Analysing the SEDs of protoplanetary disks with machine learning
T. Kaeufer, P. Woitke, M. Min, I. Kamp, C. Pinte

TL;DR
This paper uses neural networks to emulate radiative transfer models, enabling fast Bayesian analysis of protoplanetary disk properties from spectral energy distributions, revealing new insights into disk structures and degeneracies.
Contribution
The study introduces neural networks to efficiently emulate SED models, allowing comprehensive Bayesian analysis of disk properties with uncertainty quantification and degeneracy detection.
Findings
Neural networks predict SEDs within 1ms with 5% accuracy.
26 out of 30 disks are better described by two-zone models.
Updated distances and free parameters yield significantly different disk properties.
Abstract
ABRIDGED. The analysis of spectral energy distributions (SEDs) of protoplanetary disks to determine their physical properties is known to be highly degenerate. Hence, a Bayesian analysis is required to obtain parameter uncertainties and degeneracies. The challenge here is computational speed, as one radiative transfer model requires a couple of minutes to compute. We performed a Bayesian analysis for 30 well-known protoplanetary disks to determine their physical disk properties, including uncertainties and degeneracies. To circumvent the computational cost problem, we created neural networks (NNs) to emulate the SED generation process. We created two sets of radiative transfer disk models to train and test two NNs that predict SEDs for continuous and discontinuous disks. A Bayesian analysis was then performed on 30 protoplanetary disks with SED data collected by the DIANA project to…
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Taxonomy
TopicsAstro and Planetary Science · Molecular Spectroscopy and Structure · Astrophysics and Star Formation Studies
MethodsTest
