The industrialization of catalytic processes requires reliable kinetic models for their design, optimization and control. Mechanistic models require significant domain knowledge, while data-driven and hybrid models lack interpretability. Automated knowledge discovery methods, such as ALAMO (Automated Learning of Algebraic Models for Optimization), SINDy (Sparse Identification of Nonlinear Dynamics), and genetic programming, have gained popularity but suffer from limitations such as needing model structure assumptions, exhibiting poor scalability, and displaying sensitivity to noise. To overcome these challenges, we propose two methodological frameworks, ADoK-S and ADoK-W (Automated Discovery of Kinetic rate models using a Strong/Weak formul...
Hydroprocessing reactions require several days to reach steady-state, leading to long experimentatio...
We propose a design procedure for the generation of the training set for Machine Learning algorithms...
Hybrid kinetic models represent a promising alternative to describe and evaluate the effect of multi...
The continuing development of high throughput experiments (HTE) in the field of catalysis has dramat...
We herein report a novel kinetic modelling methodology whereby identification of the correct reactio...
Kinetically relevant information for heterogeneously catalysed reactions is automatically extracted ...
Accurate and transferable models of reaction kinetics are of key importance for chemical reactors on...
We herein report experimental applications of a novel, automated computational approach to chemical ...
Kinetically relevant information for heterogeneously catalysed reactions is automatically extracted ...
The goal of the paper is to automatize the construction and parameterization of kinetic reaction mec...
In a recent article [J. Chem. Phys., 143, 094106 (2015)], we have introduced a novel graph-based sam...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Chemical Engineering, 2018Catal...
Hydroprocessing reactions require several days to reach steady-state, leading to long experimentatio...
Background: The size and complexity of published biochemical network reconstructions are steadily in...
Özdemir, Burcu (Dogus Author)In studies on chemical kinetics, generally after the rate data have bee...
Hydroprocessing reactions require several days to reach steady-state, leading to long experimentatio...
We propose a design procedure for the generation of the training set for Machine Learning algorithms...
Hybrid kinetic models represent a promising alternative to describe and evaluate the effect of multi...
The continuing development of high throughput experiments (HTE) in the field of catalysis has dramat...
We herein report a novel kinetic modelling methodology whereby identification of the correct reactio...
Kinetically relevant information for heterogeneously catalysed reactions is automatically extracted ...
Accurate and transferable models of reaction kinetics are of key importance for chemical reactors on...
We herein report experimental applications of a novel, automated computational approach to chemical ...
Kinetically relevant information for heterogeneously catalysed reactions is automatically extracted ...
The goal of the paper is to automatize the construction and parameterization of kinetic reaction mec...
In a recent article [J. Chem. Phys., 143, 094106 (2015)], we have introduced a novel graph-based sam...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Chemical Engineering, 2018Catal...
Hydroprocessing reactions require several days to reach steady-state, leading to long experimentatio...
Background: The size and complexity of published biochemical network reconstructions are steadily in...
Özdemir, Burcu (Dogus Author)In studies on chemical kinetics, generally after the rate data have bee...
Hydroprocessing reactions require several days to reach steady-state, leading to long experimentatio...
We propose a design procedure for the generation of the training set for Machine Learning algorithms...
Hybrid kinetic models represent a promising alternative to describe and evaluate the effect of multi...