EMS Annual Meeting Abstracts
Vol. 22, EMS2025-736, 2025, updated on 26 Aug 2025
https://doi.org/10.5194/ems2025-736
EMS Annual Meeting 2025
© Author(s) 2025. This work is distributed under
the Creative Commons Attribution 4.0 License.
A deep role of deep learning in environmental research, forecasting and applications
Matjaz Licer
Matjaz Licer
  • Slovenian Environment Agency, Office for Meteorology, Hydrology and Oceanography

In the lecture we will very briefly illustrate the general idea behind deep learning as a universal function approximator. To illustrate this universality, we will present several deep learning algorithms that we are developing to address very different operational challenges in oceanography and hydrology, ranging from storm surge forecasting, meteorological tsunami modeling and ocean gravity wave emulations to hydrological discharge predictions and sparse satellite data reconstructions. Each of presented deep algorithms turned out to be beneficial, but for different reasons. This leads us to the heuristic aspect of such predictions: do these deep algorithms function merely as numerically cheap, if opaque, replacements of classical numerical models or can they offer a complementary route to results that are beyond classical geophysical  models?

How to cite: Licer, M.: A deep role of deep learning in environmental research, forecasting and applications, EMS Annual Meeting 2025, Ljubljana, Slovenia, 7–12 Sep 2025, EMS2025-736, https://doi.org/10.5194/ems2025-736, 2025.

Recorded presentation

Show EMS2025-736 recording (22min) recording