We propose a design procedure for the generation of the training set for Machine Learning algorithms with a specific focus on the approximation of computationally-intensive first-principles kinetic models in catalysis. The procedure is based on the function topology and behavior, by means of the calculation of the discrete gradient, and on the relative importance of the independent variables. We apply the proposed methodology to the tabulation and regression of mean-field and kinetic Monte Carlo models aiming at their coupling with reactor simulations. Our tests – in the context both of mean-field kinetics and kinetic Monte Carlo simulations – show that the procedure is able to design a dataset that requires between 60 and 80% fewer data po...
We propose a grid-like computational model of tubular reactors. The architecture is inspired by the ...
A strategy based on machine learning is discussed to close the gap between the detailed description ...
Machine learning (ML) techniques applied to chemical reactions have a long history. The present cont...
We propose a design procedure for the generation of the training set for Machine Learning algorithms...
We propose a design procedure for the generation of the training set for Machine Learning algorithms...
We propose a design procedure for the generation of the training set for Machine Learning algorithms...
We propose a design procedure for the generation of the training set for Machine Learning algorithms...
We present a numerical framework to integrate first-principles kinetic Monte Carlo (1p-kMC) based mi...
We present a numerical framework to integrate first-principles kinetic Monte Carlo (1p-kMC) based mi...
We present a numerical framework to integrate first-principles kinetic Monte Carlo (1p-kMC) based mi...
We present a numerical framework to integrate first-principles kinetic Monte Carlo (1p-kMC) based mi...
We present a numerical framework to integrate first-principles kinetic Monte Carlo (1p-kMC) based mi...
Lattice models are a useful tool to simulate the kinetics of surface reactions. Since it is expensiv...
Lattice models are a useful tool to simulate the kinetics of surface reactions. Since it is expensiv...
We present a numerical framework to integrate first-principles kinetic Monte Carlo (1p-kMC) based mi...
We propose a grid-like computational model of tubular reactors. The architecture is inspired by the ...
A strategy based on machine learning is discussed to close the gap between the detailed description ...
Machine learning (ML) techniques applied to chemical reactions have a long history. The present cont...
We propose a design procedure for the generation of the training set for Machine Learning algorithms...
We propose a design procedure for the generation of the training set for Machine Learning algorithms...
We propose a design procedure for the generation of the training set for Machine Learning algorithms...
We propose a design procedure for the generation of the training set for Machine Learning algorithms...
We present a numerical framework to integrate first-principles kinetic Monte Carlo (1p-kMC) based mi...
We present a numerical framework to integrate first-principles kinetic Monte Carlo (1p-kMC) based mi...
We present a numerical framework to integrate first-principles kinetic Monte Carlo (1p-kMC) based mi...
We present a numerical framework to integrate first-principles kinetic Monte Carlo (1p-kMC) based mi...
We present a numerical framework to integrate first-principles kinetic Monte Carlo (1p-kMC) based mi...
Lattice models are a useful tool to simulate the kinetics of surface reactions. Since it is expensiv...
Lattice models are a useful tool to simulate the kinetics of surface reactions. Since it is expensiv...
We present a numerical framework to integrate first-principles kinetic Monte Carlo (1p-kMC) based mi...
We propose a grid-like computational model of tubular reactors. The architecture is inspired by the ...
A strategy based on machine learning is discussed to close the gap between the detailed description ...
Machine learning (ML) techniques applied to chemical reactions have a long history. The present cont...