par Wirth, Rosmarie;Rifai, Mariam;Colomer Molla, Marta
Référence 41st International Conference on High Energy physics (ICHEP2022), Pos proceedings of science, Vol. 414
Publication Publié, 2022-12-16
Référence 41st International Conference on High Energy physics (ICHEP2022), Pos proceedings of science, Vol. 414
Publication Publié, 2022-12-16
Publication dans des actes
Résumé : | The Jiangmen Underground Neutrino Observatory (JUNO) is a 20 kt liquid scintillation detector, which will be completed in 2023 as the largest of its kind. JUNO aims to determine the neutrino mass ordering by observing the energy dependent oscillation probabilities of reactor anti-neutrinos.JUNOs large volume provides the opportunity to detect atmospheric neutrino events with lower energies than today’s large Cherenkov experiments. As atmospheric neutrinos reach the detector from all directions, partially experiencing the matter effect, they are especially interesting for observing the neutrino mass ordering via the matter effects on their oscillation probabilities. This article presents the preliminary performance of direction and energy reconstruction methods for atmospheric neutrino events at JUNO. The former uses a traditional approach, based on the reconstruction of the photon emission topology in the JUNO detector. For the energy reconstruction, a traditional approach as well as a machine learning based using Graph Convolutional Networks, are shown. |