Deep-Learning-Based Kinematic Reconstruction for DUNE
Junze Liu, Jordan Ott, Julian Collado, Benjamin Jargowsky, Wenjie Wu,, Jianming Bian, Pierre Baldi

TL;DR
This paper introduces CNN-based methods for reconstructing neutrino interaction kinematics in DUNE's liquid argon TPC detectors, significantly improving accuracy over traditional techniques.
Contribution
Develops and demonstrates two novel CNN-based approaches for full kinematic reconstruction of neutrino interactions in DUNE, advancing AI capabilities in neutrino physics.
Findings
CNN methods outperform traditional reconstruction techniques
Significant improvements in neutrino energy and particle momentum estimation
Enhanced accuracy in final state particle direction reconstruction
Abstract
In the framework of three-active-neutrino mixing, the charge parity phase, the neutrino mass ordering, and the octant of remain unknown. The Deep Underground Neutrino Experiment (DUNE) is a next-generation long-baseline neutrino oscillation experiment, which aims to address these questions by measuring the oscillation patterns of and over a range of energies spanning the first and second oscillation maxima. DUNE far detector modules are based on liquid argon TPC (LArTPC) technology. A LArTPC offers excellent spatial resolution, high neutrino detection efficiency, and superb background rejection, while reconstruction in LArTPC is challenging. Deep learning methods, in particular, Convolutional Neural Networks (CNNs), have demonstrated success in classification problems such as particle identification in DUNE and other neutrino…
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Taxonomy
TopicsNeutrino Physics Research · Astrophysics and Cosmic Phenomena · Particle physics theoretical and experimental studies
