Dataset

DFT_polymorphs_PNAS_2022_PBE_TS_glycine_train




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Name DFT_polymorphs_PNAS_2022_PBE_TS_glycine_train
Extended ID DFT_polymorphs_PNAS_2022_PBE_TS_glycine_train__Kapil-Engel__DS_op9kvcm7ui6l_0
Description Glycine training PBE-TS dataset from "Semi-local and hybrid functional DFT data for thermalised snapshots of polymorphs of benzene, succinic acid, and glycine". DFT reference energies and forces were calculated using Quantum Espresso v6.3. The calculations were performed with the semi-local PBE xc functional, Tkatchenko-Scheffler dispersion correction, optimised norm-conserving Vanderbilt pseudopotentials, a Monkhorst-Pack k-point grid with a maximum spacing of 0.06 x 2Ï€ A^-1, and a plane-wave energy cut-off of 100 Ry for the wavefunction.
Authors Venkat Kapil
Edgar A. Engel
DOI 10.60732/76aa925f
https://commons.datacite.org/doi.org/10.60732/76aa925f
https://doi.datacite.org/dois/10.60732%2F76aa925f
https://doi.org/10.60732/76aa925f

Cite as: Kapil, V., and Engel, E. A. "DFT polymorphs PNAS 2022 PBE TS glycine train." ColabFit, 2023. https://doi.org/10.60732/76aa925f.
For other citation formats, see the DataCite Fabrica page for this dataset.
Calculated Property Types atomic_forces
cauchy_stress
energy
Elements
C (20.0%)
H (50.0%)
N (10.0%)
O (20.0%)
Number of Configurations 29,067
Number of Atoms 952,530
Publication Link https://doi.org/10.1073/pnas.2111769119
Data Source Link https://doi.org/10.24435/materialscloud:vp-jf
Other Links https://github.com/venkatkapil24/data_molecular_fluctuations
Configuration Sets by Name
Configuration Sets by ID
ColabFit ID DS_op9kvcm7ui6l_0
Downloads 6
Files colabfitspec.json

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