Data from: Deep neural networks for accurate predictions of crystal stability

Main Authors: Ye, Weike, Chen, Chi, Wang, Zhenbin, Chu, Iek-Heng, Ong, Shyue Ping
Format: info dataset Journal
Terbitan: , 2019
Subjects:
Online Access: https://zenodo.org/record/4961307
Daftar Isi:
  • Predicting the stability of crystals is one of the central problems in materials science. Today, density functional theory (DFT) calculations remain comparatively expensive and scale poorly with system size. Here we show that deep neural networks utilizing just two descriptors—the Pauling electronegativity and ionic radii—can predict the DFT formation energies of C3A2D3O12 garnets and ABO3 perovskites with low mean absolute errors (MAEs) of 7–10 meV atom−1 and 20–34 meV atom−1, respectively, well within the limits of DFT accuracy. Further extension to mixed garnets and perovskites with little loss in accuracy can be achieved using a binary encoding scheme, addressing a critical gap in the extension of machine-learning models from fixed stoichiometry crystals to infinite universe of mixed-species crystals. Finally, we demonstrate the potential of these models to rapidly transverse vast chemical spaces to accurately identify stable compositions, accelerating the discovery of novel materials with potentially superior properties.
  • CrystalDNNPython scripts, models and data used to predict the formation energies(Ef) and to calculate the energies above hull(Ehull) of garnet and perovskite crystals accompanying the above publication.Funding provided by: National Science FoundationCrossref Funder Registry ID: http://dx.doi.org/10.13039/100000001Award Number: ACI-1053575