A Set of Moment Tensor Potentials for Zirconium with Increasing Complexity.

Autor: Luo Y; Department of Mechanical and Materials Engineering, Queen's University, Kingston, Ontario K7L 2N8, Canada., Meziere JA; Department of Physics, Brigham Young University, Provo, Utah 84602, United States., Samolyuk GD; Materials Science and Technology Division, Oak Ridge National Laboratory, Oak Ridge, Tennessee 37831-6138, United States., Hart GLW; Department of Physics, Brigham Young University, Provo, Utah 84602, United States., Daymond MR; Department of Mechanical and Materials Engineering, Queen's University, Kingston, Ontario K7L 2N8, Canada., Béland LK; Department of Mechanical and Materials Engineering, Queen's University, Kingston, Ontario K7L 2N8, Canada.
Jazyk: angličtina
Zdroj: Journal of chemical theory and computation [J Chem Theory Comput] 2023 Oct 10; Vol. 19 (19), pp. 6848-6856. Date of Electronic Publication: 2023 Sep 12.
DOI: 10.1021/acs.jctc.3c00488
Abstrakt: Machine learning force fields (MLFFs) are an increasingly popular choice for atomistic simulations due to their high fidelity and improvable nature. Here we propose a hybrid small-cell approach that combines attributes of both offline and active learning to systematically expand a quantum-mechanical (QM) database while constructing MLFFs with increasing model complexity. Our MLFFs employ the moment tensor potential formalism. During this process, we quantitatively assessed the structural properties, elastic properties, dimer potential energies, melting temperatures, phase stability, point defect formation energies, point defect migration energies, free surface energies, and generalized stacking fault (GSF) energies of Zr as predicted by our MLFFs. Unsurprisingly, the model complexity has a positive correlation with prediction accuracy. We also find that the MLFFs were able to predict the properties of out-of-sample configurations without directly including these specific configurations in the training dataset. Additionally, we generated 100 MLFFs of high complexity (1513 parameters each) that reached different local optima during training. Their predictions cluster around the benchmark DFT values, but subtle physical features such as the location of local minima on the GSF energy surface are washed out by statistical noise.
Databáze: MEDLINE