Estimating stellar atmospheric parameters and elemental abundances using fully connected residual network
Shuo Li, Yin-Bi Li, A-Li Luo, Jun-Chao Liang, Hai-Ling Lu, and Hugh R. A. Jones

TL;DR
This paper introduces FCResNet, a fully connected residual network that accurately estimates stellar parameters and elemental abundances from ultra-low-resolution spectra, outperforming traditional methods and suitable for large-scale astronomical data analysis.
Contribution
The study develops and demonstrates a novel FCResNet model specifically designed for ultra-low-resolution spectra, achieving higher accuracy and efficiency than existing machine learning techniques.
Findings
FCResNet achieves high prediction precision for stellar parameters.
It processes one million spectra in only 42 seconds.
Outperforms traditional machine learning and CNN methods.
Abstract
Stellar atmospheric parameters and elemental abundances are traditionally determined using template matching techniques based on high-resolution spectra. However, these methods are sensitive to noise and unsuitable for ultra-low-resolution data. Given that the Chinese Space Station Telescope (CSST) will acquire large volumes of ultra-low-resolution spectra, developing effective methods for ultra-low-resolution spectral analysis is crucial. In this work, we investigated the Fully Connected Residual Network (FCResNet) for simultaneously estimating atmospheric parameters (, , [Fe/H]) and elemental abundances ([C/Fe], [N/Fe], [Mg/Fe]). We trained and evaluated FCResNet using CSST-like spectra (\textit{R} 200) generated by degrading LAMOST spectra (\textit{R} 1,800), with reference labels from APOGEE. FCResNet significantly outperforms traditional machine…
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Taxonomy
TopicsStellar, planetary, and galactic studies · Astronomy and Astrophysical Research · Adaptive optics and wavefront sensing
