Assessing the performance of LTE and NLTE synthetic stellar spectra in a machine learning framework
Spencer Bialek, S\'ebastien Fabbro, Kim A. Venn, Nripesh Kumar,, Teaghan O'Briain, Kwang Moo Yi

TL;DR
This study evaluates the accuracy of CNN-based stellar parameter predictions using synthetic spectra from different models, demonstrating high performance especially with the MPIA/1DNLTE grid across diverse stellar types.
Contribution
The paper introduces a CNN framework that effectively compares and adapts to various synthetic spectral grids for stellar parameter estimation.
Findings
CNN achieves high accuracy with MPIA/1DNLTE grid
Acceptable results with 1DLTE grids
Framework is adaptable to multiple spectral models
Abstract
In the current era of stellar spectroscopic surveys, synthetic spectral libraries are the basis for the derivation of stellar parameters and chemical abundances. In this paper, we compare the stellar parameters determined using five popular synthetic spectral grids (INTRIGOSS, FERRE, AMBRE, PHOENIX, and MPIA/1DNLTE) with our convolutional neural network (CNN, ). The stellar parameters are determined for six physical properties (effective temperature, surface gravity, metallicity, [/Fe], radial velocity, and rotational velocity) given the spectral resolution, signal-to-noise, and wavelength range of optical FLAMES-UVES spectra from the Gaia-ESO Survey. Both CNN modelling and epistemic uncertainties are incorporated through training an ensemble of networks. training was also adapted to mitigate differences between the synthetic grids and…
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