Machine-learning potentials (MLPs) for atomistic simulations are a promising alternative to conventional classical potentials. Current approaches rely on descriptors of the local atomic environment with dimensions that increase quadratically with the number of chemical species. In this paper, we demonstrate that such a scaling can be avoided in practice. We show that a mathematically simple and computationally efficient descriptor with constant complexity is sufficient to represent transition-metal oxide compositions and biomolecules containing 11 chemical species with a precision of around 3 meV/atom. This insight removes a perceived bound on the utility of MLPs and paves the way to investigate the physics of previously inaccessible materi...
Interatomic potential models based on machine learning (ML) are rapidly developing as tools for mate...
Automated analyses of the outcome of a simulation have been an important part of atomistic modeling ...
We briefly summarize the kernel regression approach, as used recently in materials modelling, to fit...
Machine-learning potentials (MLPs) for atomistic simulations are a promising alternative to conventi...
Atomic-scale modeling and understanding of materials have made remarkable progress, but they are sti...
Electronic structure calculations, such as those employing Kohn–Sham density functional theory or ab...
A central concern of molecular dynamics simulations is the potential energy surfaces that govern ato...
Statistical learning algorithms are finding more and more applications in science and technology. At...
Machine learning of the quantitative relationship between local environment descriptors and the pote...
Understanding materials dynamics under extreme conditions of pressure, temperature, and strain rate ...
Funder: Georg-August-Universität Göttingen (1018)Abstract: In the past two and a half decades machin...
Recent advances in quantum mechanical (QM)-based molecular dynamics (MD) simulations have used machi...
Developing data-driven machine-learning interatomic potential for materials containing many elements...
Computational study of molecules and materials from first principles is a cornerstone of physics, ch...
Interatomic potential (i.e. force-field) plays a vital role in atomistic simulation of materials. Em...
Interatomic potential models based on machine learning (ML) are rapidly developing as tools for mate...
Automated analyses of the outcome of a simulation have been an important part of atomistic modeling ...
We briefly summarize the kernel regression approach, as used recently in materials modelling, to fit...
Machine-learning potentials (MLPs) for atomistic simulations are a promising alternative to conventi...
Atomic-scale modeling and understanding of materials have made remarkable progress, but they are sti...
Electronic structure calculations, such as those employing Kohn–Sham density functional theory or ab...
A central concern of molecular dynamics simulations is the potential energy surfaces that govern ato...
Statistical learning algorithms are finding more and more applications in science and technology. At...
Machine learning of the quantitative relationship between local environment descriptors and the pote...
Understanding materials dynamics under extreme conditions of pressure, temperature, and strain rate ...
Funder: Georg-August-Universität Göttingen (1018)Abstract: In the past two and a half decades machin...
Recent advances in quantum mechanical (QM)-based molecular dynamics (MD) simulations have used machi...
Developing data-driven machine-learning interatomic potential for materials containing many elements...
Computational study of molecules and materials from first principles is a cornerstone of physics, ch...
Interatomic potential (i.e. force-field) plays a vital role in atomistic simulation of materials. Em...
Interatomic potential models based on machine learning (ML) are rapidly developing as tools for mate...
Automated analyses of the outcome of a simulation have been an important part of atomistic modeling ...
We briefly summarize the kernel regression approach, as used recently in materials modelling, to fit...