Autodifferentiable Spectrum Model for High-dispersion Characterization of Exoplanets and Brown Dwarfs

ASTROPHYSICAL JOURNAL SUPPLEMENT SERIES(2022)

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摘要
We present an autodifferentiable spectral modeling of exoplanets and brown dwarfs. This model enables a fully Bayesian inference of the high-dispersion data to fit the ab initio line-by-line spectral computation to the observed spectrum by combining it with the Hamiltonian Monte Carlo in recent probabilistic programming languages. An open-source code, ExoJAX (htpps://github.com/HajimeKawahara/exojax), developed in this study, was written in Python using the GPU/TPU compatible package for automatic differentiation and accelerated linear algebra, JAX. We validated the model by comparing it with existing opacity calculators and a radiative transfer code and found reasonable agreements for the output. As a demonstration, we analyzed the high-dispersion spectrum of a nearby brown dwarf, Luhman 16 A, and found that a model including water, carbon monoxide, and H-2/He collision-induced absorption was well fitted to the observed spectrum (R = 10(5) and 2.28-2.30 mu m). As a result, we found that T-0 = 1295(-32)(+35) K at 1 bar and C/O = 0.62 +/- 0.03, which is slightly higher than the solar value. This work demonstrates the potential of a full Bayesian analysis of brown dwarfs and exoplanets as observed by high-dispersion spectrographs and also directly imaged exoplanets as observed by high-dispersion coronagraphy.
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