Spectral binning of precomputed correlated-k coefficients
J\'er\'emy Leconte

TL;DR
This paper introduces a spectral binning method for precomputed correlated-k coefficients, enabling flexible, accurate, and cost-effective radiative transfer calculations at various resolutions without additional assumptions.
Contribution
It demonstrates that precomputed k-coefficients can be binned to lower spectral resolutions without significant accuracy loss, facilitating easier distribution and application.
Findings
Binning of k-coefficients preserves accuracy.
Compared favorably with sampled cross section approach.
Enables flexible, mid-resolution radiative transfer data delivery.
Abstract
With the major increase in the volume of the spectroscopic line lists needed to perform accurate radiative transfer calculations, disseminating accurate radiative data has become almost as much a challenge as computing it. Considering that many planetary science applications are only looking for heating rates or mid-to-low resolution spectra, any approach enabling such computations in an accurate and flexible way at a fraction of the computing and storage costs is highly valuable. For many of these reasons, the correlated-k approach has become very popular. Its major weakness has been the lack of ways to adapt the spectral grid/resolution of precomputed k-coefficients, making it difficult to distribute a generic database suited for many different applications. Currently, most users still need to have access to a line-by-line transfer code with the relevant line lists or high-resolution…
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