Frontiers in Nuclear Engineering (May 2024)

Inverse prediction of PuO2 processing conditions using Bayesian seemingly unrelated regression with functional data

  • Audrey Lamson McCombs,
  • Madeline Anne Stricklin,
  • Katherine Goode,
  • J. Gabriel Huerta,
  • Kurtis Shuler,
  • J. Derek Tucker,
  • Adah Zhang,
  • Lucas Sweet,
  • Daniel Ries

DOI
https://doi.org/10.3389/fnuen.2024.1331349
Journal volume & issue
Vol. 3

Abstract

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Over the past decade, a variety of innovative methodologies have been developed to better characterize the relationships between processing conditions and the physical, morphological, and chemical features of special nuclear material (SNM). Different processing conditions generate SNM products with different features, which are known as “signatures” because they are indicative of the processing conditions used to produce the material. These signatures can potentially allow a forensic analyst to determine which processes were used to produce the SNM and make inferences about where the material originated. This article investigates a statistical technique for relating processing conditions to the morphological features of PuO2 particles. We develop a Bayesian implementation of seemingly unrelated regression (SUR) to inverse-predict unknown PuO2 processing conditions from known PuO2 features. Model results from simulated data demonstrate the usefulness of the technique. Applied to empirical data from a bench-scale experiment specifically designed with inverse prediction in mind, our model successfully predicts nitric acid concentration, while results for Pu concentration and precipitation temperature were equivalent to a simple mean model. Our technique compliments other recent methodologies developed for forensic analysis of nuclear material and can be generalized across the field of chemometrics for application to other materials.

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