation for the capture, purification, ...
This thesis consists of nine publications and manuscripts that focus on different aspects of chromat...
Abstract: Predicting molecular interactions is a crucial step for chemical process modeling. It requ...
Extensive literature has considered reduced, but still highly accurate, nonlinear dynamic process mo...
Preparative chromatography is a well-established operation in chemical and biotechnology manufacturi...
The selection of an appropriate descriptive system and modeling framework to capture system dynamics...
Accurately characterising the design space of a process is critical for the development of robust an...
In this thesis critical issues concerning the application of mechanistic models for the development ...
In this work, we aim to introduce the concept of the degree of hybridization for cell culture proces...
The biopharmaceutical industries are continuously faced with the pressure to reduce the development ...
Due to the progressive digitalization of the industry, more and more data is available not only as d...
Abstract: Applying machine learning (ML) techniques is a complex task when the data quality is poor....
Process chromatography modelling for process development, design, and optimization as well as proces...
Chromatography is an increasingly important separation technique in the fine chemical, pharmaceutica...
With the increase in computational power over the last decades, the use of modeling and simulation i...
Preparative and process chromatography is a versatile unit operation for the capture, purification, ...
This thesis consists of nine publications and manuscripts that focus on different aspects of chromat...
Abstract: Predicting molecular interactions is a crucial step for chemical process modeling. It requ...
Extensive literature has considered reduced, but still highly accurate, nonlinear dynamic process mo...
Preparative chromatography is a well-established operation in chemical and biotechnology manufacturi...
The selection of an appropriate descriptive system and modeling framework to capture system dynamics...
Accurately characterising the design space of a process is critical for the development of robust an...
In this thesis critical issues concerning the application of mechanistic models for the development ...