Determining Stellar Elemental Abundances from DESI Spectra with the Data-Driven Payne
Meng Zhang, Maosheng Xiang, Yuan-Sen Ting, Jiahui Wang, Haining Li, Hu, Zou, Jundan Nie, Lanya Mou, Tianmin Wu, Yaqian Wu, Jifeng Liu

TL;DR
This paper introduces DD-PAYNE, a data-driven method for determining stellar elemental abundances from DESI spectra, achieving high precision and revealing Galactic structure details, especially in the outskirts.
Contribution
The paper presents a novel data-driven approach, DD-PAYNE, that accurately derives stellar parameters and elemental abundances from low-resolution spectra, improving analysis of large spectroscopic surveys.
Findings
Achieves ~20 K precision for T_eff at S/N=100
Discerns Galactic populations via abundance spaces
Provides a publicly available stellar catalog
Abstract
Stellar abundances for a large number of stars are key information for the study of Galactic formation history. Large spectroscopic surveys such as DESI and LAMOST take median-to-low resolution () spectra in the full optical wavelength range for millions of stars. However, line blending effect in these spectra causes great challenges for the elemental abundances determination. Here we employ the DD-PAYNE, a data-driven method regularised by differential spectra from stellar physical models, to the DESI EDR spectra for stellar abundance determination. Our implementation delivers 15 labels, including effective temperature , surface gravity , microturbulence velocity , and abundances for 12 individual elements, namely C, N, O, Mg, Al, Si, Ca, Ti, Cr, Mn, Fe, Ni. Given a spectral signal-to-noise ratio of 100 per pixel, internal precision of…
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Taxonomy
TopicsScientific Research and Discoveries · Astronomy and Astrophysical Research · Astronomical Observations and Instrumentation
