17–24 Jul 2024
Prague
Europe/Prague timezone

Advancing neutrino interaction reconstruction: a deep learning strategy in highly-segmented dense detectors

20 Jul 2024, 08:30
17m
Club A

Club A

Parallel session talk 14. Computing, AI and Data Handling Computing and Data handling

Speaker

Dr Saul Alonso Monsalve (ETH Zurich)

Description

Deep learning methods are becoming indispensable in the data analysis of particle physics experiments, with current neutrino studies demonstrating their superiority over traditional tools in various domains, particularly in identifying particles produced by neutrino interactions and fitting their trajectories. This talk will showcase a comprehensive reconstruction strategy of the neutrino interaction final state employing advanced deep learning within highly-segmented dense detectors. The challenges addressed range from mitigating noise from geometrical detector ambiguities to accurately decomposing images of overlapping particle signatures in the proximity of the neutrino interaction vertex and inferring their kinematic parameters. The presented strategy leverages state-of-the-art algorithms, including transformers and generative models, with the potential to significantly enhance the sensitivity of future physics measurements.

Alternate track 02. Neutrino Physics
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Primary author

Dr Saul Alonso Monsalve (ETH Zurich)

Presentation materials