TL;DR
This paper introduces a Gaussian Process regression method to model stellar noise in red-giant star light curves, enabling better characterization of stellar oscillations and transits, especially for upcoming TESS data.
Contribution
The paper presents a novel Gaussian Process framework for modeling stellar signals in red-giant stars, improving transit analysis and stellar parameter estimation.
Findings
The method accurately models stellar oscillations and granulation in time domain.
It provides precise measurements of the oscillation frequency x.
Using the method enhances the accuracy of planetary radius ratios.
Abstract
The analysis of photometric time series in the context of transiting planet surveys suffers from the presence of stellar signals, often dubbed "stellar noise". These signals, caused by stellar oscillations and granulation, can usually be disregarded for main-sequence stars, as the stellar contributions average out when phase-folding the light curve. For evolved stars, however, the amplitudes of such signals are larger and the timescales similar to the transit duration of short-period planets, requiring that they be modeled alongside the transit. With the promise of TESS delivering on the order of light curves for stars along the red-giant branch, there is a need for a method capable of describing the "stellar noise" while simultaneously modelling an exoplanet's transit. In this work, a Gaussian Process regression framework is used to model stellar light curves and the…
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