Deep neural network (DNN) potentials have recently gained popularity in computer simulations of a wide range of molecular systems, from liquids to materials. In this study, we explore the possibility of combining the computational efficiency of the DeePMD framework and the demonstrated accuracy of the MB-pol data-driven many-body potential to train a DNN potential for large-scale simulations of water across its phase diagram. We find that the DNN potential is able to reliably reproduce the MB-pol results for liquid water but provides a less accurate description of the vapor-liquid equilibrium properties. This shortcoming is traced back to the inability of the DNN potential to correctly represent many-body interactions. An attempt to explici...
Recent developments in many-body potential energy representation via deep learning have brought new ...
We show how machine learning techniques based on Bayesian inference can be used to reach new levels ...
Künstliche neuronale Netze können anhand der Ergebnisse komplexer und sehr aufwendiger numerischer V...
Accurate and efficient simulation of liquids, such as water and salt solutions, using high-level wav...
To accurately study the chemical reactions in the condensed phase or within enzymes, both quantum-me...
The accurate representation of multidimensional potential energy surfaces is a necessary requirement...
The accurate representation of multidimensional potential energy surfaces is a necessary requirement...
By adopting a perspective informed by contemporary liquid-state theory, we consider how to train an ...
Machine learning is an attractive paradigm to circumvent difficulties associated with the developmen...
We report on an extensive study of the viscosity of liquid water at near-ambient conditions, perform...
After a general discussion of neural networks potential energy functions and their standing within t...
Density functional theory (DFT) has been extensively used to model the properties of water. Albeit m...
The delicate interplay between functional-driven and density-driven errors in density functional the...
We developed a novel neural network-based force field for water based on training with high-level ab...
To accurately study chemical reactions in the condensed phase or within enzymes, both a quantum-mech...
Recent developments in many-body potential energy representation via deep learning have brought new ...
We show how machine learning techniques based on Bayesian inference can be used to reach new levels ...
Künstliche neuronale Netze können anhand der Ergebnisse komplexer und sehr aufwendiger numerischer V...
Accurate and efficient simulation of liquids, such as water and salt solutions, using high-level wav...
To accurately study the chemical reactions in the condensed phase or within enzymes, both quantum-me...
The accurate representation of multidimensional potential energy surfaces is a necessary requirement...
The accurate representation of multidimensional potential energy surfaces is a necessary requirement...
By adopting a perspective informed by contemporary liquid-state theory, we consider how to train an ...
Machine learning is an attractive paradigm to circumvent difficulties associated with the developmen...
We report on an extensive study of the viscosity of liquid water at near-ambient conditions, perform...
After a general discussion of neural networks potential energy functions and their standing within t...
Density functional theory (DFT) has been extensively used to model the properties of water. Albeit m...
The delicate interplay between functional-driven and density-driven errors in density functional the...
We developed a novel neural network-based force field for water based on training with high-level ab...
To accurately study chemical reactions in the condensed phase or within enzymes, both a quantum-mech...
Recent developments in many-body potential energy representation via deep learning have brought new ...
We show how machine learning techniques based on Bayesian inference can be used to reach new levels ...
Künstliche neuronale Netze können anhand der Ergebnisse komplexer und sehr aufwendiger numerischer V...