Two-Stage Gamma-Neutron Source Classification in Water Cherenkov Detectors: Energy Threshold Screening and Machine Learning Pulse Analysis
Alejandro N\'u\~nez-Selin, Iv\'an Sidelnik, Christian Sarmiento-Cano, Hern\'an Asorey, Luis A. N\'u\~nez

TL;DR
This paper introduces a two-stage classification method combining physics-based energy thresholding and machine learning pulse analysis to distinguish gamma and neutron sources in water Cherenkov detectors, improving detection accuracy.
Contribution
It presents a novel hybrid framework that integrates energy threshold screening with machine learning for enhanced gamma-neutron discrimination in water Cherenkov detectors.
Findings
Achieved 81.6% classification accuracy.
Identified neutron detection threshold at 2.62 MeV.
Developed an interpretable, scalable classification pipeline.
Abstract
Water Cherenkov detectors offer a robust and economical solution for real-time radiation monitoring by detecting Cherenkov light from charged particles moving faster than light in water. This work presents a novel two-stage classification framework for gamma-neutron discrimination: an initial physics-based energy threshold filters unambiguous low-energy gamma sources, followed by a machine learning ensemble that resolves ambiguities at higher energies. The detector response was characterized using Co (1.17/1.33~MeV), Cs (0.66~MeV), and a shielded AmBe source, with lead, paraffin, and cadmium shielding employed to isolate neutron and gamma interactions. Energy calibration established a linear ADU to MeV conversion (), enabling identification of a neutron detection threshold at ~MeV via a significance analysis. Stage one…
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Taxonomy
TopicsRadiation Detection and Scintillator Technologies · Nuclear Physics and Applications · Radioactive contamination and transfer
