Improving neutrino energy estimation of charged-current interaction events with recurrent neural networks in MicroBooNE
Metadatos
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American Physical Society
Fecha
2024-06-17Referencia bibliográfica
Published version: Abratenko, P. García Gámez, Diego Microboone Collaboration et al. Phys. Rev. D 110, 092010 – 14 November, 2024. DOI: https://doi.org/10.1103/PhysRevD.110.092010
Patrocinador
U.S. Department of Energy, Office of Science, Offices of High Energy Physics and Nuclear Physics; U.S. National Science Foundation; Fermi Research Alliance, LLC (FRA) DE-AC02-07CH11359; Swiss National Science Foundation; Science and Technology Facilities Council (STFC); United Kingdom; NSF AI Institute for Artificial Intelligence and Fundamental Interactions; Albert Einstein Center for Fundamental Physics, Bern, SwitzerlandResumen
We present a deep learning-based method for estimating the neutrino energy of charged-current
neutrino-argon interactions. We employ a recurrent neural network (RNN) architecture for neutrino
energy estimation in the MicroBooNE experiment, utilizing liquid argon time projection chamber (LArTPC) detector technology. Traditional energy estimation approaches in LArTPCs, which
largely rely on reconstructing and summing visible energies, often experience sizable biases and resolution smearing because of the complex nature of neutrino interactions and the detector response.
The estimation of neutrino energy can be improved after considering the kinematics information of
reconstructed final-state particles. Utilizing kinematic information of reconstructed particles, the
deep learning-based approach shows improved resolution and reduced bias for the muon neutrino
Monte Carlo simulation sample compared to the traditional approach. In order to address the common concern about the effectiveness of this method on experimental data, the RNN-based energy
estimator is further examined and validated with dedicated data-simulation consistency tests using
MicroBooNE data. We also assess its potential impact on a neutrino oscillation study after accounting for all statistical and systematic uncertainties and show that it enhances physics sensitivity. This
method has good potential to improve the performance of other physics analyses.