AO-PHLGDec 21, 2021

Deep Learning Based Cloud Cover Parameterization for ICON

arXiv:2112.11317v345 citations
Originality Incremental advance
AI Analysis

This work addresses the challenge of enhancing climate projections for climate scientists by providing more accurate and interpretable cloud parameterizations, though it is incremental as it builds on existing deep learning approaches within a specific modeling framework.

The researchers tackled the problem of improving cloud cover parameterizations in climate models by developing deep learning-based methods using data from storm-resolving simulations in the ICON framework, achieving accurate estimates of sub-grid scale cloud cover with global models reproducing regional data and identifying overemphasis on specific humidity and cloud ice as a generalization issue.

A promising approach to improve cloud parameterizations within climate models and thus climate projections is to use deep learning in combination with training data from storm-resolving model (SRM) simulations. The ICOsahedral Non-hydrostatic (ICON) modeling framework permits simulations ranging from numerical weather prediction to climate projections, making it an ideal target to develop neural network (NN) based parameterizations for sub-grid scale processes. Within the ICON framework, we train NN based cloud cover parameterizations with coarse-grained data based on realistic regional and global ICON SRM simulations. We set up three different types of NNs that differ in the degree of vertical locality they assume for diagnosing cloud cover from coarse-grained atmospheric state variables. The NNs accurately estimate sub-grid scale cloud cover from coarse-grained data that has similar geographical characteristics as their training data. Additionally, globally trained NNs can reproduce sub-grid scale cloud cover of the regional SRM simulation. Using the game-theory based interpretability library SHapley Additive exPlanations, we identify an overemphasis on specific humidity and cloud ice as the reason why our column-based NN cannot perfectly generalize from the global to the regional coarse-grained SRM data. The interpretability tool also helps visualize similarities and differences in feature importance between regionally and globally trained column-based NNs, and reveals a local relationship between their cloud cover predictions and the thermodynamic environment. Our results show the potential of deep learning to derive accurate yet interpretable cloud cover parameterizations from global SRMs, and suggest that neighborhood-based models may be a good compromise between accuracy and generalizability.

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