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Title: Evaluating Safeguards Statistical Assumptions via Stochastic Simulation

Journal Article · · Journal of Nuclear Materials Management
OSTI ID:1812491
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  1. International Atomic Energy Agency (IAEA), Vienna (Austria)
  2. Brookhaven National Lab. (BNL), Upton, NY (United States)
  3. Univ. of Massachusetts, Lowell, MA (United States)
  4. Pacific Northwest National Lab. (PNNL), Richland, WA (United States)

Herein, the authors built and tested a stochastic simulation to estimate achieved detection probabilities (DPs) on a stratum basis, over a tailorable range of diverted amounts from 0 to 2 SQ, using typical IAEA inspection data: i.e., SQ in stratum, number of items, number of gross/partial/bias defect measurements conducted, and realistic relative standard deviation (RSD) values for typical IAEA verification measurements. For bulk strata, the model calculates achieved DP at 0.01 SQ diversion increments; for item strata, the model calculates DP using the smallest realistic diversion increment (e.g., a plate, pin, or coupon). After successfully benchmarking against IAEA deterministic models, the simulation was used to test the sensitivity of DP to certain standard assumptions and selected input parameters. First, the equal defect assumption was tested; the results suggest significant complexity in the effectiveness of partial defect measurements. Next, the authors explored the sensitivity of DP to the assumed RSD of attribute tests. Then, the authors compared non-normal models for instrument performance (e.g., logistic, step, or arbitrary functions) to the typical results from a normal distribution (characterized by RSD). This last comparison was supplemented with experimentally derived performance data for an HM-5. The HM-5 was used to make enrichment measurements on both LEU and HEU MTR fuel elements as plates were removed, and the results fit with logistic and step curves and applied in the simulation. These stochastic DP results were compared to DP estimates from a deterministic model assuming a normal curve and typical RSD, yielding insights that could improve effectiveness in the field. These early results illustrate the potential of stochastic models to better understand achieved DP and to improve safeguards effectiveness.

Research Organization:
Brookhaven National Lab. (BNL), Upton, NY (United States)
Sponsoring Organization:
USDOE National Nuclear Security Administration (NNSA), Office of Defense Nuclear Nonproliferation
Grant/Contract Number:
SC0012704
OSTI ID:
1812491
Report Number(s):
BNL-221946-2021-JAAM; TRN: US2213247
Journal Information:
Journal of Nuclear Materials Management, Vol. NA, Issue NA; Conference: 2021 Joint INMM-ESARDA Annual Meeting, (Held Virtually), 23 Aug.-1 Sept. 2021; ISSN 0893-6188
Publisher:
Institute of Nuclear Materials ManagementCopyright Statement
Country of Publication:
United States
Language:
English