Authors
Stephan Rasp, Michael S Pritchard, Pierre Gentine
Publication date
2018/9/25
Journal
Proceedings of the national academy of sciences
Volume
115
Issue
39
Pages
9684-9689
Publisher
National Academy of Sciences
Description
The representation of nonlinear subgrid processes, especially clouds, has been a major source of uncertainty in climate models for decades. Cloud-resolving models better represent many of these processes and can now be run globally but only for short-term simulations of at most a few years because of computational limitations. Here we demonstrate that deep learning can be used to capture many advantages of cloud-resolving modeling at a fraction of the computational cost. We train a deep neural network to represent all atmospheric subgrid processes in a climate model by learning from a multiscale model in which convection is treated explicitly. The trained neural network then replaces the traditional subgrid parameterizations in a global general circulation model in which it freely interacts with the resolved dynamics and the surface-flux scheme. The prognostic multiyear simulations are stable and closely …
Total citations
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Scholar articles
S Rasp, MS Pritchard, P Gentine - Proceedings of the national academy of sciences, 2018