MLLGMar 6, 2024

Development of an offline and online hybrid model for the Integrated Forecasting System

arXiv:2403.03702v213 citationsh-index: 15Q J R Meteorol Soc
Originality Incremental advance
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This work addresses the challenge of improving weather forecasting accuracy and data assimilation suitability for operational systems like the ECMWF's IFS, representing an incremental advancement in hybrid modeling.

The paper tackled the limitations of fully data-driven weather prediction models by developing a hybrid model that integrates a neural network for model error correction into the operational Integrated Forecasting System, resulting in reduced forecast errors after offline pre-training and further accuracy improvements with online training.

In recent years, there has been significant progress in the development of fully data-driven global numerical weather prediction models. These machine learning weather prediction models have their strength, notably accuracy and low computational requirements, but also their weakness: they struggle to represent fundamental dynamical balances, and they are far from being suitable for data assimilation experiments. Hybrid modelling emerges as a promising approach to address these limitations. Hybrid models integrate a physics-based core component with a statistical component, typically a neural network, to enhance prediction capabilities. In this article, we propose to develop a model error correction for the operational Integrated Forecasting System (IFS) of the European Centre for Medium-Range Weather Forecasts using a neural network. The neural network is initially pre-trained offline using a large dataset of operational analyses and analysis increments. Subsequently, the trained network is integrated into the IFS within the Object-Oriented Prediction System (OOPS) so as to be used in data assimilation and forecast experiments. It is then further trained online using a recently developed variant of weak-constraint 4D-Var. The results show that the pre-trained neural network already provides a reliable model error correction, which translates into reduced forecast errors in many conditions and that the online training further improves the accuracy of the hybrid model in many conditions.

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