[2025-01-18] For better promotion of the events, the categories in this system will be adjusted. For details, please refer to the announcement of this system. The link is https://indico-tdli.sjtu.edu.cn/news/1-warm-reminder-on-adjusting-indico-tdli-categories-indico

August 31, 2026 to September 5, 2026
Tsung-Dao Lee Institute
Asia/Shanghai timezone

Deep Learning for a Deep Detector: Neural Network Reconstruction at Hyper-Kamiokande

Not scheduled
20m
Tsung-Dao Lee Institute

Tsung-Dao Lee Institute

No.1 Lisuo Road, Pudong New District, Shanghai, 201210, China
Oral contribution WG6: Detector Physics

Speaker

Erwan Le Blévec (Laboratoire Leprince-Ringuet)

Description

NuFact 2026,
Tsung-Dao Lee Institute,
No.1 Lisuo Road, Pudong New District, Shanghai 201210, China
August 31, 2026 to September 5, 2026
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The Hyper-Kamiokande detector represents the next generation of neutrino observatories, following in the lineage of the Kamiokande and Super-Kamiokande experiments. With significantly enhanced sensitivity, Hyper-Kamiokande will support a diverse and ambitious physics program, including searches for proton decay, studies of solar neutrinos under non-standard interactions, and the potential first observation of leptonic CP violation. Designed to contain 260 kilotons of water and equipped with 20,000 photomultiplier tubes of 20 inches, the scale and complexity of Hyper-Kamiokande necessitate the development of advanced event reconstruction algorithms in order to fully exploit the detector performance and achieve the measurements with higher precision.

In this presentation, we explore how next-generation approaches from the field of machine learning — specifically, Deep Neural Networks — can enhance reconstruction performances. Particular emphasis will be placed on the designs of Convolutional Neural Networks and their non-euclidian extension, Graph Neural Networks, which both already demonstrate excellent results on several benchmarks such as particle identification or momentum reconstruction. A section will be devoted to the performance gains obtained by the use of the Transformers architecture as the network backbone, surpassing the current maximum likelihood reconstruction algorithm adapted from Super-Kamiokande.
Erwan Roger Le Blévec
PhD Student at Laboratoire Leprince-Ringuet & ILANCE

Primary author

Erwan Le Blévec (Laboratoire Leprince-Ringuet)

Presentation materials

There are no materials yet.