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AIFS -- ECMWF's data-driven forecasting system

Authors :
Lang, Simon
Alexe, Mihai
Chantry, Matthew
Dramsch, Jesper
Pinault, Florian
Raoult, Baudouin
Clare, Mariana C. A.
Lessig, Christian
Maier-Gerber, Michael
Magnusson, Linus
Bouallègue, Zied Ben
Nemesio, Ana Prieto
Dueben, Peter D.
Brown, Andrew
Pappenberger, Florian
Rabier, Florence
Publication Year :
2024

Abstract

Machine learning-based weather forecasting models have quickly emerged as a promising methodology for accurate medium-range global weather forecasting. Here, we introduce the Artificial Intelligence Forecasting System (AIFS), a data driven forecast model developed by the European Centre for Medium-Range Weather Forecasts (ECMWF). AIFS is based on a graph neural network (GNN) encoder and decoder, and a sliding window transformer processor, and is trained on ECMWF's ERA5 re-analysis and ECMWF's operational numerical weather prediction (NWP) analyses. It has a flexible and modular design and supports several levels of parallelism to enable training on high-resolution input data. AIFS forecast skill is assessed by comparing its forecasts to NWP analyses and direct observational data. We show that AIFS produces highly skilled forecasts for upper-air variables, surface weather parameters and tropical cyclone tracks. AIFS is run four times daily alongside ECMWF's physics-based NWP model and forecasts are available to the public under ECMWF's open data policy.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2406.01465
Document Type :
Working Paper