Abundance Estimates for 16 Elements in 6 Million Stars from LAMOST DR5 Low-Resolution Spectra
Maosheng Xiang, Yuan-Sen Ting, Hans-Walter Rix, Nathan Sandford, Sven, Buder, Karin Lind, Xiao-Wei Liu, Jian-Rong Shi, Hua-Wei Zhang

TL;DR
This paper introduces a new data-driven spectral modeling approach, the DD-Payne, to derive stellar parameters and abundances for 16 elements in 6 million stars from LAMOST DR5 low-resolution spectra, achieving high precision and systematic error control.
Contribution
The paper presents the DD-Payne, a novel hybrid modeling method that combines data-driven and theoretical constraints to accurately estimate stellar parameters and elemental abundances from low-resolution spectra.
Findings
Achieved typical abundance precision of 0.03-0.1 dex for most elements at S/N ≥ 50.
Provided a publicly accessible catalog of stellar parameters and abundances for 6 million stars.
Controlled systematic errors inherited from high-resolution training data.
Abstract
We present the determination of stellar parameters and individual elemental abundances for 6 million stars from 8 million low-resolution () spectra from LAMOST DR5. This is based on a modeling approach that we dub -- (--), which inherits essential ingredients from both {\it The Payne} \citep{Ting2019} and \citep{Ness2015}. It is a data-driven model that incorporates constraints from theoretical spectral models to ensure the derived abundance estimates are physically sensible. Stars in LAMOST DR5 that are in common with either GALAH DR2 or APOGEE DR14 are used to train a model that delivers stellar parameters (, , ) and abundances for 16 elements (C, N, O, Na, Mg, Al, Si, Ca, Ti, Cr, Mn, Fe, Co, Ni, Cu, and Ba) when applied to LAMOST spectra. Cross-validation and repeat observations…
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