The Precision Reactor Oscillation and Spectrum Experiment, PROSPECT, was a segmented antineutrino detector that successfully operated at the High Flux Isotope Reactor in Oak Ridge, TN, during its 2018 run. Despite challenges with photomultiplier tube base failures affecting some segments, innovative machine learning approaches were employed to perform position and energy reconstruction, and particle classification. This work highlights the effectiveness of convolutional neural networks and graph convolutional networks in enhancing data analysis. By leveraging these techniques, a 3.3% increase in effective statistics was achieved compared to traditional methods, showcasing their potential to improve analysis performance. Furthermore, these machine learning methodologies offer promising applications for other segmented particle detectors, underscoring their versatility and impact.
Journal article
Machine learning for single-ended event reconstruction in PROSPECT experiment
Journal of instrumentation, v 20(8), P08006
01 Aug 2025
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Details
- Title
- Machine learning for single-ended event reconstruction in PROSPECT experiment
- Creators
- M. Andriamirado - Illinois Institute of TechnologyA.B. Balantekin - University of Wisconsin–MadisonC.D. Bass - Le Moyne CollegeO. Benevides Rodrigues - Illinois Institute of TechnologyE.P. Bernard - Lawrence Livermore National LaboratoryN.S. Bowden - Lawrence Livermore National LaboratoryC.D. Bryan - High Flux Isotope ReactorR. Carr - Department of Physics, United States Naval Academy, Annapolis, MD, U.S.AT. Classen - Lawrence Livermore National LaboratoryA.J. Conant - High Flux Isotope ReactorG. Deichert - High Flux Isotope ReactorA. Delgado - Oak Ridge National LaboratoryM.J. Dolinski - Department of Physics, Drexel University, Philadelphia, PA, U.S.AA. Erickson - Georgia Institute of TechnologyM. Fuller - High Flux Isotope ReactorA. Galindo-Uribarri - University of Tennessee at KnoxvilleS. Gokhale - Brookhaven National LaboratoryC. Grant - Boston UniversityS. Hans - Brookhaven National LaboratoryA.B. Hansell - Susquehanna UniversityT.E. Haugen - National Institute of Standards and TechnologyK.M. Heeger - University of New HavenB. Heffron - University of Tennessee at KnoxvilleD.E. Jaffe - Brookhaven National LaboratoryS. Jayakumar - Department of Physics, Drexel University, Philadelphia, PA, U.S.AJ. Koblanski - University of Hawaii SystemP. Kunkle - Boston UniversityC.E. Lane - Department of Physics, Drexel University, Philadelphia, PA, U.S.AB.R. Littlejohn - Illinois Institute of TechnologyA. Lozano Sanchez - Drexel UniversityX. Lu - University of Tennessee at KnoxvilleF. Machado - Illinois Institute of TechnologyJ. Maricic - University of Hawaii SystemM.P. Mendenhall - Lawrence Livermore National LaboratoryA.M. Meyer - University of Hawaii SystemR. Milincic - University of Hawaii SystemP.E. Mueller - Oak Ridge National LaboratoryH.P. Mumm - National Institute of Standards and TechnologyR. Neilson - Department of Physics, Drexel University, Philadelphia, PA, U.S.AC. Roca - Lawrence Livermore National LaboratoryR. Rosero - Brookhaven National LaboratoryD. Venegas-Vargas - University of Tennessee at KnoxvilleJ. Wilhelmi - University of New HavenM. Yeh - Brookhaven National LaboratoryC. Zhang - Brookhaven National LaboratoryX. Zhang - Lawrence Livermore National Laboratorythe PROSPECT collaboration
- Publication Details
- Journal of instrumentation, v 20(8), P08006
- Publisher
- IOP Publishing
- Number of pages
- 29
- Resource Type
- Journal article
- Language
- English
- Academic Unit
- Electrical and Computer Engineering; Physics
- Web of Science ID
- WOS:001574327100001
- Scopus ID
- 2-s2.0-105012279641
- Other Identifier
- 991022073052704721