# MedFormer: a data-driven model for forecasting the Mediterranean Sea

**Authors:** Italo Epicoco, Davide Donno, Gabriele Accarino, Simone Norberti, Alessandro Grandi, Michele Giurato, Ronan McAdam, Donatello Elia, Emanuela Clementi, Paola Nassisi, Enrico Scoccimarro, Giovanni Coppini, Silvio Gualdi, Giovanni Aloisio, Simona Masina, Giulio Boccaletti, Antonio Navarra

arXiv: 2509.00015 · 2025-09-03

## TL;DR

MedFormer is a novel deep learning model that leverages a U-Net architecture with attention mechanisms to improve medium-range ocean forecasting accuracy in the Mediterranean Sea, outperforming traditional systems.

## Contribution

This work introduces MedFormer, a high-resolution, data-driven deep learning model specifically designed for Mediterranean Sea ocean forecasting, integrating historical data and atmospheric forcings.

## Key findings

- MedFormer outperforms the MedFS system in forecast accuracy.
- The model demonstrates high skill in predicting key 3D ocean variables.
- MedFormer offers a computationally efficient alternative to traditional numerical models.

## Abstract

Accurate ocean forecasting is essential for supporting a wide range of marine applications. Recent advances in artificial intelligence have highlighted the potential of data-driven models to outperform traditional numerical approaches, particularly in atmospheric weather forecasting. However, extending these methods to ocean systems remains challenging due to their inherently slower dynamics and complex boundary conditions. In this work, we present MedFormer, a fully data-driven deep learning model specifically designed for medium-range ocean forecasting in the Mediterranean Sea. MedFormer is based on a U-Net architecture augmented with 3D attention mechanisms and operates at a high horizontal resolution of 1/24{\deg}. The model is trained on 20 years of daily ocean reanalysis data and fine-tuned with high-resolution operational analyses. It generates 9-day forecasts using an autoregressive strategy. The model leverages both historical ocean states and atmospheric forcings, making it well-suited for operational use. We benchmark MedFormer against the state-of-the-art Mediterranean Forecasting System (MedFS), developed at Euro-Mediterranean Center on Climate Change (CMCC), using both analysis data and independent observations. The forecast skills, evaluated with the Root Mean Squared Difference and the Anomaly Correlation Coefficient, indicate that MedFormer consistently outperforms MedFS across key 3D ocean variables. These findings underscore the potential of data-driven approaches like MedFormer to complement, or even surpass, traditional numerical ocean forecasting systems in both accuracy and computational efficiency.

## Full text

_Full body text omitted from this summary view._ Fetch the complete paper as Markdown: https://tomesphere.com/paper/2509.00015/full.md

## Figures

66 figures with captions in the complete paper: https://tomesphere.com/paper/2509.00015/full.md

## References

14 references — full list in the complete paper: https://tomesphere.com/paper/2509.00015/full.md

---
Source: https://tomesphere.com/paper/2509.00015