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Published October 3, 2021 | Version v1
Journal article Open

Training and evaluation data for machine learning models emulating the RTE+RRTMGP radiation scheme or its components

Authors/Creators

  • 1. Danish Meteorological Institute

Description

Data associated with an upcoming paper on the use of neural networks (NN) to emulate a radiation parameterization.

  • CAMS_* = pre-processed NetCDF files consisting of CAMS reanalysis profiles that can be used as input to the RTE+RRTGMP code to generate NN training data (the other files in the repository). The Fortran program and instructions for doing this can be found at https://github.com/peterukk/rte-rrtmgp-nn/tree/nn_dev/examples/emulator-training

The other files are ready-to-be-used input-output data for training machine learning models using the Python scripts found at https://github.com/peterukk/rte-rrtmgp-nn/tree/nn_dev/examples/emulator-training/scripts:

  • RADSCHEME_* = data to train NN emulators for the whole RTE+RRTMGP radiation scheme in the shortwave
  • REFTRANS_* = data to train NN emulators for the shortwave reflectance-transmittance computations in RTE
  • RRTMGP_* = data to train NN emulators for RRTMGP shortwave gas optics

 

Files

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md5:dc50b86b0edba8f5635c50d56f472d37
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Additional details

Funding

European Commission
ESCAPE-2 - Energy-efficient SCalable Algorithms for weather and climate Prediction at Exascale 800897