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Machine Learning-Based Extreme Data Reduction for Prompt Supernova Pointing at DUNE

Publication ,  Journal Article
Wang, MHLS; Khan, M; Mitrevski, J; Hawks, B; Junk, T; Yang, T; Ngadiuba, J; Ding, P; Scholberg, K; Hakenmueller, J; Lian, VTB; Karagiorgi, G ...
Published in: IEEE Transactions on Nuclear Science
January 1, 2025

One of the goals of the Deep Underground Neutrino Experiment (DUNE) is to use the massive underground liquid argon time projection chamber (LArTPC) detectors at its far site for multimessenger astronomy (MMA), in the detection of neutrinos from core-collapse supernovae (SNe). Its current baseline trigger strategy detects activity in the detector that is consistent with supernova (SN) neutrinos and saves the raw data for further offline analysis but provides no prompt pointing information crucial for optical follow-ups by other observatories. This approach is based on the assumption that prompt pointing determination using raw data is computationally prohibitive. In this article, we demonstrate a proof-of-concept based on applying extreme data reduction on the buffered SN data in the DUNE data acquisition (DAQ) system's front-end computers using a machine learning (ML) workflow. This reduces the data by ~5 orders of magnitude, allowing a full track reconstruction to be carried out quickly on a single server. The total time to perform the ML-based data reduction and the full track reconstruction is less than the time to transfer the SN data back to Fermilab or a high-performance computing (HPC) center. This shows that prompt processing of raw SN data is possible and, in fact, trivial once the data have been reduced to reject radiological backgrounds, paving the way to a high-quality SN pointing trigger that is based on fully reconstructed data instead of trigger primitives (TPs).

Duke Scholars

Published In

IEEE Transactions on Nuclear Science

DOI

EISSN

1558-1578

ISSN

0018-9499

Publication Date

January 1, 2025

Volume

72

Issue

3

Start / End Page

678 / 683

Related Subject Headings

  • Nuclear & Particles Physics
  • 5106 Nuclear and plasma physics
  • 0903 Biomedical Engineering
  • 0299 Other Physical Sciences
  • 0202 Atomic, Molecular, Nuclear, Particle and Plasma Physics
 

Citation

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MLA
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Wang, M. H. L. S., Khan, M., Mitrevski, J., Hawks, B., Junk, T., Yang, T., … Ghosh, A. (2025). Machine Learning-Based Extreme Data Reduction for Prompt Supernova Pointing at DUNE. IEEE Transactions on Nuclear Science, 72(3), 678–683. https://doi.org/10.1109/TNS.2024.3521357
Wang, M. H. L. S., M. Khan, J. Mitrevski, B. Hawks, T. Junk, T. Yang, J. Ngadiuba, et al. “Machine Learning-Based Extreme Data Reduction for Prompt Supernova Pointing at DUNE.” IEEE Transactions on Nuclear Science 72, no. 3 (January 1, 2025): 678–83. https://doi.org/10.1109/TNS.2024.3521357.
Wang MHLS, Khan M, Mitrevski J, Hawks B, Junk T, Yang T, et al. Machine Learning-Based Extreme Data Reduction for Prompt Supernova Pointing at DUNE. IEEE Transactions on Nuclear Science. 2025 Jan 1;72(3):678–83.
Wang, M. H. L. S., et al. “Machine Learning-Based Extreme Data Reduction for Prompt Supernova Pointing at DUNE.” IEEE Transactions on Nuclear Science, vol. 72, no. 3, Jan. 2025, pp. 678–83. Scopus, doi:10.1109/TNS.2024.3521357.
Wang MHLS, Khan M, Mitrevski J, Hawks B, Junk T, Yang T, Ngadiuba J, Ding P, Scholberg K, Hakenmueller J, Lian VTB, Karagiorgi G, Claire J, Ge G, Malige A, Cai T, Weinstein A, Ghosh A. Machine Learning-Based Extreme Data Reduction for Prompt Supernova Pointing at DUNE. IEEE Transactions on Nuclear Science. 2025 Jan 1;72(3):678–683.

Published In

IEEE Transactions on Nuclear Science

DOI

EISSN

1558-1578

ISSN

0018-9499

Publication Date

January 1, 2025

Volume

72

Issue

3

Start / End Page

678 / 683

Related Subject Headings

  • Nuclear & Particles Physics
  • 5106 Nuclear and plasma physics
  • 0903 Biomedical Engineering
  • 0299 Other Physical Sciences
  • 0202 Atomic, Molecular, Nuclear, Particle and Plasma Physics
 
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