Articles | Volume 12, issue 7
https://doi.org/10.5194/gmd-12-2797-2019
https://doi.org/10.5194/gmd-12-2797-2019
Development and technical paper
 | 
10 Jul 2019
Development and technical paper |  | 10 Jul 2019

Weather and climate forecasting with neural networks: using general circulation models (GCMs) with different complexity as a study ground

Sebastian Scher and Gabriele Messori

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Cited articles

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Currently, weather forecasts are mainly produced by using computer models based on physical equations. It is an appealing idea to use neural networks and “deep learning” for weather forecasting instead. We successfully test the possibility of using deep learning for weather forecasting by considering climate models as simplified versions of reality. Our work therefore is a step towards potentially using deep learning to replace or accompany current weather forecasting models.