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

Altieri, A., & Baity-Jesi, M. (2024). An introduction to the theory of spin glasses. In T. Chakraborty (Ed.), Reference module in materials science and materials engineering. Encyclopedia of condensed matter physics (pp. 361-370). doi:10.1016/B978-0-323-90800-9.00249-3, Institutional Repository
Baity-Jesi, M., Calore, E., Cruz, A., Fernández, L. A., Gil-Narvión, J. M., Pemartín, I. G. A., … Yllanes, D. (2024). Multifractality in spin glasses. Proceedings of the National Academy of Sciences of the United States of America PNAS, 121(2), e2312880120 (7 pp.). doi:10.1073/pnas.2312880120, Institutional Repository
Francazi, E., Lucchi, A., & Baity-Jesi, M. (2024). Initial guessing bias: how untrained networks favor some classes. In R. Salakhutdinov, Z. Kolter, K. Heller, A. Weller, N. Oliver, J. Scarlett, & F. Berkenkamp (Eds.), Proceedings of machine learning research: Vol. 235. International conference on machine learning (pp. 13783-13839). Vienna: ML Research Press. , Institutional Repository
Gao, H., Hrachowitz, M., Wang-Erlandsson, L., Fenicia, F., Xi, Q., Xia, J., … Savenije, H. H. G. (2024). Root zone in the Earth system. Hydrology and Earth System Sciences, 28(19), 4477-4499. doi:10.5194/hess-28-4477-2024, Institutional Repository
Gasser, L., Schür, C., Perez-Cruz, F., Schirmer, K., & Baity-Jesi, M. (2024). Machine learning-based prediction of fish acute mortality: implementation, interpretation, and regulatory relevance. Environmental Science: Advances, 3(8), 1124-1138. doi:10.1039/d4va00072b, Institutional Repository

News

October 16, 2024 –

A new catalogue and database of over 17,000 European river catchments facilitates the work of researchers in the field of hydrology. The EStreams project, carried out at Eawag, provides hydrological and meteorological data as well...

A new catalogue and database of over 17,000 European river catchments facilitates the work of researchers in the field of hydrology. The EStreams project, carried out at Eawag, provides hydrological and meteorological data as well as information on the landscape of the river regions. The records go back up to 120 years.

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Events

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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