Earth System Foundation Model (ESFM): A unified framework for heterogeneous data integration and forecasting
Firat Ozdemir, Yun Cheng, Salman Mohebi, Fanny Lehmann, Simon Adamov, Zhenyi Zhang, Leonardo Trentini, Dana Grund, Oliver Fuhrer, Torsten Hoefler, Siddhartha Mishra, Sebastian Schemm, Benedikt Soja, Mathieu Salzmann

TL;DR
The paper introduces ESFM, a versatile foundation model for Earth system data that integrates diverse datasets, captures inter-variable dependencies, and demonstrates superior forecasting performance across various climate data types.
Contribution
It presents a novel, open Earth System Foundation Model extending the Aurora backbone, capable of handling heterogeneous data and enabling new climate science applications.
Findings
ESFM predicts variables in data-sparse regions effectively.
It outperforms state-of-the-art benchmarks in multiple datasets.
Case studies show accurate extreme weather event estimations.
Abstract
Foundation models (FMs) for the Earth system learn statistical relationships between physical variables across massive datasets to enable versatile downstream applications through finetuning, separating them from task-specific weather models. Here, we introduce Earth System Foundation Model (ESFM), a fully open model building on the 3D Swin UNet backbone of the pioneering Aurora model. ESFM introduces extensions that increase functionality and foster adoption in climate sciences. First, the encoding scheme and training protocols have been extended to handle diverse datasets, including those containing missing values across all spatio-temporal dimensions such as satellite data, as well as station data, all under one backbone. Axial attention is introduced to capture inter-variable dependencies. As a result ESFM skillfully predicts variables in regions or on pressure levels where no data…
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