EPIMLGJan 8, 2024

FlopPITy: Enabling self-consistent exoplanet atmospheric retrievals with machine learning

arXiv:2401.04168v14 citationsh-index: 11Astronomy & Astrophysics
Originality Incremental advance
AI Analysis

This enables faster and more complex atmospheric modeling for exoplanet researchers, though it is an incremental improvement by applying an existing ML method to a specific domain bottleneck.

The paper tackles the slow speed of Bayesian retrieval techniques for exoplanet atmospheres by implementing sequential neural posterior estimation (SNPE), a machine learning inference algorithm, which provides faithful posteriors and speeds up retrievals by 2x to over 10x, enabling self-consistent retrievals with only 50,000 forward model evaluations.

Interpreting the observations of exoplanet atmospheres to constrain physical and chemical properties is typically done using Bayesian retrieval techniques. Because these methods require many model computations, a compromise is made between model complexity and run time. Reaching this compromise leads to the simplification of many physical and chemical processes (e.g. parameterised temperature structure). Here we implement and test sequential neural posterior estimation (SNPE), a machine learning inference algorithm, for exoplanet atmospheric retrievals. The goal is to speed up retrievals so they can be run with more computationally expensive atmospheric models, such as those computing the temperature structure using radiative transfer. We generate 100 synthetic observations using ARCiS (ARtful Modeling Code for exoplanet Science, an atmospheric modelling code with the flexibility to compute models in varying degrees of complexity) and perform retrievals on them to test the faithfulness of the SNPE posteriors. The faithfulness quantifies whether the posteriors contain the ground truth as often as we expect. We also generate a synthetic observation of a cool brown dwarf using the self-consistent capabilities of ARCiS and run a retrieval with self-consistent models to showcase the possibilities that SNPE opens. We find that SNPE provides faithful posteriors and is therefore a reliable tool for exoplanet atmospheric retrievals. We are able to run a self-consistent retrieval of a synthetic brown dwarf spectrum using only 50,000 forward model evaluations. We find that SNPE can speed up retrievals between $\sim2\times$ and $\geq10\times$ depending on the computational load of the forward model, the dimensionality of the observation, and the signal-to-noise ratio of the observation. We make the code publicly available for the community on Github.

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