4.3 Article

Wire-cell 3D pattern recognition techniques for neutrino event reconstruction in large LArTPCs: algorithm description and quantitative evaluation with MicroBooNE simulation

Journal

JOURNAL OF INSTRUMENTATION
Volume 17, Issue 1, Pages -

Publisher

IOP Publishing Ltd
DOI: 10.1088/1748-0221/17/01/P01037

Keywords

Pattern recognition, cluster finding, calibration and fitting methods; Analysis and statistical methods

Funding

  1. Fermi Research Alliance, LLC (FRA) [DE-AC02-07CH11359]
  2. U.S. Department of Energy, Office of Science, Offices of High Energy Physics and Nuclear Physics
  3. U.S. National Science Foundation
  4. Swiss National Science Foundation
  5. Science and Technology Facilities Council (STFC), part of the United Kingdom Research and Innovation
  6. Royal Society (United Kingdom)
  7. European Union's Horizon 2020 Marie Sklodowska-Curie Actions

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Wire-Cell is a 3D event reconstruction package for liquid argon time projection chambers, capable of reconstructing 3D space points with associated charge through geometry, time, and drifted charge from multiple readout wire planes. Utilizing pattern recognition techniques and a deep neural network to enhance neutrino interaction vertex reconstruction, it achieves high reconstruction efficiencies for primary leptons.
Wire-Cell is a 3D event reconstruction package for liquid argon time projection chambers. Through geometry, time, and drifted charge from multiple readout wire planes, 3D space points with associated charge are reconstructed prior to the pattern recognition stage. Pattern recognition techniques, including track trajectory and dQ/dx (ionization charge per unit length) fitting, 3D neutrino vertex fitting, track and shower separation, particle-level clustering, and particle identification are then applied on these 3D space points as well as the original 2D projection measurements. A deep neural network is developed to enhance the reconstruction of the neutrino interaction vertex. Compared to traditional algorithms, the deep neural network boosts the vertex efficiency by a relative 30% for charged-current v(e) interactions. This pattern recognition achieves 80-90% reconstruction efficiencies for primary leptons, after a 65.8% (72.9%) vertex efficiency for charged-current v(e) (v(mu)) interactions. Based on the resulting reconstructed particles and their kinematics, we also achieve 15-20% energy reconstruction resolutions for charged-current neutrino interactions.

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