Unsupervised method for correlated noise removal for multi-wavelength exoplanet transit observations
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2017-07-01Metadata
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Dehghan Firoozabadi, Ali
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Unsupervised method for correlated noise removal for multi-wavelength exoplanet transit observations
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Abstract
Exoplanetary atmospheric observations require an exquisite precision in the measurement of the relative flux among wavelengths. In this paper, we aim to provide a new adaptive method to treat light curves before fitting transit parameters in order to minimize systematic effects that affect, for instance, ground-based observations of exo-atmospheres. We propose a neural-network-based method that uses a reference built from the data itself with parameters that are chosen in an unsupervised fashion. To improve the performance of proposed method, K-means clustering and Silhouette criteria are used for identifying similar wavelengths in each cluster. We also constrain under which circumstances our method improves the measurement of planetary-to-stellar radius ratio without producing significant systematic offset. We tested our method in high quality data from WASP-19b and lowquality data from GJ-1214. We succeed in providing smaller error bars for the former when using JKTEBOP, but GJ-1214 light curve was beyond the capabilities of this method to improve as it was expected from our validation tests.
Patrocinador
Project POSTDOC_DICYT
041613DA_POSTDOC
University of Santiago Center for multidisciplinary research on signal processing
Conicyt/ACT1120
Project USACH/Dicyt
061413SG
Program U-INICIA VID
UI-02/2014
Programa Enlace Fondecyt, University of Chile
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Publications of the Astronomical Society of the Pacific, 129:074502, 2017
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