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Identification of Galaxy-Galaxy Strong Lens Candidates in the DECam Local Volume Exploration Survey Using Machine Learning

  • E. A. Zaborowski
  • , A. Drlica-Wagner
  • , F. Ashmead
  • , J. F. Wu
  • , R. Morgan
  • , C. R. Bom
  • , A. J. Shajib
  • , S. Birrer
  • , W. Cerny
  • , E. J. Buckley-Geer
  • , B. Mutlu-Pakdil
  • , P. S. Ferguson
  • , K. Glazebrook
  • , S. J.Gonzalez Lozano
  • , Y. Gordon
  • , M. Martinez
  • , V. Manwadkar
  • , J. O'Donnell
  • , J. Poh
  • , A. Riley
  • J. D. Sakowska, L. Santana-Silva, B. X. Santiago, D. Sluse, C. Y. Tan, E. J. Tollerud, A. Verma, J. A. Carballo-Bello, Y. Choi, D. J. James, N. Kuropatkin, C. E. Martinez-Vazquez, D. L. Nidever, J. L.Nilo Castellon, N. E.D. Noël, K. A.G. Olsen, A. B. Pace, S. Mau, B. Yanny, A. Zenteno, T. M.C. Abbott, M. Aguena, O. Alves, F. Andrade-Oliveira, S. Bocquet, D. Brooks, D. L. Burke, A. Carnero Rosell, M. Carrasco Kind, J. Carretero, F. J. Castander, C. J. Conselice, M. Costanzi, M. E.S. Pereira, J. De Vicente, S. Desai, J. P. Dietrich, P. Doel, S. Everett, I. Ferrero, B. Flaugher, D. Friedel, J. Frieman, J. Garcia-Bellido, D. Gruen, R. A. Gruendl, G. Gutierrez, S. R. Hinton, D. L. Hollowood, K. Honscheid, K. Kuehn, H. Lin, J. L. Marshall, P. Melchior, J. Mena-Fernandez, F. Menanteau, R. Miquel, A. Palmese, F. Paz-Chinchon, A. Pieres, A. A.Plazas Malagon, J. Prat, M. Rodriguez-Monroy, A. K. Romer, E. Sanchez, V. Scarpine, I. Sevilla-Noarbe, M. Smith, E. Suchyta, C. To, N. Weaverdyck
  • Ohio State University
  • The University of Chicago
  • Fermi National Accelerator Laboratory
  • Space Telescope Science Institute
  • Johns Hopkins University
  • University of Wisconsin-Madison
  • Centro Brasileiro de Pesquisas Físicas
  • Yale University
  • Dartmouth College
  • Swinburne University of Technology
  • University of California at Santa Cruz
  • Durham University
  • Texas A&M University
  • University of Surrey
  • Universidade Cidade de São Paulo
  • Universidade Federal do Rio Grande do Sul
  • Laboratório Interinstitucional de e-Astronomia
  • STAR Institute
  • University of Oxford
  • Universidad de Tarapacá
  • University of California at Berkeley
  • ASTRAVEO LLC
  • NSF's NOIRLab
  • Montana State University
  • Universidad de La Serena
  • Carnegie Mellon University
  • Kavli Institute for Particle Astrophysics and Cosmology
  • Stanford University
  • University of Michigan, Ann Arbor
  • Ludwig Maximilian University of Munich
  • University College London
  • SLAC National Accelerator Laboratory
  • Instituto de Astrofísica de Canarias
  • University of La Laguna
  • University of Illinois at Urbana-Champaign
  • Institute for High Energy Physics
  • CSICIEEC)
  • Institute of Space Studies of Catalonia
  • University of Manchester
  • University of Trieste
  • Osservatorio Astronomico di Trieste
  • University of Hamburg
  • CIEMAT
  • Indian Institute of Technology Hyderabad
  • California Institute of Technology
  • University of Oslo
  • Universidad Autónoma de Madrid
  • University of Queensland
  • Macquarie University
  • Lowell Observatory
  • Princeton University
  • ICREA
  • University of Cambridge
  • Observatório Nacional
  • University of Sussex
  • University of Southampton
  • Oak Ridge National Laboratory
  • Lawrence Berkeley National Laboratory

Research output: Contribution to journalArticlepeer-review

16 Scopus citations

Abstract

We perform a search for galaxy-galaxy strong lens systems using a convolutional neural network (CNN) applied to imaging data from the first public data release of the DECam Local Volume Exploration Survey, which contains 1/4520 million astronomical sources covering 1/44000 deg2 of the southern sky to a 5σ point-source depth of g = 24.3, r = 23.9, i = 23.3, and z = 22.8 mag. Following the methodology of similar searches using Dark Energy Camera data, we apply color and magnitude cuts to select a catalog of 1/411 million extended astronomical sources. After scoring with our CNN, the highest-scoring 50,000 images were visually inspected and assigned a score on a scale from 0 (not a lens) to 3 (very probable lens). We present a list of 581 strong lens candidates, 562 of which are previously unreported. We categorize our candidates using their human-assigned scores, resulting in 55 Grade A candidates, 149 Grade B candidates, and 377 Grade C candidates. We additionally highlight eight potential quadruply lensed quasars from this sample. Due to the location of our search footprint in the northern Galactic cap (b > 10 deg) and southern celestial hemisphere (decl. < 0 deg), our candidate list has little overlap with other existing ground-based searches. Where our search footprint does overlap with other searches, we find a significant number of high-quality candidates that were previously unidentified, indicating a degree of orthogonality in our methodology. We report properties of our candidates including apparent magnitude and Einstein radius estimated from the image separation.

Original languageEnglish
Article number68
JournalAstrophysical Journal
Volume954
Issue number1
DOIs
StatePublished - Sep 1 2023

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