The Gaussian approximation potential (GAP) is an accurate machine-learning interatomic potential that was recently extended to include the description of radiation effects. In this study, we seek to validate a faster version of GAP, known as tabulated GAP (tabGAP), by modelling primary radiation damage in 50- 50 W-Mo alloys and pure W using classical molecular dynamics. We find that W-Mo exhibits a similar number of surviving defects as in pure W. We also observe W-Mo to possess both more efficient recom-bination of defects produced during the initial phase of the cascades, and in some cases, unlike pure W, recombination of all defects after the cascades cooled down. Furthermore, we observe that the tabGAP is two orders of magnitude faster ...
Models of radiation damage accumulation often assume a constant rate of additional primary damage fo...
Tungsten, as the most refractory metal, is applied in fusion reactor in parts subjected to high temp...
In this work, we develop a machine-learning interatomic potential for WxMo1−x random alloys. The pot...
We introduce a machine-learning interatomic potential for tungsten using the Gaussian approximation ...
The analysis of the damage on plasma facing materials (PFM), due to their direct interaction with th...
We develop a silicon Gaussian approximation machine learning potential suitable for radiation effect...
In this work, we study the damage in crystalline molybdenum material samples due to neutron bombardm...
International audiencePrediction of condensed matter properties requires an accurate description of ...
Characterization of the primary damage is the starting point in describing and predicting the irradi...
We develop a set of machine-learning interatomic potentials for elemental V, Nb, Mo, Ta, and W using...
The fundamental mechanisms of radiation damage in metal alloys of equiatomic composition are of grea...
We describe the development of a new object kinetic Monte Carlo (kMC) code where the elementary defe...
In this study, we examined the impact of energies of 2.54 keV and 5 keV displacement cascades in mol...
One of the key challenges to overcome when designing fusion reactors is choosing appropriate materia...
We introduce interatomic potentials for tungsten in the bcc crystal phase and its defects within the...
Models of radiation damage accumulation often assume a constant rate of additional primary damage fo...
Tungsten, as the most refractory metal, is applied in fusion reactor in parts subjected to high temp...
In this work, we develop a machine-learning interatomic potential for WxMo1−x random alloys. The pot...
We introduce a machine-learning interatomic potential for tungsten using the Gaussian approximation ...
The analysis of the damage on plasma facing materials (PFM), due to their direct interaction with th...
We develop a silicon Gaussian approximation machine learning potential suitable for radiation effect...
In this work, we study the damage in crystalline molybdenum material samples due to neutron bombardm...
International audiencePrediction of condensed matter properties requires an accurate description of ...
Characterization of the primary damage is the starting point in describing and predicting the irradi...
We develop a set of machine-learning interatomic potentials for elemental V, Nb, Mo, Ta, and W using...
The fundamental mechanisms of radiation damage in metal alloys of equiatomic composition are of grea...
We describe the development of a new object kinetic Monte Carlo (kMC) code where the elementary defe...
In this study, we examined the impact of energies of 2.54 keV and 5 keV displacement cascades in mol...
One of the key challenges to overcome when designing fusion reactors is choosing appropriate materia...
We introduce interatomic potentials for tungsten in the bcc crystal phase and its defects within the...
Models of radiation damage accumulation often assume a constant rate of additional primary damage fo...
Tungsten, as the most refractory metal, is applied in fusion reactor in parts subjected to high temp...
In this work, we develop a machine-learning interatomic potential for WxMo1−x random alloys. The pot...