Abstract: Applying machine learning (ML) techniques is a complex task when the data quality is poor. Integrating firstprinciple models and ML techniques, namely hybrid modelling significantly supports this task. This paper introduces a novel approach to developing a hybrid model for dynamic chemical systems. The case in analysis employs one first-principle structure and two ML-based predictors. Two training approaches (serial and parallel), two optimisers (particle swarm optimisation and differential evolution) and two ML functions (multivariate rational function and polynomial) are tested. The polynomial function trained with the differential evolution showed the most accurate and robust results. The training approach does not significantl...
Modeling of bioprocesses for engineering applications is a very difficult and time consuming task, d...
The biopharmaceutical industries are continuously faced with the pressure to reduce the development ...
In this work a hybrid neural modelling methodology, which combines mass balance equations with funct...
In process engineering, two paradigms of modeling approaches exist: the mechanistic and the data-dri...
Parallel hybrid modeling methods are applied to a full-scale cokes wastewater treatment plant. Withi...
In recent years, hybrid neural network approaches, which combine mechanistic and neural network mode...
Abstract: Predicting molecular interactions is a crucial step for chemical process modeling. It requ...
Catalytic chemical processes such as hydrocracking, gasification and pyrolysis play a vital role in ...
Machine learning (ML) methods were developed and optimized for description and understanding a physi...
Extensive literature has considered reduced, but still highly accurate, nonlinear dynamic process mo...
Separation and capture of CO2 from gas mixtures is of great importance from environmental point of v...
In this work, we aim to introduce the concept of the degree of hybridization for cell culture proces...
An unconventional modelling methodology based on artificial neural networks is proposed to rapidly d...
The selection of an appropriate descriptive system and modeling framework to capture system dynamics...
A surrogate model-based method is proposed for the optimisation of batch distillation processes and ...
Modeling of bioprocesses for engineering applications is a very difficult and time consuming task, d...
The biopharmaceutical industries are continuously faced with the pressure to reduce the development ...
In this work a hybrid neural modelling methodology, which combines mass balance equations with funct...
In process engineering, two paradigms of modeling approaches exist: the mechanistic and the data-dri...
Parallel hybrid modeling methods are applied to a full-scale cokes wastewater treatment plant. Withi...
In recent years, hybrid neural network approaches, which combine mechanistic and neural network mode...
Abstract: Predicting molecular interactions is a crucial step for chemical process modeling. It requ...
Catalytic chemical processes such as hydrocracking, gasification and pyrolysis play a vital role in ...
Machine learning (ML) methods were developed and optimized for description and understanding a physi...
Extensive literature has considered reduced, but still highly accurate, nonlinear dynamic process mo...
Separation and capture of CO2 from gas mixtures is of great importance from environmental point of v...
In this work, we aim to introduce the concept of the degree of hybridization for cell culture proces...
An unconventional modelling methodology based on artificial neural networks is proposed to rapidly d...
The selection of an appropriate descriptive system and modeling framework to capture system dynamics...
A surrogate model-based method is proposed for the optimisation of batch distillation processes and ...
Modeling of bioprocesses for engineering applications is a very difficult and time consuming task, d...
The biopharmaceutical industries are continuously faced with the pressure to reduce the development ...
In this work a hybrid neural modelling methodology, which combines mass balance equations with funct...