Intercomparison of Brown Dwarf Model Grids and Atmospheric Retrieval Using Machine Learning
Anna Lueber, Daniel Kitzmann, Chloe E. Fisher, Brendan P. Bowler, Adam, J. Burgasser, Mark Marley, Kevin Heng

TL;DR
This study uses machine learning to compare various brown dwarf atmospheric models, revealing which parameters are reliably inferred and highlighting persistent challenges in modeling clouds.
Contribution
It introduces a machine learning framework to evaluate and interpret multiple brown dwarf model grids, providing insights into their predictive capabilities and limitations.
Findings
Effective temperature can be reliably predicted across models.
Surface gravity inference is highly model-dependent.
Cloud modeling remains a major unresolved challenge.
Abstract
Understanding differences between sub-stellar spectral data and models has proven to be a major challenge, especially for self-consistent model grids that are necessary for a thorough investigation of brown dwarf atmospheres. Using the supervised machine learning method of the random forest, we study the information content of 14 previously published model grids of brown dwarfs (from 1997 to 2021). The random forest method allows us to analyze the predictive power of these model grids, as well as interpret data within the framework of Approximate Bayesian Computation (ABC). Our curated dataset includes 3 benchmark brown dwarfs (Gl 570D, {\epsilon} Indi Ba and Bb) as well as a sample of 19 L and T dwarfs; this sample was previously analyzed in Lueber et al. (2022) using traditional Bayesian methods (nested sampling). We find that the effective temperature of a brown dwarf can be robustly…
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Taxonomy
TopicsSpectroscopy and Chemometric Analyses · Stellar, planetary, and galactic studies
MethodsGravity
