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.

218 Single-Detector Cosmic-Ray Muon Identification in Plastic Scintillators Using Machine Learning

27 May 2026, 10:30
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

Hai Vo

Description

Cosmic rays at ground level are dominated by high-energy muons and are traditionally identified using coincidence techniques that require multiple detectors. In this work, a machine-learning-based approach is proposed for single-detector cosmic-ray muon identification using a plastic scintillation detector. Waveform data were acquired from gamma-ray events obtained using standard gamma-emitting sources and from cosmic-ray muons identified through a conventional coincidence setup for labeling purposes. The signals were digitized using a fast waveform digitizer and directly used as inputs to a machine learning model.
Machine learning was employed to discriminate cosmic-ray muons from gamma background based on waveform characteristics. When applied to background radiation measurements, the trained model successfully extracted the cosmic-ray muon component and reproduced the characteristic muon energy deposition peak in the plastic scintillator, consistent with expectations for minimum ionizing particles. The machine-learning-based results show good agreement with those obtained using traditional coincidence techniques. These results demonstrate that machine learning enables reliable cosmic-ray muon identification using a single plastic scintillation detector, offering a simplified and cost-effective alternative to hardware-intensive coincidence systems for radiation monitoring and cosmic-ray studies.

Minioral Yes
IEEE Member Yes
Are you a student? No

Authors

Hai Vo Huu Ngan Thy Truong Tri Toan Phuc Nguyen

Presentation materials

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