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Autori principali: Kao, Malia L., Hawkins, Keith, Rogers, Laura K., Bonsor, Amy, Dunlap, Bart H., Sanders, Jason L., Montgomery, M. H., Winget, D. E.
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2405.17667
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author Kao, Malia L.
Hawkins, Keith
Rogers, Laura K.
Bonsor, Amy
Dunlap, Bart H.
Sanders, Jason L.
Montgomery, M. H.
Winget, D. E.
author_facet Kao, Malia L.
Hawkins, Keith
Rogers, Laura K.
Bonsor, Amy
Dunlap, Bart H.
Sanders, Jason L.
Montgomery, M. H.
Winget, D. E.
contents White dwarfs (WDs) polluted by exoplanetary material provide the unprecedented opportunity to directly observe the interiors of exoplanets. However, spectroscopic surveys are often limited by brightness constraints, and WDs tend to be very faint, making detections of large populations of polluted WDs difficult. In this paper, we aim to increase considerably the number of WDs with multiple metals in their atmospheres. Using 96,134 WDs with Gaia DR3 BP/RP (XP) spectra, we constructed a 2D map using an unsupervised machine learning technique called Uniform Manifold Approximation and Projection (UMAP) to organize the WDs into identifiable spectral regions. The polluted WDs are among the distinct spectral groups identified in our map. We have shown that this selection method could potentially increase the number of known WDs with 5 or more metal species in their atmospheres by an order of magnitude. Such systems are essential for characterizing exoplanet diversity and geology.
format Preprint
id arxiv_https___arxiv_org_abs_2405_17667
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Hunting for Polluted White Dwarfs and Other Treasures with Gaia XP Spectra and Unsupervised Machine Learning
Kao, Malia L.
Hawkins, Keith
Rogers, Laura K.
Bonsor, Amy
Dunlap, Bart H.
Sanders, Jason L.
Montgomery, M. H.
Winget, D. E.
Solar and Stellar Astrophysics
Earth and Planetary Astrophysics
Machine Learning
White dwarfs (WDs) polluted by exoplanetary material provide the unprecedented opportunity to directly observe the interiors of exoplanets. However, spectroscopic surveys are often limited by brightness constraints, and WDs tend to be very faint, making detections of large populations of polluted WDs difficult. In this paper, we aim to increase considerably the number of WDs with multiple metals in their atmospheres. Using 96,134 WDs with Gaia DR3 BP/RP (XP) spectra, we constructed a 2D map using an unsupervised machine learning technique called Uniform Manifold Approximation and Projection (UMAP) to organize the WDs into identifiable spectral regions. The polluted WDs are among the distinct spectral groups identified in our map. We have shown that this selection method could potentially increase the number of known WDs with 5 or more metal species in their atmospheres by an order of magnitude. Such systems are essential for characterizing exoplanet diversity and geology.
title Hunting for Polluted White Dwarfs and Other Treasures with Gaia XP Spectra and Unsupervised Machine Learning
topic Solar and Stellar Astrophysics
Earth and Planetary Astrophysics
Machine Learning
url https://arxiv.org/abs/2405.17667