Universe (Jun 2023)

Deep Learning of Quasar Lightcurves in the LSST Era

  • Andjelka B. Kovačević,
  • Dragana Ilić,
  • Luka Č. Popović,
  • Nikola Andrić Mitrović,
  • Mladen Nikolić,
  • Marina S. Pavlović,
  • Iva Čvorović-Hajdinjak,
  • Miljan Knežević,
  • Djordje V. Savić

DOI
https://doi.org/10.3390/universe9060287
Journal volume & issue
Vol. 9, no. 6
p. 287

Abstract

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Deep learning techniques are required for the analysis of synoptic (multi-band and multi-epoch) light curves in massive data of quasars, as expected from the Vera C. Rubin Observatory Legacy Survey of Space and Time (LSST). In this follow-up study, we introduce an upgraded version of a conditional neural process (CNP) embedded in a multi-step approach for the analysis of large data of quasars in the LSST Active Galactic Nuclei Scientific Collaboration data challenge database. We present a case study of a stratified set of u-band light curves for 283 quasars with very low variability ∼0.03. In this sample, the CNP average mean square error is found to be ∼5% (∼0.5 mag). Interestingly, besides similar levels of variability, there are indications that individual light curves show flare-like features. According to the preliminary structure–function analysis, these occurrences may be associated with microlensing events with larger time scales of 5–10 years.

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