English

The GPU Phase Folding and Deep Learning Method for Detecting Exoplanet Transits

Earth and Planetary Astrophysics 2024-02-22 v2 Instrumentation and Methods for Astrophysics Machine Learning

Abstract

This paper presents GPFC, a novel Graphics Processing Unit (GPU) Phase Folding and Convolutional Neural Network (CNN) system to detect exoplanets using the transit method. We devise a fast folding algorithm parallelized on a GPU to amplify low signal-to-noise ratio transit signals, allowing a search at high precision and speed. A CNN trained on two million synthetic light curves reports a score indicating the likelihood of a planetary signal at each period. While the GPFC method has broad applicability across period ranges, this research specifically focuses on detecting ultra-short-period planets with orbital periods less than one day. GPFC improves on speed by three orders of magnitude over the predominant Box-fitting Least Squares (BLS) method. Our simulation results show GPFC achieves 9797% training accuracy, higher true positive rate at the same false positive rate of detection, and higher precision at the same recall rate when compared to BLS. GPFC recovers 100%100\% of known ultra-short-period planets in Kepler\textit{Kepler} light curves from a blind search. These results highlight the promise of GPFC as an alternative approach to the traditional BLS algorithm for finding new transiting exoplanets in data taken with Kepler\textit{Kepler} and other space transit missions such as K2, TESS and future PLATO and Earth 2.0.

Keywords

Cite

@article{arxiv.2312.02063,
  title  = {The GPU Phase Folding and Deep Learning Method for Detecting Exoplanet Transits},
  author = {Kaitlyn Wang and Jian Ge and Kevin Willis and Kevin Wang and Yinan Zhao},
  journal= {arXiv preprint arXiv:2312.02063},
  year   = {2024}
}

Comments

16 pages, 19 figures; Accepted for publication in the peer-reviewed journal, Monthly Notices of the Royal Astronomical Society (MNRAS), on January 20, 2024

R2 v1 2026-06-28T13:40:36.454Z