Event reconstruction for KM3NeT/ORCA using convolutional neural networks

Aiello Sebastiano, Albert Arnauld,Garre Sergio Alves, Aly Zineb,Ameli Fabrizio,Andre Michel,Androulakis Giorgos,Anghinolfi Marco,Anguita Mancia,Anton Gisela,Ardid Miquel,Aublin Julien, Bagatelas Christos,Barbarino Giancarlo, Baret Bruny, Pree Suzan Basegmez du, Bendahman Meriem, Berbee Edward, Bertin Vincent,Biagi Simone,Biagioni Andrea,Bissinger Matthias,Boettcher Markus,Boumaaza Jihad, Bouta Mohammed, Bouwhuis Mieke,Bozza Cristiano, Branzas Horea, Bruijn Ronald,Brunner Jürgen, Buis Ernst-Jan,Buompane Raffaele,Busto Jose,Caiffi Barbara,Calvo David,Capone Antonio,Carretero Víctor,Castaldi Paolo,Celli Silvia,Chabab Mohamed, Chau Nhan,Chen Andrew, Cherubini Silvio, Chiarella Vitaliano,Chiarusi Tommaso,Circella Marco, Cocimano Rosanna,Coelho Joao,Coleiro Alexis,Molla Marta Colomer,Coniglione Rosa,Coyle Paschal, Creusot Alexandre,Cuttone Giacomo,D'Onofrio Antonio, Dallier Richard,de Jong Maarten,de Jong Paul,De Palma Mauro,de Wasseige Gwenhaël, de Wolf Els,Di Palma Irene,Diaz Antonio,Diego-Tortosa Dídac,Distefano Carla, Domi Alba, Donà Roberto, Donzaud Corinne,Dornic Damien, Dörr Manuel, Drouhin Doriane,Eberl Thomas,Bojaddaini Imad El, Elsaesser Dominik,Enzenhöfer Alexander,Fermani Paolo, Ferrara Giovanna,Filipovic Miroslav, Filippini Francesco, Fusco Luigi Antonio, Gabella Omar, Gal Tamas,Soto Alfonso Andres Garcia,Garufi Fabio, Gatelet Yoann,Geißelbrecht Nicole,Gialanella Lucio,Giorgio Emidio,Gozzini Sara Rebecca, Gracia Rodrigo,Graf Kay,Grasso Dario, Grella Giuseppe, Guidi Carlo,Hallmann Steffen,Hamdaoui Hassane, Heijboer Aart,Hekalo Amar,Hernandez-Rey Juan-Jose, Hofestädt Jannik,Huang Feifei,Ibnsalih Walid Idrissi, Illuminati Giulia,James Clancy,Jung Bouke Jisse,Kadler Matthias,Kalaczyński Piotr, Kalekin Oleg,Katz Uli,Chowdhury Nafis Rezwan Khan,Kistauri Giorgi,Koffeman Els, Kooijman Paul,Kouchner Antoine, Kreter Michael,Kulikovskiy Vladimir, Lahmann Robert,Larosa Giuseppina, Breton Remy Le,Leonardi Ornella,Leone Francesco, Leonora Emanuele,Levi Giuseppe,Lincetto Massimiliano, Clark Miles Lindsey, Lipreau Thomas,Lonardo Alessandro,Longhitano Fabio, Coto Daniel Lopez, Maderer Lukas,Mańczak Jerzy,Mannheim Karl, Margiotta Annarita,Marinelli Antonio, Markou Christos, Martin Lilian,Martínez-Mora Juan Antonio,Martini Agnese,Marzaioli Fabio,Mastroianni Stefano, Mazzou Safaa,Melis Karel,Miele Gennaro,Migliozzi Pasquale, Migneco Emilio, Mijakowski Piotr,Palacios Luis Salvador Miranda,Mollo Carlos Maximiliano, Morganti Mauro,Moser Michael, Moussa Abdelilah, Muller Rasa, Musumeci Mario, Nauta Lodewijk,Navas Sergio, Nicolau Carlo Alessandro,Fearraigh Brían Ó,Organokov Mukharbek,Orlando Angelo,Papalashvili Gogita, Papaleo Riccardo, Pastore Cosimo,Paun Alice, Pavalas Gabriela Emilia,Pellegrino Carmelo, Perrin-Terrin Mathieu,Piattelli Paolo, Pieterse Camiel, Pikounis Konstantinos,Pisanti Ofelia, Poirè Chiara,Popa Vlad,Post Maarten,Pradier Thierry, Pühlhofer Gerd, Pulvirenti Sara, Rabyang Omphile,Raffaelli Fabrizio,Randazzo Nunzio,Rapicavoli Antonio,Razzaque Soebur,Real Diego, Reck Stefan,Riccobene Giorgio, Richer Marc, Rivoire Stephane,Rovelli Alberto,Greus Francisco Salesa,Samtleben Dorothea Franziska Elisabeth,Losa Agustín Sánchez,Sanguineti Matteo,Santangelo Andrea,Santonocito Domenico, Sapienza Piera, Schnabel Jutta, Seneca Jordan, Sgura Irene, Shanidze Rezo,Sharma Ankur,Simeone Francesco, Sinopoulou Anna, Spisso Bernardino,Spurio Maurizio, Stavropoulos Dimitris, Steijger Jos, Stellacci Simona Maria, Taiuti Mauro,Tayalati Yahya, Tenllado Enrique,Thakore Tarak,Tingay Steven, Tzamariudaki Ekaterini, Tzanetatos Dimitrios,Berg Ad van den, van der Knaap Frits,van Eijk Daan,Van Elewyck Véronique,van Haren Hans,Vannoye Godefroy, Vasileiadis George, Versari Federico,Viola Salvatore,Vivolo Daniele,Wilms Joern, Wojaczyński Rafał, Zaborov Dmitry,Zavatarelli Sandra,Zegarelli Angela, Zito Daniele,Zornoza Juan-de-Dios,Zúñiga Juan, Zywucka Natalia

JOURNAL OF INSTRUMENTATION(2020)

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摘要
The KM3NeT research infrastructure is currently under construction at two locations in the Mediterranean Sea. The KM3NeT/ORCA water-Cherenkov neutrino detector off the French coast will instrument several megatons of seawater with photosensors. Its main objective is the determination of the neutrino mass ordering. This work aims at demonstrating the general applicability of deep convolutional neural networks to neutrino telescopes, using simulated datasets for the KM3NeT/ORCA detector as an example. To this end, the networks are employed to achieve reconstruction and classification tasks that constitute an alternative to the analysis pipeline presented for KM3NeT/ORCA in the KM3NeT Letter of Intent. They are used to infer event reconstruction estimates for the energy, the direction, and the interaction point of incident neutrinos. The spatial distribution of Cherenkov light generated by charged particles induced in neutrino interactions is classified as shower- or track-like, and the main background processes associated with the detection of atmospheric neutrinos are recognized. Performance comparisons to machine-learning classification and maximum-likelihood reconstruction algorithms previously developed for KM3NeT/ORCA are provided. It is shown that this application of deep convolutional neural networks to simulated datasets for a large-volume neutrino telescope yields competitive reconstruction results and performance improvements with respect to classical approaches.
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关键词
Cherenkov detectors,Large detector systems for particle and astroparticle physics,Neutrino detectors,Performance of High Energy Physics Detectors
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