To achieve chemical accuracy in free energy calculations, it is necessary to accurately describe the system\u27s potential energy surface and efficiently sample configurations from its Boltzmann distribution. While neural network potentials (NNPs) have shown significantly higher accuracy than classical molecular mechanics (MM) force fields, they have limited range of applicability and are significantly slower than MM potentials, often by orders of magnitude. To address this challenge, Rufa et al suggested a two-stage approach that uses a fast and established MM alchemical energy protocol, followed by reweighting the results using NNPs, known as endstate correction or indirect free energy calculation. In this study, we systematically investi...
Development and applications of neural network (NN)-based approaches for representing potential ener...
Direct molecular dynamics (MD) simulation with ab initio quantum mechanical and molecular mechanical...
Machine learning (ML) approximations to density functional theory (DFT) potential energy surfaces (P...
We present an approach that extends the theory of targeted free energy perturbation (TFEP) to calcul...
We demonstrate how a deep neural network (NN) trained on a data set of quantum mechanical (QM) DFT c...
Free energy is the driving force behind countless processes ranging from the biological to the indus...
The molecular dynamics (MD) simulation is a favored method in materials science for understanding an...
We present a new method to compute free energies at a quantum mechanical (QM) level of theory from m...
Artificial neural networks are fitted to molecular dynamics trajectories using the Behler-Parrinello...
Despite the ever-increasing computer power, accurate ab initio calculations for large systems (thous...
Photoelectrochemical (PEC) water splitting cells, used to create hydrogen from solar energy, are cru...
Molecular mechanics is the tool of choice for the modeling of systems that are so large or complex t...
A more flexible neural network (NN) method using the fundamental invariants (FIs) as the input vecto...
Molecular mechanics is the tool of choice for the modeling of systems that are so large or complex t...
Accurate modelling of chemical and physical interactions is crucial for obtaining thermodynamic and ...
Development and applications of neural network (NN)-based approaches for representing potential ener...
Direct molecular dynamics (MD) simulation with ab initio quantum mechanical and molecular mechanical...
Machine learning (ML) approximations to density functional theory (DFT) potential energy surfaces (P...
We present an approach that extends the theory of targeted free energy perturbation (TFEP) to calcul...
We demonstrate how a deep neural network (NN) trained on a data set of quantum mechanical (QM) DFT c...
Free energy is the driving force behind countless processes ranging from the biological to the indus...
The molecular dynamics (MD) simulation is a favored method in materials science for understanding an...
We present a new method to compute free energies at a quantum mechanical (QM) level of theory from m...
Artificial neural networks are fitted to molecular dynamics trajectories using the Behler-Parrinello...
Despite the ever-increasing computer power, accurate ab initio calculations for large systems (thous...
Photoelectrochemical (PEC) water splitting cells, used to create hydrogen from solar energy, are cru...
Molecular mechanics is the tool of choice for the modeling of systems that are so large or complex t...
A more flexible neural network (NN) method using the fundamental invariants (FIs) as the input vecto...
Molecular mechanics is the tool of choice for the modeling of systems that are so large or complex t...
Accurate modelling of chemical and physical interactions is crucial for obtaining thermodynamic and ...
Development and applications of neural network (NN)-based approaches for representing potential ener...
Direct molecular dynamics (MD) simulation with ab initio quantum mechanical and molecular mechanical...
Machine learning (ML) approximations to density functional theory (DFT) potential energy surfaces (P...