Training data from SPCAM for machine learning in moist physics
收藏DataONE2020-08-07 更新2025-06-21 收录
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资源简介:
Current moist physics parameterization schemes in general circulation models (GCMs) are the main source of biases in simulated precipitation and atmospheric circulation. Recent advances in machine learning make it possible to explore data-driven approaches to developing parameterization for moist physics processes such as convection and clouds. This study aims to develop a new moist physics parameterization scheme based on deep learning. We use a residual convolutional neural network (ResNet) for this purpose. It is trained with one-year simulation from a superparameterized GCM, SPCAM. An independent year of SPCAM simulation is used for evaluation. In the design of the neural network, referred to as ResCu, the moist static energy conservation during moist processes is considered. In addition, the past history of the atmospheric states, convection and clouds are also considered. The predicted variables from the neural network are GCM grid-scale heating and drying rates by convection and ...
创建时间:
2025-06-13



