Estimating the Atmospheric Parameters of Early-type Stars from the Chinese Space Station Telescope (CSST) Slitless Spectra Survey
JiaRui Rao, HaiLiang Chen, JianPing Xiong, LuQian Wang, YanJun Guo,, JiaJia Li, Chao Liu, ZhanWen Han, XueFei Chen

TL;DR
This study demonstrates that machine learning can accurately estimate atmospheric parameters of early-type stars from simulated and real spectra expected from the upcoming CSST survey, enabling efficient analysis of large stellar datasets.
Contribution
The paper introduces a machine learning approach for estimating stellar parameters from CSST slitless spectra, validated with synthetic and observed data, highlighting its accuracy and robustness.
Findings
Average Teff deviation less than 5% with NGSL data
Teff and log g estimations are robust against spectral shifts
Machine learning achieves high accuracy in parameter estimation for early-type stars
Abstract
The measurement of atmospheric parameters is fundamental for scientific research using stellar spectra. The Chinese Space Station Telescope (CSST), scheduled to be launched in 2024, will provide researchers with hundreds of millions of slitless spectra for stars during a 10 yr survey. And machine learning has unparalleled efficiency in processing large amounts of data compared to manual processing. Here we studied the stellar parameters of early-type stars (effective temperature Teff more than 15,000 K) based on the design indicators of the CSST slitless spectrum and the machine learning algorithm, Stellar LAbel Machine. We used the Potsdam Wolf-Rayet (POWR) synthetic spectra library for cross validation. Then we tested the reliability of machine learning results by using the Next Generation Spectrum Library (NGSL) from Hubble Space Telescope observation data. We use the spectra with…
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