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DeepZipper. II. Searching for Lensed Supernovae in Dark Energy Survey Data with Deep Learning

  • R. Morgan
  • , B. Nord
  • , K. Bechtol
  • , A. Möller
  • , W. G. Hartley
  • , S. Birrer
  • , S. J. González
  • , M. Martinez
  • , R. A. Gruendl
  • , E. J. Buckley-Geer
  • , A. J. Shajib
  • , A. Carnero Rosell
  • , C. Lidman
  • , T. Collett
  • , T. M.C. Abbott
  • , M. Aguena
  • , F. Andrade-Oliveira
  • , J. Annis
  • , D. Bacon
  • , S. Bocquet
  • D. Brooks, D. L. Burke, M. Carrasco Kind, J. Carretero, F. J. Castander, C. Conselice, L. N.da Costa, M. Costanzi, J. De Vicente, S. Desai, P. Doel, S. Everett, I. Ferrero, B. Flaugher, D. Friedel, J. Frieman, J. García-Bellido, E. Gaztanaga, D. Gruen, G. Gutierrez, S. R. Hinton, D. L. Hollowood, K. Honscheid, K. Kuehn, N. Kuropatkin, O. Lahav, M. Lima, F. Menanteau, R. Miquel, A. Palmese, F. Paz-Chinchón, M. E.S. Pereira, A. Pieres, A. A.Plazas Malagón, J. Prat, M. Rodriguez-Monroy, A. K. Romer, A. Roodman, E. Sanchez, V. Scarpine, I. Sevilla-Noarbe, M. Smith, E. Suchyta, M. E.C. Swanson, G. Tarle, D. Thomas, T. N. Varga
  • University of Wisconsin-Madison
  • Fermi National Accelerator Laboratory
  • Legacy Survey of Space and Time Corporation Data Science Fellowship Program
  • The University of Chicago
  • Legacy Survey of Space and Time
  • Swinburne University of Technology
  • University of Geneva
  • University of Illinois at Urbana-Champaign
  • Instituto de Astrofísica de Canarias
  • Laboratório Interinstitucional de e-Astronomia
  • University of La Laguna
  • Australian National University
  • University of Portsmouth
  • NSF's NOIRLab
  • University of Michigan, Ann Arbor
  • Ludwig Maximilian University of Munich
  • University College London
  • SLAC National Accelerator Laboratory
  • Stanford University
  • Institute for High Energy Physics
  • Institute of Space Studies of Catalonia
  • CSICIEEC)
  • University of Manchester

Research output: Contribution to journalArticlepeer-review

5 Scopus citations

Abstract

Gravitationally lensed supernovae (LSNe) are important probes of cosmic expansion, but they remain rare and difficult to find. Current cosmic surveys likely contain 5-10 LSNe in total while next-generation experiments are expected to contain several hundred to a few thousand of these systems. We search for these systems in observed Dark Energy Survey (DES) five year SN fields—10 3 sq. deg. regions of sky imaged in the griz bands approximately every six nights over five years. To perform the search, we utilize the DeepZipper approach: a multi-branch deep learning architecture trained on image-level simulations of LSNe that simultaneously learns spatial and temporal relationships from time series of images. We find that our method obtains an LSN recall of 61.13% and a false-positive rate of 0.02% on the DES SN field data. DeepZipper selected 2245 candidates from a magnitude-limited (m i < 22.5) catalog of 3,459,186 systems. We employ human visual inspection to review systems selected by the network and find three candidate LSNe in the DES SN fields.

Original languageEnglish
Article number19
JournalAstrophysical Journal
Volume943
Issue number1
DOIs
StatePublished - Jan 1 2023

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