Automatic stellar spectra parameterisation in the IR CaII triplet region
G. Kordopatis, A. Recio-Blanco, P. de Laverny, A. Bijaoui, V. Hill, G., Gilmore, R. F. G. Wyse, C. Ordenovic

TL;DR
This paper evaluates two algorithms, MATISSE and DEGAS, for automated stellar parameter estimation from IR CaII triplet spectra, proposing a hybrid approach to improve accuracy across different SNR levels for galactic archaeology.
Contribution
It introduces a hybrid method combining MATISSE and DEGAS for robust stellar parameterisation in the IR CaII triplet region, addressing degeneracies and varying SNR conditions.
Findings
MATISSE is preferred for high SNR spectra.
DEGAS performs better on noisier spectra.
Hybrid approach achieves accurate parameters at SNR~20-50.
Abstract
(Abridged) Galactic archaeology aims to determine the evolution of the Galaxy from the chemical and kinematical properties of its stars. The analysis of current large spectroscopic surveys (thousands of stars) and future ones (millions of stars) require automated analysis techniques to obtain robust estimates of the stellar parameters. Several on-going and planned spectroscopic surveys have selected their wavelength region to contain the IR CaII triplet and this paper focuses on the automatic analysis of such spectra. We investigated two algorithms, MATISSE and DEGAS, both of which compare the observed spectrum to a grid of synthetic spectra, but each uses a different mathematical approach for finding the optimum match and hence the best stellar parameters. We identified degeneracies in different regions of the HR diagram: hot dwarfs and giants share the same spectral signatures.…
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