Over the past years high-dimensional neural network potentials (HDNNPs), fitted to accurately reproduce ab initio potential energy surfaces, have become a powerful tool in chemistry, physics and materials science. Here, we focus on the training of the neural networks that lies at the heart of the HDNNP method. We present an efficient approach for optimizing the weight parameters of the neural network via multistream Kalman filtering, using potential energies and forces as reference data. In this procedure, the choice of the free parameters of the Kalman filter can have a significant impact on the fit quality. Carrying out a large parameter study, we determine optimal settings and demonstrate how to optimize training results of HDNNPs. Moreo...
International audienceWe significantly improve the physical models underlying atomistic Monte Carlo ...
Machine learning potentials (MLPs) have become an indispensable tool for large-scale atomistic simul...
We develop a neuroevolution-potential (NEP) framework for generating neural network-based machine-le...
Over the past years high-dimensional neural network potentials (HDNNPs), fitted to accurately reprod...
It is shown that neural networks (NNs) are efficient and effective tools for fitting potential energ...
The molecular dynamics (MD) simulation is a favored method in materials science for understanding an...
We developed the AlCu ML interatomic potentials using the DeePMD software [T. Wen, L. Zhang, H. Wang...
We implement a method for constructing analytic interatomic potentials by fitting artificial neural ...
Development and applications of neural network (NN)-based approaches for representing potential ener...
Artificial neural networks are fitted to molecular dynamics trajectories using the Behler-Parrinello...
A myriad of phenomena in materials science and chemistry rely on quantum-level simulations of the el...
A central concern of molecular dynamics simulations is the potential energy surfaces that govern ato...
Computing material properties at the ab-initio level of detail is computationally prohibitive for la...
Availability of affordable and widely applicable interatomic potentials is the key needed to unlock ...
International audienceWe significantly improve the physical models underlying atomistic Monte Carlo ...
International audienceWe significantly improve the physical models underlying atomistic Monte Carlo ...
Machine learning potentials (MLPs) have become an indispensable tool for large-scale atomistic simul...
We develop a neuroevolution-potential (NEP) framework for generating neural network-based machine-le...
Over the past years high-dimensional neural network potentials (HDNNPs), fitted to accurately reprod...
It is shown that neural networks (NNs) are efficient and effective tools for fitting potential energ...
The molecular dynamics (MD) simulation is a favored method in materials science for understanding an...
We developed the AlCu ML interatomic potentials using the DeePMD software [T. Wen, L. Zhang, H. Wang...
We implement a method for constructing analytic interatomic potentials by fitting artificial neural ...
Development and applications of neural network (NN)-based approaches for representing potential ener...
Artificial neural networks are fitted to molecular dynamics trajectories using the Behler-Parrinello...
A myriad of phenomena in materials science and chemistry rely on quantum-level simulations of the el...
A central concern of molecular dynamics simulations is the potential energy surfaces that govern ato...
Computing material properties at the ab-initio level of detail is computationally prohibitive for la...
Availability of affordable and widely applicable interatomic potentials is the key needed to unlock ...
International audienceWe significantly improve the physical models underlying atomistic Monte Carlo ...
International audienceWe significantly improve the physical models underlying atomistic Monte Carlo ...
Machine learning potentials (MLPs) have become an indispensable tool for large-scale atomistic simul...
We develop a neuroevolution-potential (NEP) framework for generating neural network-based machine-le...