A promising method for improving the representation of clouds in climate models, and hence climate projections, is to develop machine learning-based parameterizations using output from global storm-resolving models. While neural networks can achieve state-of-the-art performance within their training distribution, they can make unreliable predictions outside of it. Additionally, they often require post-hoc tools for interpretation. To avoid these limitations, we combine symbolic regression, sequential feature selection, and physical constraints in a hierarchical modeling framework. This framework allows us to discover new equations diagnosing cloud cover from coarse-grained variables of global storm-resolving model simulations. These analyti...
Earth system models are fundamental to understanding and projecting climate change. The models have ...
The representation of nonlinear subgrid processes, especially clouds, has been a major source of unc...
Aerosol effects on cloud properties are notoriously difficult to disentangle from variations driven ...
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...
The representation of nonlinear subgrid processes, especially clouds, has been a major source of unc...
AbstractThis is a contribution to the long standing search by climatologists and meteorologists for ...
Global models are an essential tool for climate projections, but conventional coarse-resolution atmo...
Clouds play a key role in regulating climate change but are difficult to simulate within Earth syste...
Cloud microphysical parameterizations in atmospheric models describe the formation and evolution of ...
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...
This is the author accepted manuscript. The final version is available from Nature Research via the ...
Climate change is stated as one of the largest issues of our time, resulting in many unwanted effect...
Global climate models (GCM) have been used for nearly two decades now as a tool to investigate and a...
Earth system models are fundamental to understanding and projecting climate change. The models have ...
The representation of nonlinear subgrid processes, especially clouds, has been a major source of unc...
Aerosol effects on cloud properties are notoriously difficult to disentangle from variations driven ...
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...
The representation of nonlinear subgrid processes, especially clouds, has been a major source of unc...
AbstractThis is a contribution to the long standing search by climatologists and meteorologists for ...
Global models are an essential tool for climate projections, but conventional coarse-resolution atmo...
Clouds play a key role in regulating climate change but are difficult to simulate within Earth syste...
Cloud microphysical parameterizations in atmospheric models describe the formation and evolution of ...
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...
This is the author accepted manuscript. The final version is available from Nature Research via the ...
Climate change is stated as one of the largest issues of our time, resulting in many unwanted effect...
Global climate models (GCM) have been used for nearly two decades now as a tool to investigate and a...
Earth system models are fundamental to understanding and projecting climate change. The models have ...
The representation of nonlinear subgrid processes, especially clouds, has been a major source of unc...
Aerosol effects on cloud properties are notoriously difficult to disentangle from variations driven ...