In this work, we present a highly accurate spectral neighbor analysis potential (SNAP) model for molybdenum (Mo) developed through the rigorous application of machine learning techniques on large materials data sets. Despite Mo's importance as a structural metal, existing force fields for Mo based on the embedded atom and modified embedded atom methods do not provide satisfactory accuracy on many properties. We will show that by fitting to the energies, forces, and stress tensors of a large density functional theory (DFT)-computed dataset on a diverse set of Mo structures, a Mo SNAP model can be developed that achieves close to DFT accuracy in the prediction of a broad range of properties, including elastic constants, melting point, phonon ...
Crystal structure prediction involves a search of a complex configurational space for local minima c...
Interatomic potentials are widely used in computational materials science, in particular for simulat...
Development of new materials via experiments alone is costly and can take years, if not decades, to ...
Interatomic potential (i.e. force-field) plays a vital role in atomistic simulation of materials. Em...
Machine learning of the quantitative relationship between local environment descriptors and the pote...
In this work, we study the damage in crystalline molybdenum material samples due to neutron bombardm...
In materials science, the first principles modeling, especially density functional theory (DFT), ser...
Machine learning techniques using artificial neural networks (ANNs) have proven to be effective tool...
Metallic alloys are important materials in engineering for their versatile properties. With the deve...
Crystal structure prediction involves a search of a complex configurational space for local minima c...
Crystal structure prediction involves a search of a complex configurational space for local minima c...
In this study, we examined the impact of energies of 2.54 keV and 5 keV displacement cascades in mol...
In this work, we develop a machine-learning interatomic potential for WxMo1−x random alloys. The pot...
Atomic-scale modeling and understanding of materials have made remarkable progress, but they are sti...
Machine Learning (ML) techniques are revolutionizing the way to perform efficient materials modeling...
Crystal structure prediction involves a search of a complex configurational space for local minima c...
Interatomic potentials are widely used in computational materials science, in particular for simulat...
Development of new materials via experiments alone is costly and can take years, if not decades, to ...
Interatomic potential (i.e. force-field) plays a vital role in atomistic simulation of materials. Em...
Machine learning of the quantitative relationship between local environment descriptors and the pote...
In this work, we study the damage in crystalline molybdenum material samples due to neutron bombardm...
In materials science, the first principles modeling, especially density functional theory (DFT), ser...
Machine learning techniques using artificial neural networks (ANNs) have proven to be effective tool...
Metallic alloys are important materials in engineering for their versatile properties. With the deve...
Crystal structure prediction involves a search of a complex configurational space for local minima c...
Crystal structure prediction involves a search of a complex configurational space for local minima c...
In this study, we examined the impact of energies of 2.54 keV and 5 keV displacement cascades in mol...
In this work, we develop a machine-learning interatomic potential for WxMo1−x random alloys. The pot...
Atomic-scale modeling and understanding of materials have made remarkable progress, but they are sti...
Machine Learning (ML) techniques are revolutionizing the way to perform efficient materials modeling...
Crystal structure prediction involves a search of a complex configurational space for local minima c...
Interatomic potentials are widely used in computational materials science, in particular for simulat...
Development of new materials via experiments alone is costly and can take years, if not decades, to ...