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SNM Radiation Signature Classification Using Different Semi-Supervised Machine Learning Models

Authors :
Jordan R. Stomps
Paul P. H. Wilson
Kenneth J. Dayman
Michael J. Willis
James M. Ghawaly
Daniel E. Archer
Source :
Journal of Nuclear Engineering, Vol 4, Iss 3, Pp 448-466 (2023)
Publication Year :
2023
Publisher :
MDPI AG, 2023.

Abstract

The timely detection of special nuclear material (SNM) transfers between nuclear facilities is an important monitoring objective in nuclear nonproliferation. Persistent monitoring enabled by successful detection and characterization of radiological material movements could greatly enhance the nuclear nonproliferation mission in a range of applications. Supervised machine learning can be used to signal detections when material is present if a model is trained on sufficient volumes of labeled measurements. However, the nuclear monitoring data needed to train robust machine learning models can be costly to label since radiation spectra may require strict scrutiny for characterization. Therefore, this work investigates the application of semi-supervised learning to utilize both labeled and unlabeled data. As a demonstration experiment, radiation measurements from sodium iodide (NaI) detectors are provided by the Multi-Informatics for Nuclear Operating Scenarios (MINOS) venture at Oak Ridge National Laboratory (ORNL) as sample data. Anomalous measurements are identified using a method of statistical hypothesis testing. After background estimation, an energy-dependent spectroscopic analysis is used to characterize an anomaly based on its radiation signatures. In the absence of ground-truth information, a labeling heuristic provides data necessary for training and testing machine learning models. Supervised logistic regression serves as a baseline to compare three semi-supervised machine learning models: co-training, label propagation, and a convolutional neural network (CNN). In each case, the semi-supervised models outperform logistic regression, suggesting that unlabeled data can be valuable when training and demonstrating value in semi-supervised nonproliferation implementations.

Details

Language :
English
ISSN :
26734362
Volume :
4
Issue :
3
Database :
Directory of Open Access Journals
Journal :
Journal of Nuclear Engineering
Publication Type :
Academic Journal
Accession number :
edsdoj.29a43967bdeb4baa88065c85e8652e66
Document Type :
article
Full Text :
https://doi.org/10.3390/jne4030032