Extensive literature has considered reduced, but still highly accurate, nonlinear dynamic process models, particularly for distillation columns. Nevertheless, there is a need for continuing research in this field. Herein, opportunities from the integration of machine learning into existing reduction approaches are discussed. First, key concepts for dynamic model reduction and their limitations are briefly reviewed. Afterwards, promising model structures for reduced hybrid mechanistic/data‐driven models are outlined. Finally, crucial future challenges as well as promising research perspectives are presented
Abstract- The aim of this work is to compare several of the commercial dynamic models for batch dist...
This paper presents the development of a simple model which describes the product quality and produc...
This paper presents a neural predictive controller that is applied to distillation column. Distillat...
Although the basic principle of distillation is simple, modelling columns with many trays leads to l...
Distillation is a complex and highly nonlinear industrial process. In general it is not always possi...
Distillation is a widely used separation technique in the process industries. The control of distill...
The aim of this work is to compare several of the commercial dynamic models for batch distillation a...
Distillation columns represent the most widely used separation equipment in the petrochemical indust...
Dynamic models for plants including the startup or shutdown phase are still scarce as the (dis-)appe...
Abstract: Applying machine learning (ML) techniques is a complex task when the data quality is poor....
Competing in a global market place forces chemical industry to be flexible and cost-effective in pro...
In process engineering, two paradigms of modeling approaches exist: the mechanistic and the data-dri...
AM-A generalized model for the dynamic simulation of distillation columns is presented. The model al...
This article presents an approximate alternative to non-linear predictive control. This alternative ...
Distillation is the process most commonly used in industry to separate chemical mixtures; its applic...
Abstract- The aim of this work is to compare several of the commercial dynamic models for batch dist...
This paper presents the development of a simple model which describes the product quality and produc...
This paper presents a neural predictive controller that is applied to distillation column. Distillat...
Although the basic principle of distillation is simple, modelling columns with many trays leads to l...
Distillation is a complex and highly nonlinear industrial process. In general it is not always possi...
Distillation is a widely used separation technique in the process industries. The control of distill...
The aim of this work is to compare several of the commercial dynamic models for batch distillation a...
Distillation columns represent the most widely used separation equipment in the petrochemical indust...
Dynamic models for plants including the startup or shutdown phase are still scarce as the (dis-)appe...
Abstract: Applying machine learning (ML) techniques is a complex task when the data quality is poor....
Competing in a global market place forces chemical industry to be flexible and cost-effective in pro...
In process engineering, two paradigms of modeling approaches exist: the mechanistic and the data-dri...
AM-A generalized model for the dynamic simulation of distillation columns is presented. The model al...
This article presents an approximate alternative to non-linear predictive control. This alternative ...
Distillation is the process most commonly used in industry to separate chemical mixtures; its applic...
Abstract- The aim of this work is to compare several of the commercial dynamic models for batch dist...
This paper presents the development of a simple model which describes the product quality and produc...
This paper presents a neural predictive controller that is applied to distillation column. Distillat...