Diagnosing storm mode with deep learning in convection-allowing models

While convective storm mode is explicitly depicted in convection-allowing model (CAM) output, subjectively diagnosing mode in large volumes of CAM forecasts can be burdensome. In this work, four machine learning (ML) models were trained to probabilistically classify CAM storms into one of three modes: supercells, quasi-linear convective systems, and disorganized convection. The four ML models included a dense neural network (DNN), logistic regression CNN, and LR were trained with a set of hand-labeled CAM storms, while the semisupervised GMM used updraft helicity and storm size to generate clusters, which were then hand labeled. When evaluated using storms withheld from training, the four classifiers had similar ability to discriminate between modes, but the GMM had worse calibration. The DNN and LR had similar objective performance to the CNN, suggesting that CNN-based methods may not be needed for mode classification tasks. The mode classifications from all four classifiers successfully approximated the known climatology of modes in the United States, including a maximum in supercell occurrence in the U.S. Central Plains. Further, the modes also occurred in environments recognized to support the three different storm morphologies. Finally, storm mode provided useful information about hazard type, e.g., storm reports were most likely with supercells, further supporting the efficacy of the classifiers. Future applications, including the use of objective CAM mode classifications as a novel predictor in ML systems, could potentially lead to improved forecasts of convective hazards.

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Copyright 2023 American Meteorological Society (AMS).


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Author Sobash, Ryan A.
Gagne, David John
Becker, Charles
Ahijevych, David
Gantos, Gabrielle
Schwartz, Craig S.
Publisher UCAR/NCAR - Library
Publication Date 2023-08-01T00:00:00
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Topic Category geoscientificInformation
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Metadata Date 2025-07-11T15:15:53.099332
Metadata Record Identifier edu.ucar.opensky::articles:26559
Metadata Language eng; USA
Suggested Citation Sobash, Ryan A., Gagne, David John, Becker, Charles, Ahijevych, David, Gantos, Gabrielle, Schwartz, Craig S.. (2023). Diagnosing storm mode with deep learning in convection-allowing models. UCAR/NCAR - Library. https://n2t.org/ark:/85065/d7r49vsd. Accessed 07 August 2025.

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