Retrieval Analysis of the Emission Spectrum of WASP-12b: Sensitivity of Outcomes to Prior Assumptions and Implications for Formation History
Maria Oreshenko, Baptiste Lavie, Simon L. Grimm, Shang-Min Tsai, Matej, Malik, Brice-Olivier Demory, Christoph Mordasini, Yann Alibert, Willy Benz,, Sascha P. Quanz, Roberto Trotta, Kevin Heng

TL;DR
This study analyzes the emission spectrum of WASP-12b, highlighting how prior assumptions influence retrieval outcomes and implications for its formation history, with insights into atmospheric composition and formation scenarios.
Contribution
It introduces a retrieval approach that incorporates formation theory-based priors, demonstrating how assumptions affect atmospheric composition estimates and formation interpretations.
Findings
Prior-dominated retrieval outcomes with uniform priors.
Chemical equilibrium assumptions align with plausible atmospheric compositions.
Formation scenarios favoring gravitational instability or pebble accretion are supported.
Abstract
We analyze the emission spectrum of the hot Jupiter WASP-12b using our HELIOS-R retrieval code and HELIOS-K opacity calculator. When interpreting Hubble and Spitzer data, the retrieval outcomes are found to be prior-dominated. When the prior distributions of the molecular abundances are assumed to be log-uniform, the volume mixing ratio of HCN is found to be implausibly high. A VULCAN chemical kinetics model of WASP-12b suggests that chemical equilibrium is a reasonable assumption even when atmospheric mixing is implausibly rigorous. Guided by (exo)planet formation theory, we set Gaussian priors on the elemental abundances of carbon, oxygen and nitrogen with the Gaussian peaks being centered on the measured C/H, O/H and N/H values of the star. By enforcing chemical equilibrium, we find substellar O/H and stellar to slightly superstellar C/H for the dayside atmosphere of WASP-12b. The…
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