A deep learning approach to fast radiative transfer

Patrick G. Stegmann, Benjamin Johnson, Isaac Moradi, Bryan Karpowicz, Will McCarty

Research output: Contribution to journalArticlepeer-review

30 Scopus citations

Abstract

Due to the sheer volume of data, leveraging satellite instrument observations effectively in a data assimilation context for numerical weather prediction or for remote sensing requires a radiative transfer model as an observation operator that is both fast and accurate at the same time. Physics-based line-by-line radiative transfer (RT) models fulfil the requirement for accuracy, but are too slow and too costly in computational terms for operational applications. Therefore, fast methods were developed to be able to perform fast RT calculations using techniques such as spectral sampling or pre-computed look-up tables. The operational fast models currently calculate the absorption and scattering coefficients from the pre-computed regression coefficients and atmospheric state and cloud profiles. As a novel solution to this problem, this work investigates a deep learning approach to replace the regression coefficients in the fast RT models. A selection of hidden-layer neural network configurations is trained against atmospheric transmittance profile data computed by an accurate line-by-line model and their performance is evaluated and their advantages and disadvantages are discussed.

Original languageEnglish
Article number108088
JournalJournal of Quantitative Spectroscopy and Radiative Transfer
Volume280
DOIs
StatePublished - Apr 2022
Externally publishedYes

Keywords

  • Deep learning
  • Infrared radiation
  • Machine learning
  • Radiative transfer
  • Transmittance

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