AIP Advances (Aug 2023)

Machine learning methods for fission product identification from Bragg curves

  • S. M. Lyons,
  • C. G. Britt,
  • L. S. Wood,
  • D. L. Duke,
  • B. G. Fulsom,
  • M. E. Moore,
  • L. Snyder

DOI
https://doi.org/10.1063/5.0142716
Journal volume & issue
Vol. 13, no. 8
pp. 085115 – 085115-7

Abstract

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A fission time projection chamber (fission-TPC) was developed to provide precise neutron-induced fission measurements for several major actinides. As fission fragments lose energy in one of the gas volumes of the fission-TPC, energy loss information is captured and may be used to determine fission product yields as the stopping power of an ion is dependent on the atomic number. The work presented here demonstrates the ability to apply machine learning techniques for Bragg curve classification. A set of one million energy loss curves for 24 different fission-fragment elements was generated using common stopping power software. A ResNet architecture optimized for 1D data was used to train, test, and validate a model for light and heavy fission fragments using the simulated data. The resultant classification accuracy for the light and heavy fragments indicates that this could be a viable method for elemental classification of data from the fission-TPC.