2023
DOI: 10.3390/jne4030032
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SNM Radiation Signature Classification Using Different Semi-Supervised Machine Learning Models

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. Howev… Show more

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