Treatment of overlapping gaseous absorption with the correlated-k method in hot Jupiter and brown dwarf atmosphere models
David S. Amundsen, Pascal Tremblin, James Manners, Isabelle Baraffe, and Nathan J. Mayne

TL;DR
This paper evaluates methods for treating overlapping gaseous absorption in hot Jupiter and brown dwarf atmosphere models using the correlated-k method, finding that random overlap is most accurate for 1D models and equivalent extinction offers a good speed-accuracy balance for 3D models.
Contribution
It compares three existing methods for handling overlapping absorption in correlated-k models and recommends optimal approaches for different atmospheric modeling contexts.
Findings
Random overlap is the most accurate and flexible method.
Equivalent extinction speeds up calculations with minor accuracy loss.
Pre-mixed opacities are less flexible and require careful application.
Abstract
The correlated-k method is frequently used to speed up radiation calculations in both one-dimensional and three-dimensional atmosphere models. An inherent difficulty with this method is how to treat overlapping absorption, i.e. absorption by more than one gas in a given spectral region. We have evaluated the applicability of three different methods in hot Jupiter and brown dwarf atmosphere models, all of which have been previously applied within models in the literature: (i) Random overlap, both with and without resorting and rebinning, (ii) equivalent extinction and (iii) pre-mixing of opacities, where (i) and (ii) combine k-coefficients for different gases to obtain k-coefficients for a mixture of gases, while (iii) calculates k-coefficients for a given mixture from the corresponding mixed line-by-line opacities. We find that the random overlap method is the most accurate and flexible…
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