Novel machine-learning method for spin classification of neutron resonances

G. P. A. Nobre, D. A. Brown, S. J. Hollick, S. Scoville, and P. Rodríguez
Phys. Rev. C 107, 034612 – Published 22 March 2023

Abstract

The performance of nuclear reactors and other nuclear systems depends on a precise understanding of the neutron interaction cross sections for materials used in these systems. These cross sections exhibit resonant structure whose shape is determined in part by the angular-momentum quantum numbers of the resonances. The correct assignment of the quantum numbers of neutron resonances is, therefore, paramount. In this project, we apply machine learning to automate the quantum number assignments using only the resonances' energies and widths and not relying on detailed transmission or capture measurements. The classifier used for quantum number assignment is trained using stochastically generated resonance sequences whose distributions mimic those of real data. We explore the use of several physics-motivated features for training our classifier. These features amount to out-of-distribution tests of a given resonance's widths and resonance-pair spacings. We pay special attention to situations where either capture widths cannot be trusted for classification purposes or where there is insufficient information to classify resonances by the total spin J. We demonstrate the efficacy of our classification approach using simulated and actual Cr52 resonance data.

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  • Received 29 September 2022
  • Accepted 16 February 2023

DOI:https://doi.org/10.1103/PhysRevC.107.034612

©2023 American Physical Society

Physics Subject Headings (PhySH)

Nuclear Physics

Authors & Affiliations

G. P. A. Nobre* and D. A. Brown

  • National Nuclear Data Center, Brookhaven National Laboratory, Upton, New York 11973-5000, USA

S. J. Hollick

  • Department of Physics, Yale University, New Haven, Connecticut 06520, USA

S. Scoville

  • University of Pittsburgh, Pittsburgh, Pennsylvania 15217, USA and Rensselaer Polytechnic Institute, Troy, New York 12180, USA

P. Rodríguez

  • Pacific Northwest National Laboratory, Richland, Washington 99354, USA and University of Puerto Rico, Mayagüez Campus, Mayagüez 00682, Puerto Rico

  • *gnobre@bnl.gov

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Issue

Vol. 107, Iss. 3 — March 2023

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