Machine learning for the analysis of 2D radioxenon beta gamma spectra

Clandestine nuclear testing can be detected at a standoff distance using radioxenon beta-gamma analysis. International treaty monitoring organizations depend, in part, upon the activity ratios of various radioxenon types to determine if collected samples are the result of a weapons test or a peacefu...

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Veröffentlicht in:Journal of radioanalytical and nuclear chemistry 2021-02, Vol.327 (2), p.857-867
Hauptverfasser: Armstrong, Jordan, Carpency, Thienbao, Scoville, James, Sesler, Jefferson, Hall, Robert
Format: Artikel
Sprache:eng
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Zusammenfassung:Clandestine nuclear testing can be detected at a standoff distance using radioxenon beta-gamma analysis. International treaty monitoring organizations depend, in part, upon the activity ratios of various radioxenon types to determine if collected samples are the result of a weapons test or a peaceful purpose such as energy or medical isotope production. However, the currently deployed radioxenon analysis method makes assumptions about the location of energy coincidence counts on a beta-gamma spectrum, such that this method is particularly sensitive to measurement or calibration errors. We propose a machine learning method instead. By exposing a computer algorithm to many representative examples, the resultant computer model detects patterns in the data without making additional assumptions. Both a classification model predicting which radioisotopes are present and a regression model predicting concentrations of the radioisotopes are tested. This work is a proof-of-concept that machine learning can be effectively applied to radioxenon beta-gamma analysis.
ISSN:0236-5731
1588-2780
DOI:10.1007/s10967-020-07533-7