A hybrid SLAM-Payne framework for atmospheric parameter and abundance determination of early-type Stars from LAMOST DR9 low-resolution Spectra
Weijia Sun

TL;DR
This paper introduces a hybrid neural network framework combining data-driven and synthetic spectral methods to accurately determine atmospheric parameters and chemical abundances of early-type stars from low-resolution spectra, enabling large-scale stellar population analysis.
Contribution
The study develops a novel hybrid SLAM-Payne framework that effectively analyzes low-resolution spectra of hot stars, overcoming previous methodological limitations and providing comprehensive stellar parameters and abundances.
Findings
Derived parameters and abundances for over 300,000 stars.
Identified temperature-dependent alpha-element trends.
Measured negative radial abundance gradients consistent with Cepheid data.
Abstract
Early-type stars are key drivers of Galactic chemical evolution, enriching the interstellar medium with alpha elements through powerful stellar winds and core-collapse supernovae, fueled by their short lifetimes and high masses. However, their spectra remain challenging to analyse due to rapid rotation, weak metal lines, and non-LTE effects. While large spectroscopic surveys provide extensive low-resolution data, extracting reliable parameters remains difficult due to methodological limitations for hot stars. Our goal is to develop a unified framework combining data-driven and synthetic spectral approaches to determine atmospheric parameters and abundances for hot stars using low-resolution spectra, addressing limitations in current methodologies while retaining critical spectral information. We present a hybrid approach integrating the Stellar LAbel Machine (SLAM) and the Payne…
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