25–29 May 2026
La Biodola - Isola d'Elba (Italy)
Europe/Rome timezone
NB: The submission deadline for the Student Paper Awards is Monday, 11 May.

75 An Initial Study of Neural-Network-Assisted Approaches for Drift Chamber Tracking

27 May 2026, 10:24
2m
Maria Luisa Room (Hotel Hermitage)

Maria Luisa Room

Hotel Hermitage

Mini Oral AI, Machine Learning, Real Time Simulation, Intelligent Signal Processing Mini Orals

Speaker

Mr Viet Nguyen (RIKEN Nishina Center)

Description

Drift chambers are widely used for charged-particle tracking in nuclear and high-energy physics experiments. Track reconstruction commonly involves combinatorial hit association followed by fitting. In experiments, additional noise enlarges the search space, leading to increased and unstable tracking runtime, a problem for (near-) real-time analysis. Motivated by this behavior, neural-network-assisted hit filtering is investigated to suppress noise and limit combinatorial effects in drift chamber tracking. Hits are represented as nodes in an event-wise graph and classified as true or noise using a graph-based neural network prior to track fitting. Using simulated data consistent with experimental hit multiplicities, the proposed filter achieves high classification accuracy and reduces noise by approximately a factor of 100, limiting the number of hit combinations passed to the track fitting stage. These results suggest that neural-network-assisted hit filtering may serve as a useful pre-processing step for controlling tracking runtime. As neural-network inference introduces computational overhead, the overall runtime impact depends on the noise level and the balance between inference cost and noise reduction.

Minioral Yes
IEEE Member No
Are you a student? No

Author

Mr Viet Nguyen (RIKEN Nishina Center)

Co-authors

Dr Claudio Santonastaso (RIKEN Nishina Center) Hidetada Baba Yuto Ichinohe

Presentation materials

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