2023
DOI: 10.1002/asl.1150
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A deep learning framework for analyzing cloud characteristics of aggregated convection using cloud‐resolving model simulations

Abstract: This study introduces a framework to extract the high-dimensional nonlinear relationships among state variables for aggregated convection. The prototype of such a framework is developed that applies the convolutional neural network models (CNN models) to retrieve the cloud characteristics from cloudresolving model (CRM) simulations. CNN model prediction factors are hidden in the high dimensional weighted parameters in each neural network layer.Therefore, we can dig out relevant physics processes by iterating t… Show more

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Cited by 2 publications
(2 citation statements)
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“…It is inspired by the framework proposed by Chen et al. (2023), in which multiple CNN models are iterated to extract intricate crucial features of convection aggregation in cloud‐resolving simulations. We can also explore VAE variants like Goto and Inoue (2021), which incorporate categorical information for enhanced output generation of specific categories.…”
Section: Application and Discussionmentioning
confidence: 99%
See 1 more Smart Citation
“…It is inspired by the framework proposed by Chen et al. (2023), in which multiple CNN models are iterated to extract intricate crucial features of convection aggregation in cloud‐resolving simulations. We can also explore VAE variants like Goto and Inoue (2021), which incorporate categorical information for enhanced output generation of specific categories.…”
Section: Application and Discussionmentioning
confidence: 99%
“…This approach iterates VAE model training to extract explainable features and remove features explained by physical understandings to uncover subtle controlling factors of the local circulation. It is inspired by the framework proposed by Chen et al (2023), in which multiple CNN models are iterated to extract intricate crucial features of convection aggregation in cloudresolving simulations. We can also explore VAE variants like Goto and Inoue (2021), which incorporate categorical information for enhanced output generation of specific categories.…”
Section: Application and Discussionmentioning
confidence: 99%