The Pandora Software Development Kit and algorithm libraries perform reconstruction of neutrino interactions in liquid argon time projection chamber detectors. Pandora is the primary event reconstruction software used at the Deep Underground Neutrino Experiment, which will operate four large-scale liquid argon time projection chambers at the far detector site in South Dakota, producing high-resolution images of charged particles emerging from neutrino interactions. While these high-resolution images provide excellent opportunities for physics, the complex topologies require sophisticated pattern recognition capabilities to interpret signals from the detectors as physically meaningful objects that form the inputs to physics analyses. A critical component is the identification of the neutrino interaction vertex. Subsequent reconstruction algorithms use this location to identify the individual primary particles and ensure they each result in a separate reconstructed particle. A new vertex-finding procedure described in this article integrates a U-ResNet neural network performing hit-level classification into the multi-algorithm approach used by Pandora to identify the neutrino interaction vertex. The machine learning solution is seamlessly integrated into a chain of pattern-recognition algorithms. The technique substantially outperforms the previous BDT-based solution, with a more than 20% increase in the efficiency of sub-1 cm vertex reconstruction across all neutrino flavours.

Abud, A., Acciarri, R., Acero, M., Adames, M., Adamov, G., Adamowski, M., et al. (2025). Neutrino interaction vertex reconstruction in DUNE with Pandora deep learning. EUROPEAN PHYSICAL JOURNAL. C, PARTICLES AND FIELDS, 85(6) [10.1140/epjc/s10052-025-14313-8].

Neutrino interaction vertex reconstruction in DUNE with Pandora deep learning

Bramati, F.;Branca, A.;Brizzolari, C.;Carniti, P.;Falcone, A.;Galizzi, F.;Guffanti, D.;Meazza, L.;Terranova, F.;Torti, M.;
2025

Abstract

The Pandora Software Development Kit and algorithm libraries perform reconstruction of neutrino interactions in liquid argon time projection chamber detectors. Pandora is the primary event reconstruction software used at the Deep Underground Neutrino Experiment, which will operate four large-scale liquid argon time projection chambers at the far detector site in South Dakota, producing high-resolution images of charged particles emerging from neutrino interactions. While these high-resolution images provide excellent opportunities for physics, the complex topologies require sophisticated pattern recognition capabilities to interpret signals from the detectors as physically meaningful objects that form the inputs to physics analyses. A critical component is the identification of the neutrino interaction vertex. Subsequent reconstruction algorithms use this location to identify the individual primary particles and ensure they each result in a separate reconstructed particle. A new vertex-finding procedure described in this article integrates a U-ResNet neural network performing hit-level classification into the multi-algorithm approach used by Pandora to identify the neutrino interaction vertex. The machine learning solution is seamlessly integrated into a chain of pattern-recognition algorithms. The technique substantially outperforms the previous BDT-based solution, with a more than 20% increase in the efficiency of sub-1 cm vertex reconstruction across all neutrino flavours.
Articolo in rivista - Articolo scientifico
Neutrino interaction; vertex reconstruction; deep learning; LArTPC detectors
English
25-giu-2025
2025
85
6
697
open
Abud, A., Acciarri, R., Acero, M., Adames, M., Adamov, G., Adamowski, M., et al. (2025). Neutrino interaction vertex reconstruction in DUNE with Pandora deep learning. EUROPEAN PHYSICAL JOURNAL. C, PARTICLES AND FIELDS, 85(6) [10.1140/epjc/s10052-025-14313-8].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/566201
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