Cosmic ray background removal with deep neural networks in SBND

Collaboration, SBND, Acciarri, R, Adams, C et al. (128 more authors) (2021) Cosmic ray background removal with deep neural networks in SBND. Frontiers in Artificial Intelligence, 4. 649917.

Abstract

Metadata

Authors/Creators:
  • Collaboration, SBND
  • Acciarri, R
  • Adams, C
  • Andreopoulos, C
  • Asaadi, J
  • Babicz, M
  • Backhouse, C
  • Badgett, W
  • Bagby, L
  • Barker, D
  • Basque, V
  • Bazetto, MCQ
  • Betancourt, M
  • Bhanderi, A
  • Bhat, A
  • Bonifazi, C
  • Brailsford, D
  • Brandt, AG
  • Brooks, T
  • Carneiro, MF
  • Chen, Y
  • Chen, H
  • Chisnall, G
  • Crespo-Anadón, JI
  • Cristaldo, E
  • Cuesta, C
  • Astiz, ILDI
  • Roeck, AD
  • Pereira, GDS
  • Tutto, MD
  • Benedetto, VD
  • Ereditato, A
  • Evans, JJ
  • Ezeribe, AC
  • Fitzpatrick, RS
  • Fleming, BT
  • Foreman, W
  • Franco, D
  • Furic, I
  • Furmanski, AP
  • Gao, S
  • Garcia-Gamez, D
  • Frandini, H
  • Ge, G
  • Gil-Botella, I
  • Gollapinni, S
  • Goodwin, O
  • Green, P
  • Griffith, WC
  • Guenette, R
  • Guzowski, P
  • Ham, T
  • Henzerling, J
  • Holin, A
  • Howard, B
  • Jones, RS
  • Kalra, D
  • Karagiorgi, G
  • Kashur, L
  • Ketchum, W
  • Kim, MJ
  • Kudryavtsev, VA ORCID logo https://orcid.org/0000-0002-7018-5827
  • Larkin, J
  • Lay, H
  • Lepetic, I
  • Littlejohn, BR
  • Louis, WC
  • Machado, AA
  • Malek, M
  • Mardsen, D
  • Mariani, C
  • Marinho, F
  • Mastbaum, A
  • Mavrokoridis, K
  • McConkey, N
  • Meddage, V
  • Méndez, DP
  • Mettler, T
  • Mistry, K
  • Mogan, A
  • Molina, J
  • Mooney, M
  • Mora, L
  • Moura, CA
  • Mousseau, J
  • Navrer-Agasson, A
  • Nicolas-Arnaldos, FJ
  • Nowak, JA
  • Palamara, O
  • Pandey, V
  • Pater, J
  • Paulucci, L
  • Pimentel, VL
  • Psihas, F
  • Putnam, G
  • Qian, X
  • Raguzin, E
  • Ray, H
  • Reggiani-Guzzo, M
  • Rivera, D
  • Roda, M
  • Ross-Lonergan, M
  • Scanavini, G
  • Scarff, A
  • Schmitz, DW
  • Schukraft, A
  • Segreto, E
  • Nunes, MS
  • Soderberg, M
  • Söldner-Rembold, S
  • Spitz, J
  • Spooner, NJC
  • Stancari, M
  • Stenico, GV
  • Szelc, A
  • Tang, W
  • Vidal, JT
  • Torretta, D
  • Toups, M
  • Touramanis, C
  • Tripathi, M
  • Tufanli, S
  • Tyley, E
  • Valdiviesso, GA
  • Worcester, E
  • Worcester, M
  • Yarbrough, G
  • Yu, J
  • Zamorano, B
  • Zennamo, J
  • Zglam, A
Copyright, Publisher and Additional Information: © 2021 The Author(s). This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms. http://creativecommons.org/licenses/by/4.0/
Keywords: deep learning; neutrino physics; SBN program; SBND; UNet; liquid Ar detectors
Dates:
  • Submitted: 2 December 2020
  • Accepted: 23 March 2021
  • Published (online): 24 August 2021
  • Published: 24 August 2021
Institution: The University of Sheffield
Academic Units: The University of Sheffield > Faculty of Science (Sheffield) > Department of Physics and Astronomy (Sheffield)
Funding Information:
FunderGrant number
Science and Technology Facilities CouncilST/N001141/1; ST/N000277/1; ST/P00573X/1; ST/S003398/1
Science and Technology Facilities CouncilST/R000042/1; ST/R006709/1; ST/S000747/1
Depositing User: Symplectic Sheffield
Date Deposited: 21 Apr 2021 11:39
Last Modified: 13 Sep 2021 08:49
Status: Published
Publisher: Frontiers Media SA
Refereed: Yes
Identification Number: https://doi.org/10.3389/frai.2021.649917
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