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arxiv: 2605.31391 · v1 · pith:GHL5YRZ7new · submitted 2026-05-29 · ⚛️ physics.ins-det · cs.LG· hep-ex

Deep-learning-based low-energy trigger algorithms for the Hyper-Kamiokande experiment

classification ⚛️ physics.ins-det cs.LGhep-ex
keywords triggeralgorithmsbelowdeep-learning-baseddetectorefficiencieshyper-kamiokandelow-energy
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Modern machine learning techniques have become increasingly important in particle physics because of their powerful pattern-recognition capabilities, including in real-time data acquisition where stringent runtime constraints apply. This paper details the performance of deep-learning-based trigger algorithms for a large water Cherenkov detector such as Hyper-Kamiokande aimed at low-energy neutrino events (below 7 MeV). The performance of custom neural-network supervised classifiers is shown alongside two anomaly-detection approaches trained solely on detector noise: a pure autoencoder and an energy-based model based on Manifold Projection--Diffusion Recovery (MPDR). The supervised model shows signal identification efficiencies of 76.7% for single electrons of 3 MeV kinetic energy, significantly exceeding signal efficiencies obtained from a traditional hit-count-based trigger of 26.4%, as does the MPDR approach with 31.8%. Runtime evaluations on GPU yield per-window inference latencies well below the millisecond scale, indicating that real-time operation is feasible.

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