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DeepZipper: A Novel Deep-learning Architecture for Lensed Supernovae Identification

  • R. Morgan
  • , B. Nord
  • , K. Bechtol
  • , S. J. González
  • , E. Buckley-Geer
  • , A. Möller
  • , J. W. Park
  • , A. G. Kim
  • , S. Birrer
  • , M. Aguena
  • , J. Annis
  • , S. Bocquet
  • , D. Brooks
  • , A. Carnero Rosell
  • , M. Carrasco Kind
  • , J. Carretero
  • , R. Cawthon
  • , L. N. Da Costa
  • , T. M. Davis
  • , J. De Vicente
  • P. Doel, I. Ferrero, D. Friedel, J. Frieman, J. García-Bellido, M. Gatti, E. Gaztanaga, G. Giannini, D. Gruen, R. A. Gruendl, G. Gutierrez, D. L. Hollowood, K. Honscheid, D. J. James, K. Kuehn, N. Kuropatkin, M. A.G. Maia, R. Miquel, A. Palmese, F. Paz-Chinchón, M. E.S. Pereira, A. Pieres, A. A. Plazas Malagón, K. Reil, A. Roodman, E. Sanchez, M. Smith, E. Suchyta, M. E.C. Swanson, G. Tarle, C. To
  • 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
  • Stanford University
  • SLAC National Accelerator Laboratory
  • Lawrence Berkeley National Laboratory
  • Laboratório Interinstitucional de e-Astronomia
  • Ludwig Maximilian University of Munich
  • University College London
  • University of Illinois at Urbana-Champaign
  • Institute for High Energy Physics
  • William Jewell College
  • Observatório Nacional
  • University of Queensland
  • CIEMAT
  • University of Oslo
  • Universidad Autónoma de Madrid
  • University of Pennsylvania
  • Institute of Space Studies of Catalonia
  • CSICIEEC)
  • University of California at Santa Cruz
  • Ohio State University
  • Harvard-Smithsonian Ctr. Astrophys.
  • Macquarie University
  • Lowell Observatory
  • ICREA
  • University of California at Berkeley
  • University of Cambridge
  • University of Michigan, Ann Arbor
  • University of Hamburg
  • Princeton University
  • University of Southampton
  • Oak Ridge National Laboratory

Research output: Contribution to journalArticlepeer-review

12 Scopus citations

Abstract

Large-scale astronomical surveys have the potential to capture data on large numbers of strongly gravitationally lensed supernovae (LSNe). To facilitate timely analysis and spectroscopic follow-up before the supernova fades, an LSN needs to be identified soon after it begins. To quickly identify LSNe in optical survey data sets, we designed ZipperNet, a multibranch deep neural network that combines convolutional layers (traditionally used for images) with long short-term memory layers (traditionally used for time series). We tested ZipperNet on the task of classifying objects from four categories - no lens, galaxy-galaxy lens, lensed Type-Ia supernova, lensed core-collapse supernova - within high-fidelity simulations of three cosmic survey data sets: the Dark Energy Survey, Rubin Observatory's Legacy Survey of Space and Time (LSST), and a Dark Energy Spectroscopic Instrument (DESI) imaging survey. Among our results, we find that for the LSST-like data set, ZipperNet classifies LSNe with a receiver operating characteristic area under the curve of 0.97, predicts the spectroscopic type of the lensed supernovae with 79% accuracy, and demonstrates similarly high performance for LSNe 1-2 epochs after first detection. We anticipate that a model like ZipperNet, which simultaneously incorporates spatial and temporal information, can play a significant role in the rapid identification of lensed transient systems in cosmic survey experiments.

Original languageEnglish
Article number109
JournalAstrophysical Journal
Volume927
Issue number1
DOIs
StatePublished - Mar 1 2022

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