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 gen...
Machine learning has been used to represent small-scale processes, such as clouds, in atmospheric mo...
Numerical weather and climate simulations nowadays produce terabytes of data, and the data volume co...
Climate models (CM) are used to evaluate the impact of climate change on the risk of floods and heav...
The representation of nonlinear subgrid processes, especially clouds, has been a major source of unc...
Earth system and climate models are fundamental to understanding and projecting climate change. Alth...
A promising approach to improve cloud parameterizations within climate models and thus climate proje...
A promising approach to improve cloud parameterizations within climate models and thus climate proje...
Deep learning can accurately represent sub-grid-scale convective processes in climate models, learni...
Deep learning can accurately represent sub-grid-scale convective processes in climate models, learni...
Deep learning can accurately represent sub-grid-scale convective processes in climate models, learni...
Abstract We explore the potential of feed‐forward deep neural networks (DNNs) for emulating cloud su...
We explore the potential of feed-forward deep neural networks (DNNs) for emulating cloud superparame...
We explore the potential of feed-forward deep neural networks (DNNs) for emulating cloud superparame...
Deep learning can accurately represent sub‐grid‐scale convective processes in climate models, learni...
A promising approach to improve climate-model simulations is to replace traditional subgrid paramete...
Machine learning has been used to represent small-scale processes, such as clouds, in atmospheric mo...
Numerical weather and climate simulations nowadays produce terabytes of data, and the data volume co...
Climate models (CM) are used to evaluate the impact of climate change on the risk of floods and heav...
The representation of nonlinear subgrid processes, especially clouds, has been a major source of unc...
Earth system and climate models are fundamental to understanding and projecting climate change. Alth...
A promising approach to improve cloud parameterizations within climate models and thus climate proje...
A promising approach to improve cloud parameterizations within climate models and thus climate proje...
Deep learning can accurately represent sub-grid-scale convective processes in climate models, learni...
Deep learning can accurately represent sub-grid-scale convective processes in climate models, learni...
Deep learning can accurately represent sub-grid-scale convective processes in climate models, learni...
Abstract We explore the potential of feed‐forward deep neural networks (DNNs) for emulating cloud su...
We explore the potential of feed-forward deep neural networks (DNNs) for emulating cloud superparame...
We explore the potential of feed-forward deep neural networks (DNNs) for emulating cloud superparame...
Deep learning can accurately represent sub‐grid‐scale convective processes in climate models, learni...
A promising approach to improve climate-model simulations is to replace traditional subgrid paramete...
Machine learning has been used to represent small-scale processes, such as clouds, in atmospheric mo...
Numerical weather and climate simulations nowadays produce terabytes of data, and the data volume co...
Climate models (CM) are used to evaluate the impact of climate change on the risk of floods and heav...