Department Systems Analysis, Integrated Assessment and Modelling

Systems Analysis, Integrated Assessment and Modelling

In SIAM, we develop and apply models and formal techniques in order to understand, demonstrate, and predict the behavior of natural, technical, social and economical systems that pertain to water and other natural resources. Read more

New Publications

Beven, K., Archfield, S., Batelaan, O., Chen, C., Fenicia, F., Gascuel-Odoux, C., … Vimal, S. (2025). On the value of a history of hydrology and the establishment of a History of Hydrology Working Group. Hydrological Sciences Journal, 70(5), 717-729. doi:10.1080/02626667.2025.2452357, Institutional Repository
Chaparro-Pedraza, P. C., & Bank, C. (2025). Evolving life-history traits promote biodiversity via eco-evolutionary feedback mechanisms. PLoS Biology, 23(11), e3003492 (18 pp.). doi:10.1371/journal.pbio.3003492, Institutional Repository
Cho, P. G., Falster, G., Bolster, D., Berke, M. A., & Müller, M. F. (2025). Influence of the Indian Walker Circulation on δ18OP and Hydroclimate Variability in the Indian Ocean Basin. Journal of Geophysical Research: Atmospheres, 130(8), e2025JD043840 (14 pp.). doi:10.1029/2025JD043840, Institutional Repository
Contzen, N., Aigner, E., Scheidegger, A., Aicher, L., & Wilks, M. F. (2025). Uncovering the value orientations behind health concerns driving pro-environmental decisions: the case of pesticide use in agriculture. Current Research in Ecological and Social Psychology, 9, 100240 (12 pp.). doi:10.1016/j.cresp.2025.100240, Institutional Repository
Dirmeier, S., Albert, C., & Perez-Cruz, F. (2025). Simulation-based Inference for high-dimensional data using surjective sequential neural likelihood estimation. In S. Chiappa & S. Magliacane (Eds.), Proceedings of machine learning research: Vol. 286. Proceedings of the 41st conference on uncertainty in artificial intelligence (UAI 2025) (pp. 1039-1050). Rio de Janeiro: ML Research Press. , Institutional Repository
Eyring, S., Merz, E., Reyes, M., Ntetsika, P., Dennis, S. R., Isles, P. D. F., … Pomati, F. (2025). Distinct phytoplankton size classes respond differently to biotic and abiotic factors. ISME Communications, 5(1), ycae148 (11 pp.). doi:10.1093/ismeco/ycae148, Institutional Repository

News

November 27, 2025 –

A new combination of data and statistical algorithms makes it possible for the first time to precisely track the movements of animals deep underwater. An initial study of flapper skate on the seabed around Scotland will help to...

A new combination of data and statistical algorithms makes it possible for the first time to precisely track the movements of animals deep underwater. An initial study of flapper skate on the seabed around Scotland will help to develop targeted measures to conserve these Critically Endangered animals and designate suitable protected areas. The results have now been published in Science Advances.

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Events

04.12.​2025,
4.00 pm
Eawag Dübendorf, room FC C20 & online via Zoom
31.May. - 05.06.​2026,

Projects

Bridging the gap between data science and mechanistic modelling for a better understanding of community composition.
Heterogeneous data platform for operational modeling and forecasting of Swiss lakes in collaboration with the Swiss Data Science Center.
Deep Neural Networks (DNNs) have shown empirical performance but they are still nevertheless a black-box function modeling data
Scalable Bayesian inference framework for uncertainty quantification in stochastic models using thousands of processors in parallel at the Swiss Supercomputing Center and ETH Zurich.

SPUX - High performance environmental data science

Mechanistic modelling of the macroinvertebrate community composition in rivers.
We compare invasions in aquatic and terrestrial ecosystems primarily at large (national) spatial scales and among several higher-level taxa (insects, molluscs, crustaceans, all major vertebrate classes, and plants).
We use machine learning methods to predict the effects of chemicals on aquatic species.
Development of a semi-distributed hydrological model with a “flexible” approach. Testing and comparing of different model structures to combine modeling and experimenting into a learning process.
Exploring the use of machine learning techniques to uncover low-dimensional features within high-dimensional datasets, both simulated and observed