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Machine Learning Approaches for Nuclear Material Accounting Data from Irradiation and Reprocessing...

Publication Type
Conference Paper
Journal Name
Proceedings of the Institute of Nuclear Materials Management 2020
Book Title
Proceedings of the INMM 61st Annual Meeting
Publication Date
Page Number
1379
Issue
2020
Conference Name
61st INMM Annual Meeting
Conference Location
Virtual Meeting (no city), Tennessee, United States of America
Conference Sponsor
Institute of Nuclear Materials Management
Conference Date
-

We are currently exploring data analysis methods for their ability to strengthen the synthesis and evaluation of information generated within domestic and international safeguard regimes. Safeguard data typically includes rich heterogenous datasets amenable to advanced data analytics methods, such as machine learning. We have converted transactional data containing both numerical and categorical attributes from a domestic nuclear material control and accountability (NMC&A) system into a low-dimensional numerical structure via linear principal component analysis. This data representation allows for global structure discovery via cluster analysis, which can characterize the typical behavior of each of the primary types of transaction events. Furthermore, the structure of the top principal components captures the “typical behavior” of the data and is thus amenable to anomaly detection through statistical hypothesis testing. We explored this capability by generating erroneous permutations of the data and computing the Q-residual quantity increase associated with the information loss when these data are projected into the low-dimensional principal component analysis space representative of typical transactions.Future work will focus on identifying data transformations (e.g., graph networks) that more closely align with the inherent structure of these transactions to explain more salient information and disambiguate the underlying nuclear process—in this case, irradiation and reprocessing—from artifacts of NMC&A system transactional record keeping data.