Identifying Exoplanets with Deep Learning. III. Automated Triage and Vetting of TESS Candidates
Article
Article Title | Identifying Exoplanets with Deep Learning. III. Automated Triage and Vetting of TESS Candidates |
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ERA Journal ID | 1048 |
Article Category | Article |
Authors | Yu, Liang (Author), Vanderburg, Andrew (Author), Huang, Chelsea (Author), Shallue, Christopher J. (Author), Crossfield, Ian J. M. (Author), Gaudi, B. Scott (Author), Daylan, Tansu (Author), Dattilo, Anne (Author), Armstrong, David J. (Author), Ricker, George R. (Author), Vanderspek, Roland K. (Author), Latham, David W. (Author), Seager, Sara (Author), Dittmann, Jason (Author), Doty, John P. (Author), Glidden, Ana (Author) and Quinn, Samuel N. (Author) |
Journal Title | The Astronomical Journal |
Journal Citation | 158 (1), pp. 1-15 |
Article Number | 25 |
Number of Pages | 15 |
Year | 2019 |
Publisher | IOP Publishing |
Place of Publication | United States |
ISSN | 0004-6256 |
1538-3881 | |
Digital Object Identifier (DOI) | https://doi.org/10.3847/1538-3881/ab21d6 |
Web Address (URL) | https://iopscience.iop.org/article/10.3847/1538-3881/ab21d6 |
Abstract | NASA’s Transiting Exoplanet Survey Satellite (TESS) presents us with an unprecedented volume of space-based photometric observations that must be analyzed in an efficient and unbiased manner. With at least ∼1,000,000 new light curves generated every month from full-frame images alone, automated planet candidate identification has become an attractive alternative to human vetting. Here we present a deep learning model capable of performing triage and vetting on TESS candidates. Our model is modified from an existing neural network designed to automatically classify Kepler candidates, and is the first neural network to be trained and tested on real TESS data. In triage mode, our model can distinguish transit-like signals (planet candidates and eclipsing binaries) from stellar variability and instrumental noise with an average precision (the weighted mean of precisions over all classification thresholds) of 97.0% and an accuracy of 97.4%. In vetting mode, the model is trained to identify only planet candidates with the help of newly added scientific domain knowledge, and achieves an average precision of 69.3% and an accuracy of 97.8%. We apply our model on new data from Sector 6, and present 288 new signals that received the highest scores in triage and vetting and were also identified as planet candidates by human vetters. We also provide a homogeneously classified set of TESS candidates suitable for future training. |
Keywords | methods: data analysis; planets and satellites: detection; techniques: photometric; Astrophysics - Earth and Planetary Astrophysics |
Contains Sensitive Content | Does not contain sensitive content |
ANZSRC Field of Research 2020 | 510109. Stellar astronomy and planetary systems |
Public Notes | For access to this article, please click on the URL link provided. |
Institution of Origin | University of Southern Queensland |
Byline Affiliations | Massachusetts Institute of Technology, United States |
University of Texas at Austin, United States | |
Google, United States | |
Ohio State University, United States | |
University of Warwick, United Kingdom | |
Center for Astrophysics Harvard and Smithsonian, United States | |
Noqsi Aerospace, United States |
https://research.usq.edu.au/item/q722x/identifying-exoplanets-with-deep-learning-iii-automated-triage-and-vetting-of-tess-candidates
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