Abstract

Nuclear data, especially fission yields, create uncertainties in the predicted concentrations of fission products in spent fuel which can exceed engineering target accuracies. Herein, we present a new framework that extends data assimilation methods to burnup simulations by using post-irradiation examination experiments. The adjusted fission yields lowered the bias and reduced the uncertainty of the simulations. Our approach adjusts the model parameters of the code GEF. We compare the BFMC and MOCABA approaches to data assimilation, focusing especially on the effects of the non-normality of GEF’s fission yields. In the application that we present, the best data assimilation framework decreased the average bias of the simulations from 26% to 14%. The average relative standard deviation decreased from 21% to 14%. The GEF fission yields after data assimilation agreed better with those in JEFF3.3. For Pu-239 thermal fission, the average relative difference from JEFF3.3 was 16% before data assimilation and after it was 12%. For the standard deviations of the fission yields, GEF’s were 100% larger than JEFF3.3’s before data assimilation and after were only 4% larger. The inconsistency of the integral data had an important effect on MOCABA, as shown with the Marginal Likelihood Optimization method. When the method was not applied, MOCABA’s adjusted fission yields worsened the bias of the simulations by 30%. BFMC showed that it inherently accounted for this inconsistency. Applying Marginal Likelihood Optimization with BFMC gave a 2% lower bias compared to not applying it, but the results were more poorly converged.

Highlights

  • Among nuclear data, fission yields (FYs) are very important for burn-up [1,2,3,4,5], decay heat [6,7], and nuclear waste management simulations [8]

  • We present the adjustments of the GEF model parameters made with Monte Carlo Bayesian Analysis (MOCABA) and Backward Forward Monte Carlo (BFMC), the LWR-Phase II (LWR-PII) post-irradiation examinations (PIE) data, and CASMO-5M models

  • There, the GEF FYs are compared to the FYs of JEFF3.3

Read more

Summary

Introduction

Fission yields (FYs) are very important for burn-up [1,2,3,4,5], decay heat [6,7], and nuclear waste management simulations [8] These simulations need to accurately predict the concentration of fission products (FPs) in spent fuel, which requires reliable FY data with high quality covariances. A large amount of research was devoted to proposing and testing methods to generate missing FY covariance data [9,10,11] One such method uses the code GEF [12,13,14,15]. It is important to consider FYs in DA with PIE data because the FPs are highly sensitive to FYs and FYs can have large uncertainties

Methods
Results
Conclusion
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call