4.7 Article

Discovering Ca ii absorption lines with a neural network

Journal

MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY
Volume 517, Issue 4, Pages 4902-4915

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/mnras/stac2905

Keywords

methods: data analysis; techniques: spectroscopic; quasars: absorption lines

Funding

  1. Alfred P. Sloan Foundation
  2. National Science Foundation
  3. U.S. Department of Energy
  4. National Aeronautics and Space Administration
  5. Japanese Monbukagakusho
  6. Max Planck Society
  7. Higher Education Funding Council for England
  8. American Museum of Natural History
  9. Astrophysical Institute Potsdam
  10. University of Basel
  11. University of Cambridge
  12. Case Western Reserve University
  13. University of Chicago
  14. Drexel University
  15. Fermilab
  16. Institute for Advanced Study
  17. Japan Participation Group
  18. Johns Hopkins University
  19. Joint Institute for Nuclear Astrophysics
  20. Kavli Institute for Particle Astrophysics and Cosmology
  21. Los Alamos National Laboratory
  22. Korean Scientist Group
  23. Chinese Academy of Sciences (LAMOST)
  24. Max Planck Institute for Astronomy (MPIA)
  25. Max Planck Institute for Astrophysics (MPA)
  26. New Mexico State University
  27. Ohio State University
  28. University of Pittsburgh
  29. University of Portsmouth
  30. Princeton University
  31. United States Naval Observatory
  32. University of Washington
  33. U.S. Department of Energy Office of Science
  34. University of Arizona
  35. Brazilian Participation Group
  36. Brookhaven National Laboratory
  37. Carnegie Mellon University
  38. University of Florida
  39. French Participation Group
  40. German Participation Group
  41. Harvard University
  42. Instituto de Astrofisica de Canarias
  43. Michigan State/Notre Dame/JINA Participation Group
  44. Lawrence Berkeley National Laboratory
  45. Max Planck Institute for Astrophysics
  46. Max Planck Institute for Extraterrestrial Physics
  47. New York University
  48. Pennsylvania State University
  49. Spanish Participation Group
  50. University of Tokyo
  51. University of Utah
  52. Vanderbilt University
  53. University of Virginia
  54. Yale University

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Quasar absorption line analysis is crucial for studying gas and dust components, as well as the evolution and formation of galaxies. The number of known quasar Ca ii absorbers is relatively low, but using deep learning, researchers have developed an accurate and quick approach to search for Ca ii absorption lines. This method has resulted in the discovery of new absorbers and confirmed the existence of previously identified ones.
Quasar absorption line analysis is critical for studying gas and dust components and their physical and chemical properties as well as the evolution and formation of galaxies in the early universe. Calcium II (Ca ii) absorbers, which are one of the dustiest absorbers and are located at lower redshifts than most other absorbers, are especially valuable when studying physical processes and conditions in recent galaxies. However, the number of known quasar Ca ii absorbers is relatively low due to the difficulty of detecting them with traditional methods. In this work, we developed an accurate and quick approach to search for Ca ii absorption lines using deep learning. In our deep learning model, a convolutional neural network, tuned using simulated data, is used for the classification task. The simulated training data are generated by inserting artificial Ca ii absorption lines into original quasar spectra from the Sloan Digital Sky Survey (SDSS), while an existing Ca ii catalogue is adopted as the test set. The resulting model achieves an accuracy of 96 per cent on the real data in the test set. Our solution runs thousands of times faster than traditional methods, taking a fraction of a second to analyse thousands of quasars, while traditional methods may take days to weeks. The trained neural network is applied to quasar spectra from SDSS's DR7 and DR12 and discovered 399 new quasar Ca ii absorbers. In addition, we confirmed 409 known quasar Ca ii absorbers identified previously by other research groups through traditional methods.

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