Within the safeguards regime, spent fuel monitoring
has long been implemented to verify facility declarations.
As the number and size of facilities under safeguards
increase, so does time spent on highly repetitive spent fuel
monitoring, making it an area ripe for automation.
However, due to international proliferation concerns,
automation must be robust and provide estimates of
confidence in the results. Cerenkov Viewing Devices
(CVDs) are widely implemented for spent fuel monitoring,
but their single defect detection ability is limited. In this
research, we augment CVD measurements with Gamma
Emission Tomographer (GET) data in order to increase
defect detection above the level of either detector method
individually. Here we present the development and
implementation of a Bayesian data fusion algorithm for
classification of individual fuel rods as defects or nondefects
across two burn-up and cooling time scenarios.
Results show a nearly 75% single defect detection
capability with a 10% false positive rate for 17x17 PWR
fuel assemblies. The Bayesian framework also enables
calculation of uncertainties associated with each
classification. These results also show a moderate ability
to generalize across both high burn-up and short cooling
times as well as low burn-up and long cooling times.
Revised: January 15, 2020 |
Published: September 30, 2019
Citation
Brayfindley E., R.C. Smith, J. Mattingly, and R.T. Brigantic. 2019.AUTOMATING SPENT FUEL DEFECT DETECTION WITH FUSED DCVD AND GET DATA. In International Nuclear Fuel Cycle Conference/Light Water Reactor Fuel Performance Conference (Global/Top Fuel 2019), September 22-26, 2019, Seattle, WA. La Grange Park, Illinois:American Nuclear Society.PNNL-SA-143737.