
Publications of Matteo Krüger
All genres
Journal Article (4)
1.
Journal Article
Krüger, M., , Eremets, I., , Pöschl, U., and Berkemeier, T.: Improved vapor pressure predictions using group contribution-assisted graph convolutional neural networks (GC2NN), Geoscientific Model Development, 18(20), 7357–7371, doi:10.5194/gmd-18-7357-2025, 2025.
2.
Journal Article
Krüger, M., Mishra, A., , Pöschl, U. and Berkemeier, T.: A numerical compass for experiment design in chemical kinetics and molecular property estimation, Journal of Cheminformatics, 16, doi: 10.1186/s13321-024-00825-0, 2024.
3.
Journal Article
Berkemeier, T., Krüger, M., , , Pöschl, U. and : Accelerating models for multiphase chemical kinetics through machine learning with polynomial chaos expansion and neural networks, Geoscientific Model Development, 16(7), 2037–2054, doi:10.5194/gmd-16-2037-2023, 2023.
4.
Journal Article
Krüger, M., Wilson, J., Wietzoreck, M., Bandowe, B. A. M., Lammel, G., , Pöschl, U. and Berkemeier, T.: Convolutional neural network prediction of molecular properties for aerosol chemistry and health effects, Natural Sciences, 2, doi:10.1002/ntls.20220016, 2022.
Meeting Abstract (2)
5.
Meeting Abstract
Krüger, M., Klingmüller, K., , Lelieveld, J., Pöschl, U., Pozzer, A. and Berkemeier, T.: Global Health Map: Coupling EMAC and KM-SUB-ELF to estimate air pollution health effects using accurate iron soluble fractions, in EGU General Assembly 2026, Vienna, Austria, 3–8 May 2026, EGU., 2026.
6.
Meeting Abstract
Raj, S. S., Hrabe de Angelis, I., Basic, S., Aardema, H. M., Slagter, H. A., , , Krüger, M., Andreae, M. O., Dragoneas, A., Nillius, B., Walter, D., Berkemeier, T., Haug, G. H., Pöschl, U., Schiebel, R. and Pöhlker, C.: Exploring aerosol size distributions from polar to tropical zones of the Atlantic Ocean, in EGU General Assembly 2024, Vienna, Austria & Online., 2024.
Thesis - PhD (1)
7.
Thesis - PhD
Krüger, M.: Machine learning for the elucidation of multiphase processes and systems, PhD Thesis, Universität, Mainz, November. [online] Available from: http://hdl.handle.net/21.11116/0000-0012-1261-A, 2025.
Preprint (3)
8.
Preprint
Krüger, M., , Eremets, I., , Pöschl, U., and Berkemeier, T.: Improved vapor pressure predictions using group contribution-assisted graph convolutional neural networks (GC2NN), EGUsphere, doi:10.5194/egusphere-2025-1191, 2025.
9.
Preprint
Krüger, M., Mishra, A., , Pöschl, U. and Berkemeier, T.: A kinetic compass for the design of experiments to determine kinetic parameters, Research Square, doi:10.21203/rs.3.rs-3317747/v1, 2023.
10.
Preprint
Berkemeier, T., Krüger, M., , , Pöschl, U. and : Accelerating models for multiphase chemical kinetics through machine learning with polynomial chaos expansion and neural networks, EGUsphere, doi:10.5194/egusphere-2022-1093, 2022.