Atomic structures, conformers and thermodynamic properties of 32k atmospheric molecules




Besel Vitus, Todorović Milica, Kurten Theo, Rinke Patrick, Vehkamäki Hanna

PublisherNATURE PORTFOLIO

2023

Scientific Data

SCIENTIFIC DATA

SCI DATA

450

10

11

2052-4463

DOIhttps://doi.org/10.1038/s41597-023-02366-x(external)

https://www.nature.com/articles/s41597-023-02366-x(external)

https://research.utu.fi/converis/portal/detail/Publication/180438809(external)



Low-volatile organic compounds (LVOCs) drive key atmospheric processes, such as new particle formation (NPF) and growth. Machine learning tools can accelerate studies of these phenomena, but extensive and versatile LVOC datasets relevant for the atmospheric research community are lacking. We present the GeckoQ dataset with atomic structures of 31,637 atmospherically relevant molecules resulting from the oxidation of & alpha;-pinene, toluene and decane. For each molecule, we performed comprehensive conformer sampling with the COSMOconf program and calculated thermodynamic properties with density functional theory (DFT) using the Conductor-like Screening Model (COSMO). Our dataset contains the geometries of the 7 Mio. conformers we found and their corresponding structural and thermodynamic properties, including saturation vapor pressures (p(Sat)), chemical potentials and free energies. The p(Sat) were compared to values calculated with the group contribution method SIMPOL. To validate the dataset, we explored the relationship between structural and thermodynamic properties, and then demonstrated a first machine-learning application with Gaussian process regression.

Last updated on 2024-26-11 at 20:36