TL;DR
This paper introduces GPLinearOdeMaker.jl, a software tool that efficiently models stellar activity in radial velocity data using multivariate Gaussian processes, improving exoplanet detection precision.
Contribution
The paper presents a flexible, computationally efficient software package for multivariate Gaussian process modeling of stellar activity signals in radial velocity data.
Findings
Local kernels enhance sensitivity in planet detection.
The software simplifies applying complex GP models.
Simulated data demonstrates improved modeling of stellar activity.
Abstract
The radial velocity method is one of the most successful techniques for the discovery and characterization of exoplanets. Modern spectrographs promise measurement precision of ~0.2-0.5 m/s for an ideal target star. However, the intrinsic variability of stellar spectra can mimic and obscure true planet signals at these levels. Rajpaul et al. (2015) and Jones et al. (2017) proposed applying a physically motivated, multivariate Gaussian process (GP) to jointly model the apparent Doppler shift and multiple indicators of stellar activity as a function of time, so as to separate the planetary signal from various forms of stellar variability. These methods are promising, but performing the necessary calculations can be computationally intensive and algebraically tedious. In this work, we present a flexible and computationally efficient software package, GPLinearOdeMaker.jl, for modeling…
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