14–24 Jul 2025
CICG - International Conference Centre - Geneva, Switzerland
Europe/Zurich timezone
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Open-source, Cross-detector Comparisons for Machine Learning Reconstructions in Neutrino Telescopes

Not scheduled
20m
Level -1 & 0

Level -1 & 0

Poster Neutrino Astronomy & Physics PO-2

Speaker

Jeffrey Lazar

Description

here are currently many Cherenkov neutrino telescopes being deployed and designed across the world. These detectors are exploring new optical sensors and geometric configurations to maximize their physics goals. Alongside detector R&D, machine learning (ML) has become established as a promising avenue for reconstructions in these detectors; however, there has not been a consistent comparison of the performance of these proposed detector geometries or existing ML-based reconstruction methods. This contribution presents a recent effort to simulate geometries comparable to existing and proposed telescopes using Prometheus, an open-source simulation library. On these datasets we compare reconstruction performance for ML-based techniques using the open-source GraphNeT ML library. We will present the simulation sets and relative performance of each geometry across several reconstructed quantities, and summarize what this can teach us about detector design and ML-based reconstruction methods.

Authors

Arturo Llorente Anaya Aske Luja Lehmann Rosted (University of Copenhagen (DK)) Ivan MozunMateo Jeffrey Lazar Jorge Prado (KM3Net) Philip Weigel (Massachusetts Institute of Technology) Rasmus Ørsøe Dr Stephan Meighen-Berger (The University of Melbourne)

Presentation materials

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