2019
DOI: 10.3847/1538-3881/ab26b8
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Autoregressive Planet Search: Methodology

Abstract: The detection of periodic signals from transiting exoplanets is often impeded by extraneous aperiodic photometric variability, either intrinsic to the star or arising from the measurement process. Frequently, these variations are autocorrelated wherein later flux values are correlated with previous ones. In this work, we present the methodology of the Autoregessive Planet Search (ARPS) project which uses Autoregressive Integrated Moving Average (ARIMA) and related statistical models that treat a wide variety o… Show more

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Cited by 30 publications
(50 citation statements)
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References 114 publications
(126 reference statements)
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“…We have developed the MIARMA algorithm, based on auto-regressive, moving -average models, to maximize the recovery of the frequency content in harmonic analysis. This algorithm has allowed us to improve the asteroseismic studies based on the global behavior of the modes, as attested by different publications on the subject, even in the search for planetary transits (see e.g., Caceres et al, 2019;Handler et al, 2019;Stuhr et al, 2019). Thanks to this improvement our group has confirmed the presence of a low-order large separation and its proportionality to the stellar mean density (Suárez et al, 2014;García Hernández et al, 2015).…”
Section: Discussionmentioning
confidence: 66%
“…We have developed the MIARMA algorithm, based on auto-regressive, moving -average models, to maximize the recovery of the frequency content in harmonic analysis. This algorithm has allowed us to improve the asteroseismic studies based on the global behavior of the modes, as attested by different publications on the subject, even in the search for planetary transits (see e.g., Caceres et al, 2019;Handler et al, 2019;Stuhr et al, 2019). Thanks to this improvement our group has confirmed the presence of a low-order large separation and its proportionality to the stellar mean density (Suárez et al, 2014;García Hernández et al, 2015).…”
Section: Discussionmentioning
confidence: 66%
“…Seager & Mallén-Ornelas 2003;Bond et al 2004). A planet search algorithm utilizing ARIMA models has been already proven to be effective (Caceres et al 2019). Moreover, the locations in the A − T plane, estimated based on properly sampled datasets, could assist in detections of new extrasolar planets.…”
Section: Possible Applicationsmentioning
confidence: 99%
“…Time series data observed at irregularly spaced intervals arise often in fields as diverse as astronomy, climatology, economics, finance, medical sciences, geophysics; see for example ?, Muñoz et al (1992), Belcher et al (1994), ?, Hand (2008), Corduas and Piccolo (2008), Harvill et al (2013), Podgorski (2014), Babu and Mahabal (2016), Eyheramendy et al (2018), ?, Edelmann et al (2019), Caceres et al (2019), Elorrieta et al (2019), and Zhang (2020), among others. In particular, in the climatology context, Mudelsee (2014) points out that conventional time series analysis has largely ignored irregularly spaced structures that climate time series must take into account.…”
Section: Introductionmentioning
confidence: 99%