cecilia: a machine learning-based pipeline for measuring metal abundances of helium-rich polluted white dwarfs

Author:

Badenas-Agusti Mariona12ORCID,Viaña Javier2ORCID,Vanderburg Andrew2ORCID,Blouin Simon3ORCID,Dufour Patrick4ORCID,Xu SiyiORCID,Sha Lizhou5ORCID

Affiliation:

1. Department of Earth, Atmospheric and Planetary Sciences, Massachusetts Institute of Technology , Cambridge, MA 02139 , USA

2. Department of Physics and Kavli Institute for Astrophysics and Space Research, Massachusetts Institute of Technology , Cambridge, MA 02139 , USA

3. Department of Physics and Astronomy, University of Victoria , Victoria, BC V8W 2Y2 , Canada

4. Département de Physique, Université de Montréal , Montréal, Québec H3C 3J7 , Canada

5. Department of Astronomy, University of Wisconsin-Madison , 475 N Charter St, Madison, WI 53706 , USA

Abstract

ABSTRACT Over the past several decades, conventional spectral analysis techniques of polluted white dwarfs have become powerful tools to learn about the geology and chemistry of extrasolar bodies. Despite their proven capabilities and extensive legacy of scientific discoveries, these techniques are, however, still limited by their manual, time-intensive, and iterative nature. As a result, they are susceptible to human errors and are difficult to scale up to population-wide studies of metal pollution. This paper seeks to address this problem by presenting cecilia, the first machine learning (ML)-powered spectral modelling code designed to measure the metal abundances of intermediate-temperature (10 000 ≤ Teff ≤ 20 000 K), Helium-rich polluted white dwarfs. Trained with more than 22 000 randomly drawn atmosphere models and stellar parameters, our pipeline aims to overcome the limitations of classical methods by replacing the generation of synthetic spectra from computationally expensive codes and uniformly spaced model grids, with a fast, automated, and efficient neural-network-based interpolator. More specifically, cecilia combines state-of-the-art atmosphere models, powerful artificial intelligence tools, and robust statistical techniques to rapidly generate synthetic spectra of polluted white dwarfs in high-dimensional space, and enable accurate (≲0.1 dex) and simultaneous measurements of 14 stellar parameters – including 11 elemental abundances – from real spectroscopic observations. As massively multiplexed astronomical surveys begin scientific operations, cecilia’s performance has the potential to unlock large-scale studies of extrasolar geochemistry and propel the field of white dwarf science into the era of Big Data. In doing so, we aspire to uncover new statistical insights that were previously impractical with traditional white dwarf characterization techniques.

Funder

NASA

Alfred P. Sloan Foundation

Publisher

Oxford University Press (OUP)

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