Improving Earth-like planet detection in radial velocity using deep learning
Yinan Zhao, Xavier Dumusque, Michael Cretignier, Andrew Collier, Cameron, David W. Latham, Mercedes L\'opez-Morales, Michel Mayor, Alessandro, Sozzetti, Rosario Cosentino, Isidro G\'omez-Vargas, Francesco Pepe, Stephane, Udry

TL;DR
This paper introduces a convolutional neural network that models stellar activity at the spectral level to improve the detection of Earth-like exoplanets via radial velocity measurements, achieving unprecedented low detection thresholds.
Contribution
The study presents a novel CNN-based algorithm that effectively disentangles stellar activity signals at the spectral level, enhancing exoplanet detection sensitivity beyond previous methods.
Findings
Achieves a 0.5 m/s detection threshold for stars HD128621 and HD10700.
Reaches a 0.2 m/s detection threshold for the Sun, enabling detection of Earth-mass planets.
Demonstrates superior mitigation of stellar activity signals compared to traditional techniques.
Abstract
Many novel methods have been proposed to mitigate stellar activity for exoplanet detection as the presence of stellar activity in radial velocity (RV) measurements is the current major limitation. Unlike traditional methods that model stellar activity in the RV domain, more methods are moving in the direction of disentangling stellar activity at the spectral level. The goal of this paper is to present a novel convolutional neural network-based algorithm that efficiently models stellar activity signals at the spectral level, enhancing the detection of Earth-like planets. We trained a convolutional neural network to build the correlation between the change in the spectral line profile and the corresponding RV, full width at half maximum (FWHM) and bisector span (BIS) values derived from the classical cross-correlation function. This algorithm has been tested on three intensively observed…
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