Academic Journal

Classification of electron and muon neutrino events for the ESSνSB near water Cherenkov detector using Graph Neural Networks

Bibliographic Details
Title: Classification of electron and muon neutrino events for the ESSνSB near water Cherenkov detector using Graph Neural Networks
Authors: Aguilar, J., Zormpa, O., Bolling, B., Burgman, A., Carlile, C. J., Cederkall, J., Christiansen, P., Collins, M., Danared, H., Eshraqi, M., Iversen, K. E., Lindroos, M., Park, J., et al.
Contributors: Lund University, Faculty of Science, Department of Physics, Lunds universitet, Naturvetenskapliga fakulteten, Fysiska institutionen, Originator, Lund University, Faculty of Science, Department of Physics, Astrophysics, Lunds universitet, Naturvetenskapliga fakulteten, Fysiska institutionen, Astrofysik, Originator, Lund University, Faculty of Science, Department of Physics, Particle and nuclear physics, Lunds universitet, Naturvetenskapliga fakulteten, Fysiska institutionen, Partikel- och kärnfysik, Originator
Source: Journal of Instrumentation. 20(8)
Subject Terms: Natural Sciences, Physical Sciences, Subatomic Physics, Naturvetenskap, Fysik, Subatomär fysik
Description: In the effort to obtain a precise measurement of leptonic CP-violation with the ESSνSB experiment, accurate and fast reconstruction of detector events plays a pivotal role. In this work, we examine the possibility of replacing the currently proposed likelihood-based reconstruction method with an approach based on Graph Neural Networks (GNNs). As the likelihood-based reconstruction method is reasonably accurate but computationally expensive, one of the benefits of a Machine Learning (ML) based method is enabling fast event reconstruction in the detector development phase, allowing for easier investigation of the effects of changes to the detector design. Focusing on classification of flavour and interaction type in muon and electron events and muon- and electron neutrino interaction events, we demonstrate that the GNN reconstructs events with greater accuracy than the likelihood method for events with greater complexity, and with increased speed for all types of events. The GNN flavour classification of neutrino interaction events results in a true positive rate of 85.87 % (57.90 %) for muon (electron) neutrinos, compared to 35.55 % (0.21 %) for the likelihood-based method with identical constraints on the false positive rate, while the reconstruction speed is increased by a factor of 104. Additionally, we investigate the key factors impacting reconstruction performance, and demonstrate how separation of events by pion production using another GNN classifier can benefit flavour classification.
Access URL: https://doi.org/10.1088/1748-0221/20/08/P08030
Database: SwePub
Description
ISSN:17480221
DOI:10.1088/1748-0221/20/08/P08030