Estimating stellar atmospheric parameters and elemental abundances using fully connected residual network

Estimating stellar atmospheric parameters and elemental abundances using fully connected residual network
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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 ($T_\text{eff}$, $\log g$, [Fe/H]) and elemental abundances ([C/Fe], [N/Fe], [Mg/Fe]). We trained and evaluated FCResNet using CSST-like spectra (\textit{R} $\sim$ 200) generated by degrading LAMOST spectra (\textit{R} $\sim$ 1,800), with reference labels from APOGEE. FCResNet significantly outperforms traditional machine learning methods (KNN, XGBoost, SVR) and CNN in prediction precision. For spectra with g-band signal-to-noise ratio greater than 20, FCResNet achieves precisions of 78 K, 0.15 dex, 0.08 dex, 0.05 dex, 0.10 dex, and 0.05 dex for $T_\text{eff}$, $\log g$, [Fe/H], [C/Fe], [N/Fe] and [Mg/Fe], respectively, on the test set. FCResNet processes one million spectra in only 42 seconds while maintaining a simple architecture with just 348 KB model size. These results suggest that FCResNet is a practical and promising tool for processing the large volume of ultra-low-resolution spectra that will be obtained by CSST in the future.


💡 Research Summary

This paper presents a novel deep learning approach to address the challenge of analyzing the vast quantities of ultra-low-resolution (R ~ 200) stellar spectra expected from the upcoming Chinese Space Station Telescope (CSST). Traditional methods like template matching are sensitive to noise and ineffective at such low resolutions. The authors propose a new model architecture named the Fully Connected Residual Network (FCResNet), designed to simultaneously estimate fundamental stellar atmospheric parameters—effective temperature (T_eff), surface gravity (log g), and metallicity (


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