Accurate Atmospheric Parameters at Moderate Resolution Using Spectral Indices: Preliminary Application to the MARVELS Survey
Luan Ghezzi, Let\'icia Dutra-Ferreira, Diego Lorenzo-Oliveira, Gustavo, F. Porto de Mello, Bas\'ilio X. Santiago, Nathan De Lee, Brian L. Lee, Luiz, N. da Costa, Marcio A. G. Maia, Ricardo L. C. Ogando, John P. Wisniewski,, Jonay I. Gonz\'alez Hern\'andez, Keivan G. Stassun

TL;DR
This paper introduces a spectral index-based method to accurately determine atmospheric parameters of solar-type stars from moderate-resolution spectra, enabling efficient stellar characterization in large surveys.
Contribution
It develops an automated approach using spectral indices calibrated with high-resolution data to derive stellar parameters from moderate-resolution spectra, validated with MARVELS and other samples.
Findings
Achieved parameter recovery within 80 K for Teff, 0.05 dex for [Fe/H], 0.15 dex for log g.
Validated method with MARVELS targets and ELODIE library, showing competitive accuracy.
Demonstrated spectral indices as effective tools for stellar characterization at moderate resolution.
Abstract
Studies of Galactic chemical and dynamical evolution in the solar neighborhood depend on the availability of precise atmospheric parameters (Teff, [Fe/H] and log g) for solar-type stars. Many large-scale spectroscopic surveys operate at low to moderate spectral resolution for efficiency in observing large samples, which makes the stellar characterization difficult due to the high degree of blending of spectral features. While most surveys use spectral synthesis, in this work we employ an alternative method based on spectral indices to determine the atmospheric parameters of a sample of nearby FGK dwarfs and subgiants observed by the MARVELS survey at moderate resolving power (R~12,000). We have developed three codes to automatically normalize the observed spectra, measure the equivalent widths of the indices and, through the comparison of those with values calculated with pre-determined…
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