| openaire: EC/H2020/676580/EU//NoMaDCatalytic activity of the hydrogen evolution reaction on nanoclusters depends on diverse adsorption site structures. Machine learning reduces the cost for modelling those sites with the aid of descriptors. We analysed the performance of state-of-the-art structural descriptors Smooth Overlap of Atomic Positions, Many-Body Tensor Representation and Atom-Centered Symmetry Functions while predicting the hydrogen adsorption (free) energy on the surface of nanoclusters. The 2D-material molybdenum disulphide and the alloy copper–gold functioned as test systems. Potential energy scans of hydrogen on the cluster surfaces were conducted to compare the accuracy of the descriptors in kernel ridge regression. By havi...
The accurate description of the energy of adsorbate layers is crucial for the understanding of chemi...
Computational catalyst screening has the potential to significantly accelerate heterogeneous catalys...
Using molecular simulation for adsorbent screening is computationally expensive and thus prohibitive...
| openaire: EC/H2020/676580/EU//NoMaDCatalytic activity of the hydrogen evolution reaction on nanocl...
Nano-catalyst design, supplanting critical/rare metals with earth-abundant elements, for hydrogen ev...
A doctoral dissertation completed for the degree of Doctor of Science (Technology) to be defended, w...
Adsorption energies on surfaces are excellent descriptors of their chemical properties, including th...
The process employed to discover new materials for specific applications typically utilizes screenin...
Abstract Transition metal dichalcogenides (TMDs) have emerged as a promising alternative to noble me...
Catalytic properties of noble-metal nanoparticles (NPs) are largely determined by their surface morp...
Metal sub-nano clusters are important materials for catalysis of chemical reactions such as dehydrog...
We propose a machine-learning model, based on the random-forest method, to predict CO adsorption in ...
Complex machine learning (ML) models applied within computational chemistry and materials science te...
Metal–organic frameworks (MOFs) are a class of nanoporous materials that hold great promise for appl...
Computation of adsorption and transition-state energies for a large number of surface intermediates ...
The accurate description of the energy of adsorbate layers is crucial for the understanding of chemi...
Computational catalyst screening has the potential to significantly accelerate heterogeneous catalys...
Using molecular simulation for adsorbent screening is computationally expensive and thus prohibitive...
| openaire: EC/H2020/676580/EU//NoMaDCatalytic activity of the hydrogen evolution reaction on nanocl...
Nano-catalyst design, supplanting critical/rare metals with earth-abundant elements, for hydrogen ev...
A doctoral dissertation completed for the degree of Doctor of Science (Technology) to be defended, w...
Adsorption energies on surfaces are excellent descriptors of their chemical properties, including th...
The process employed to discover new materials for specific applications typically utilizes screenin...
Abstract Transition metal dichalcogenides (TMDs) have emerged as a promising alternative to noble me...
Catalytic properties of noble-metal nanoparticles (NPs) are largely determined by their surface morp...
Metal sub-nano clusters are important materials for catalysis of chemical reactions such as dehydrog...
We propose a machine-learning model, based on the random-forest method, to predict CO adsorption in ...
Complex machine learning (ML) models applied within computational chemistry and materials science te...
Metal–organic frameworks (MOFs) are a class of nanoporous materials that hold great promise for appl...
Computation of adsorption and transition-state energies for a large number of surface intermediates ...
The accurate description of the energy of adsorbate layers is crucial for the understanding of chemi...
Computational catalyst screening has the potential to significantly accelerate heterogeneous catalys...
Using molecular simulation for adsorbent screening is computationally expensive and thus prohibitive...