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A Fast, Two-dimensional Gaussian Process Method Based on Celerite: Applications to Transiting Exoplanet Discovery and Characterization

Tyler A. Gordon, Eric Agol, Daniel Foreman-Mackey

2020The Astronomical Journal27 citationsDOIOpen Access PDF

Abstract

Abstract Gaussian processes (GPs) are commonly used as a model of stochastic variability in astrophysical time series. In particular, GPs are frequently employed to account for correlated stellar variability in planetary transit light curves. The efficient application of GPs to light curves containing thousands to tens of thousands of data points has been made possible by recent advances in GP methods, including the celerite method. Here we present an extension of the celerite method to two input dimensions where, typically, the second dimension is small. This method scales linearly with the total number of data points when the noise in each large dimension is proportional to the same celerite kernel and only the amplitude of the correlated noise varies in the second dimension. We demonstrate the application of this method to the problem of measuring precise transit parameters from multiwavelength light curves and show that it has the potential to improve transit parameters measurements by orders of magnitude. Applications of this method include transit spectroscopy and exomoon detection, as well a broader set of astronomical problems.

Topics & Concepts

ExoplanetGaussian processDimension (graph theory)Noise (video)Kernel (algebra)Global Positioning SystemLight curveGaussian noiseGaussianTransit (satellite)Computer scienceAlgorithmPhysicsMathematicsAstronomyPlanetArtificial intelligenceEngineeringTelecommunicationsPublic transportPure mathematicsQuantum mechanicsTransport engineeringCombinatoricsImage (mathematics)Gaussian Processes and Bayesian InferenceStellar, planetary, and galactic studiesSpectroscopy and Chemometric Analyses
A Fast, Two-dimensional Gaussian Process Method Based on Celerite: Applications to Transiting Exoplanet Discovery and Characterization | Litcius