Dataset
defected_phosphorene_ACS_2023
Species content of dataset
Dataset viewer powered by Hugging Face
Name | defected_phosphorene_ACS_2023 |
---|---|
Extended ID | defected_phosphorene_ACS_2023__Kyvala-Angeletti-Franchini-Dellago__DS_k059wtxqsksu_0 |
Description | This dataset contains pristine monolayer phosphorene as well as structures with monovacancies which were used to train an artificial neural network (ANN) for use with a high-dimensional neural network potentials molecular dynamics (HDNNP-MD) simulation. The publication investigates the mechanism and rates of the processes of defect diffusion, as well as monovacancy-to-divacancy defect coalescence. |
Authors |
Lukáš Kývala Andrea Angeletti Cesare Franchini Christoph Dellago |
DOI |
10.60732/87b2341a
https://commons.datacite.org/doi.org/10.60732/87b2341a https://doi.datacite.org/dois/10.60732%2F87b2341a https://doi.org/10.60732/87b2341a Cite as: Kývala, L., Angeletti, A., Franchini, C., and Dellago, C. "defected phosphorene ACS 2023." ColabFit, 2023. https://doi.org/10.60732/87b2341a. For other citation formats, see the DataCite Fabrica page for this dataset. |
Calculated Property Types |
atomic_forces cauchy_stress energy |
Elements |
P (100.0%)
|
Number of Configurations | 5,085 |
Number of Atoms | 722,033 |
Publication Link | https://doi.org/10.1021/acs.jpcc.3c05713 |
Data Source Link | https://doi.org/10.5281/zenodo.8421094 |
Configuration Sets by Name | |
Configuration Sets by ID | |
ColabFit ID | DS_k059wtxqsksu_0 |
Downloads | 7 |
Files | colabfitspec.json |
No uploaded content is transferred in ownership from the original creators to ColabFit. All content is distributed under the license specified by its contributor who has stated that he or she has the authority to share it under the specified license.