Monte Carlo uncertainty propagation approaches in ADS burn-up calculations

Annals of Nuclear Energy(2013)

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摘要
In activation calculations, there are several approaches to quantify uncertainties: deterministic by means of sensitivity analysis, and stochastic by means of Monte Carlo. Here, two different Monte Carlo approaches for nuclear data uncertainty are presented: the first one is the Total Monte Carlo (TMC). The second one is by means of a Monte Carlo sampling of the covariance information included in the nuclear data libraries to propagate these uncertainties throughout the activation calculations. This last approach is what we named Covariance Uncertainty Propagation, CUP. This work presents both approaches and their differences. Also, they are compared by means of an activation calculation, where the cross-section uncertainties of Pu-239 and Pu-241 are propagated in an ADS activation calculation. (C) 2012 Elsevier Ltd. All rights reserved.
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关键词
Uncertainty propagation,Monte Carlo,ADS,Burn-up,TMC,Covariance
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