A novel framework for semi-Bayesian radial velocities through template matching
A. M. Silva, J. P. Faria, N. C. Santos, S. G. Sousa, P. T. P. Viana,, J. H. C. Martins, P. Figueira, C. Lovis, F. Pepe, S. Cristiani, R. Rebolo, R., Allart, A. Cabral, A. Mehner, A. Sozzetti, A. Su\'arez Mascare\~no, C. J.A.P., Martins, D. Ehrenreich, D. M\'egevand, E. Palle

TL;DR
This paper introduces S-BART, a semi-Bayesian template matching framework for more precise radial velocity measurements in exoplanet detection, outperforming traditional CCF methods especially for M-dwarf stars.
Contribution
The paper presents a new semi-Bayesian approach for RV extraction that improves precision and statistical characterization over existing methods like CCF and HARPS-TERRA.
Findings
S-BART reduces RV scatter by ~10% for M-dwarfs and ~4% for K-dwarfs.
Achieves median RV uncertainty of ~15 cm/s for M-type stars.
Estimates ESPRESSO's nightly zero point scatter below 0.7 m/s.
Abstract
The detection and characterization of an increasing variety of exoplanets has been in part possible thanks to the continuous development of high-resolution, stable spectrographs, and using the Doppler radial-velocity (RV) method. The Cross Correlation Function (CCF) method is one of the traditional approaches for RV extraction. More recently, template matching was introduced as an advantageous alternative for M-dwarf stars. In this paper, we describe a new implementation of template matching within a semi-Bayesian framework, providing a more statistically principled characterization of the RV measurements. In this context, a common RV shift is used to describe the difference between each spectral order of a given stellar spectrum and a template built from the available observations. Posterior probability distributions are obtained for the relative RV associated with each spectrum, after…
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