Stable Machine‐Learning Parameterization of Subgrid Processes in a Comprehensive Atmospheric Model Learned From Embedded Convection‐Permitting Simulations
Abstract Modern climate projections often suffer from inadequate spatial and temporal resolution due to computational limitations, resulting in inaccurate representations of sub‐grid processes. A promising technique to address this is the multiscale modeling framework (MMF), which embeds a kilometer...
Saved in:
Main Authors: | Zeyuan Hu, Akshay Subramaniam, Zhiming Kuang, Jerry Lin, Sungduk Yu, Walter M. Hannah, Noah D. Brenowitz, Josh Romero, Michael S. Pritchard |
---|---|
Format: | Article |
Language: | English |
Published: |
American Geophysical Union (AGU)
2025-07-01
|
Series: | Journal of Advances in Modeling Earth Systems |
Subjects: | |
Online Access: | https://doi.org/10.1029/2024MS004618 |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
Similar Items
-
Vertically Recurrent Neural Networks for Sub‐Grid Parameterization
by: P. Ukkonen, et al.
Published: (2025-06-01) -
Stable Simulation of the Community Atmosphere Model Using Machine‐Learning Physical Parameterization Trained With Experience Replay
by: Jianda Chen, et al.
Published: (2025-06-01) -
Energetically Consistent Eddy‐Diffusivity Mass‐Flux Convective Schemes: 2. Implementation and Evaluation in an Oceanic Context
by: M. Perrot, et al.
Published: (2025-07-01) -
Snow albedo and its parameterization for natural systems and climate modeling
by: D. V. Turkov, et al.
Published: (2024-12-01) -
Coupling Soil Gravel Parameterization Into WRF: A Case Study of the Tibetan Plateau Vortex
by: Yue Xu, et al.
Published: (2025-07-01)