Data reconstruction and classification with graph neural networks in KM3NeT/ARCA6-8

Francesco Filippini, Eleni Androutsou, Alba Domi, Bernardino Spisso, Evangelia Drakopoulou, KM3NeT collaboration, M. D. Filipović, et al.

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Abstract

KM3NeT is a research infrastructure hosting two large-volume Cherenkov neutrino detectors which are currently under construction in the Mediterranean Sea. The KM3NeT/ARCA detector is optimised for the detection of high-energy neutrinos from astrophysical sources in the TeV-PeV energy range. Once completed, the detector will consist of 230 detection units. Here, we present a Deep Learning method using graph neural networks that is trained and applied to events gathered with 6 and 8 active detection units of KM3NeT/ARCA. Graph neural networks have been trained for classification and regression tasks, showing very promising performances in a range of different tasks like neutrino-background identification, neutrino event topology classification, energy and direction reconstruction, and also in the study of properties of muon bundles.
Original languageEnglish
Article number1194
Number of pages10
JournalProceedings of Science
Volume444
DOIs
Publication statusPublished - 27 Sept 2024
Event38th International Cosmic Ray Conference, ICRC 2023 - Nagoya, Japan
Duration: 26 Jul 20233 Aug 2023

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