English

SINAPSE: A lightweight deep learning framework for accurate and explainable neutron-$\gamma$ discrimination

Instrumentation and Detectors 2026-05-14 v1 Data Analysis, Statistics and Probability

Abstract

Traditionally, neutron-γ\gamma discrimination in organic scintillators relies on techniques such as time-of-flight (ToF) selection and pulse-shape discrimination (PSD). However, particle identification through graphical cuts remains challenging in the low-charge regime due to poor signal-to-noise ratios (SNR). In this work, we propose SINAPSE, a lightweight deep learning framework for accurate and explainable neutron-γ\gamma discrimination in the low-charge regime. The framework employs a dual-branch architecture that combines a 1-dimensional convolutional autoencoder for waveform denoising with a classifier for particle identification. Random augmentations are applied to high-SNR waveforms to simulate low-charge conditions, enabling robust extrapolation into regimes where conventional PSD labels are unreliable. We show that SINAPSE achieves superior denoising performance compared to conventional digital signal processing techniques, and outputs well-calibrated probabilities, consistent with traditional graphical cuts. Finally, we apply SHAP (SHapley Additive exPlanations) values to show that model decisions are driven by physically meaningful pulse-shape features, confirming consistency with established PSD principles.

Keywords

Cite

@article{arxiv.2605.13627,
  title  = {SINAPSE: A lightweight deep learning framework for accurate and explainable neutron-$\gamma$ discrimination},
  author = {Thomas Carreau and Adrien Matta and Owen Syrett and Benoît Mauss and David Etasse and Audrey Chatillon and Cyril Lenain and Pierre Morfouace and Julien Taieb and David Regnier and Patrick Copp and Matthew Devlin and Charlène Surault and Jason Surbrook},
  journal= {arXiv preprint arXiv:2605.13627},
  year   = {2026}
}

Comments

13 pages, 13 figures