Atenção!


O atendimento às questões referentes ao Repositório Institucional será interrompido entre os dias 20 de dezembro de 2025 a 4 de janeiro de 2026.

Pedimos a sua compreensão e aproveitamos para desejar boas festas!

Logo do repositório

Size and Quality of Quantum Mechanical Data Set for Training Neural Network Force Fields for Liquid Water

Carregando...
Imagem de Miniatura

Orientador

Coorientador

Pós-graduação

Curso de graduação

Título da Revista

ISSN da Revista

Título de Volume

Editor

Tipo

Artigo

Direito de acesso

Resumo

Molecular dynamics simulations have been used in different scientific fields to investigate a broad range of physical systems. However, the accuracy of calculation is based on the model considered to describe the atomic interactions. In particular, ab initio molecular dynamics (AIMD) has the accuracy of density functional theory (DFT) and thus is limited to small systems and a relatively short simulation time. In this scenario, Neural Network Force Fields (NNFFs) have an important role, since they provide a way to circumvent these caveats. In this work, we investigate NNFFs designed at the level of DFT to describe liquid water, focusing on the size and quality of the training data set considered. We show that structural properties are less dependent on the size of the training data set compared to dynamical ones (such as the diffusion coefficient), and a good sampling (selecting data reference for the training process) can lead to a small sample with good precision.

Descrição

Palavras-chave

Idioma

Inglês

Citação

Journal of Physical Chemistry B, v. 127, n. 6, p. 1422-1428, 2023.

Itens relacionados

Unidades

Departamentos

Cursos de graduação

Programas de pós-graduação

Outras formas de acesso