Data-driven, or machine learning (ML), approaches have become viable alternatives to semiempirical methods to construct interatomic potentials, due to their capacity to accurately interpolate and extrapolate from first-principles simulations if the training database and descriptor representation of atomic structures are carefully chosen. Here, we present highly accurate interatomic potentials suitable for the study of dislocations, point defects, and their clusters in bcc iron and tungsten, constructed using a linear or quadratic input-output mapping from descriptor space. The proposed quadratic formulation, called quadratic noise ML, differs from previous approaches, being strongly preconditioned by the linear solution. The developed poten...
Abstract Decades of advancements in strategies for the calculation of atomic interactio...
Developing data-driven machine-learning interatomic potential for materials containing many elements...
Machine learning interatomic potentials (MLIPs) are routinely used atomic simulations, but generatin...
Data-driven, or machine learning (ML), approaches have become viable alternatives to semiempirical m...
We introduce interatomic potentials for tungsten in the bcc crystal phase and its defects within the...
International audiencePrediction of condensed matter properties requires an accurate description of ...
International audienceCalculations of dislocation-defect interactions are essential to model metalli...
We show that the Gaussian Approximation Potential (GAP) machine-learning framework can describe comp...
An accurate description of atomic interactions, such as that provided by first principles quantum me...
We present an extension of the ‘learn on the fly’ method to the study of the motion of dislocations ...
Abstract A machine-learned spin-lattice interatomic potential (MSLP) for magnetic iron is developed ...
Screw dislocations in bcc metals display non-planar cores at zero temperature which result in high l...
A machine-learned spin-lattice interatomic potential (MSLP) for magnetic iron is developed and appli...
We introduce interatomic potentials for tungsten in the bcc crystal phase and its defects within the...
The plastic flow behavior of bcc transition metals up to moderate temperatures is dominated by the t...
Abstract Decades of advancements in strategies for the calculation of atomic interactio...
Developing data-driven machine-learning interatomic potential for materials containing many elements...
Machine learning interatomic potentials (MLIPs) are routinely used atomic simulations, but generatin...
Data-driven, or machine learning (ML), approaches have become viable alternatives to semiempirical m...
We introduce interatomic potentials for tungsten in the bcc crystal phase and its defects within the...
International audiencePrediction of condensed matter properties requires an accurate description of ...
International audienceCalculations of dislocation-defect interactions are essential to model metalli...
We show that the Gaussian Approximation Potential (GAP) machine-learning framework can describe comp...
An accurate description of atomic interactions, such as that provided by first principles quantum me...
We present an extension of the ‘learn on the fly’ method to the study of the motion of dislocations ...
Abstract A machine-learned spin-lattice interatomic potential (MSLP) for magnetic iron is developed ...
Screw dislocations in bcc metals display non-planar cores at zero temperature which result in high l...
A machine-learned spin-lattice interatomic potential (MSLP) for magnetic iron is developed and appli...
We introduce interatomic potentials for tungsten in the bcc crystal phase and its defects within the...
The plastic flow behavior of bcc transition metals up to moderate temperatures is dominated by the t...
Abstract Decades of advancements in strategies for the calculation of atomic interactio...
Developing data-driven machine-learning interatomic potential for materials containing many elements...
Machine learning interatomic potentials (MLIPs) are routinely used atomic simulations, but generatin...