Data underlying the research of Kinetic and thermodynamic transition pathways of silica by machine learning: implication for meteorite impacts
doi:10.4121/c881f6f4-3217-439e-8331-026bce99e9f7.v2
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doi: 10.4121/c881f6f4-3217-439e-8331-026bce99e9f7
doi: 10.4121/c881f6f4-3217-439e-8331-026bce99e9f7
Datacite citation style:
Cao, Xuyan (2024): Data underlying the research of Kinetic and thermodynamic transition pathways of silica by machine learning: implication for meteorite impacts. Version 2. 4TU.ResearchData. dataset. https://doi.org/10.4121/c881f6f4-3217-439e-8331-026bce99e9f7.v2
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Dataset
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version 2 - 2024-03-08 (latest)
version 1 - 2024-01-10
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CC BY-NC-ND 4.0
We construct the potential energy surface of silica under various pressure conditions using machine learning potential and have refined three unique pressure windows, either kinetically or thermodynamically favored, to stabilize seifertite, which reached an agreement with observations in meteorites.
history
- 2024-01-10 first online
- 2024-03-08 published, posted
publisher
4TU.ResearchData
format
gzipped shape files
organizations
Center for High Pressure Science & Technology Advanced Research, Collaborative Research for Earth and Applied Materials (CREAM), Beijing, China
DATA
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- 1,292,767 bytesMD5:
a58b1a7462c18ee6e719e0ad4e79cc7c
Dataset.zip - 804,053 bytesMD5:
2f926ee1cebb91f9dc06eb02bbc9dc09
Dataset2.zip -
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