The stellar parameters and elemental abundances from low-resolution spectra I: 1.2 million giants from LAMOST DR8
Zhuohan Li, Gang Zhao, Yuqin Chen, Xilong Liang, Jingkun Zhao

TL;DR
This study develops a deep learning method to estimate stellar parameters and elemental abundances from low-resolution spectra of over 1.2 million giants in LAMOST DR8, achieving high accuracy and consistency with high-resolution surveys.
Contribution
We introduce a deep convolutional neural network trained on APOGEE-LAMOST data to accurately derive stellar parameters and elemental abundances from low-resolution spectra, enabling large-scale stellar analysis.
Findings
Achieved mean absolute errors of 29 K in temperature and 0.07 dex in log g.
Produced results consistent with APOGEE labels and GALAH measurements.
Applied the model to over 1.2 million giants, creating a valuable stellar catalog.
Abstract
As a typical data-driven method, deep learning becomes a natural choice for analysing astronomical data nowadays. In this study, we built a deep convolutional neural network to estimate basic stellar parameters , log g, metallicity ([M/H] and [Fe/H]) and [/M] along with nine individual elemental abundances ([C/Fe], [N/Fe], [O/Fe], [Mg/Fe], [Al/Fe], [Si/Fe], [Ca/Fe], [Mn/Fe], [Ni/Fe]). The neural network is trained using common stars between the APOGEE survey and the LAMOST survey. We used low-resolution spectra from LAMOST survey as input, and measurements from APOGEE as labels. For stellar spectra with the signal-to-noise ratio in g band larger than 10 in the test set, the mean absolute error (MAE) is 29 K for , 0.07 dex for log g, 0.03 dex for both [Fe/H] and [M/H], and 0.02 dex for [/M]. The MAE of most elements is between 0.02 dex and 0.04…
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Taxonomy
TopicsStellar, planetary, and galactic studies · Astronomy and Astrophysical Research
