Improving PWR core simulations by Monte Carlo uncertainty analysis and Bayesian inference

被引:19
|
作者
Castro, E. [1 ,2 ]
Ahnert, C. [1 ]
Buss, O. [2 ]
Garcia-Herranz, N. [1 ]
Hoefer, A. [2 ]
Porsch, D. [2 ]
机构
[1] Univ Politecn Madrid, Dept Ingn Energet, C Jose Gutierrez Abascal 2, E-28006 Madrid, Spain
[2] AREVA GmbH, Paul Gossen Str 100, D-91052 Erlangen, Germany
关键词
Uncertainty analysis; Nuclear data; Monte Carlo methods; PWR core analysis; Bayesian inference; NUCLEAR-DATA; PROPAGATION; VALIDATION; CODE;
D O I
10.1016/j.anucene.2016.05.007
中图分类号
TL [原子能技术]; O571 [原子核物理学];
学科分类号
0827 ; 082701 ;
摘要
The Monte Carlo-based Bayesian inference model MOCABA is applied to the prediction of reactor operation parameters of a PWR nuclear power plant. In this non-perturbative frainework, high-dimensional covariance information describing the uncertainty of microscopic nuclear data is combined with measured reactor operation data in order to provide statistically sound, well founded uncertainty estimates of integral parameters, such as the boron letdown curve and the bumup-dependent reactor power distribution. The performance of this methodology is assessed in a blind test approach, where we use measurements of a given reactor cycle to improve the prediction of the subsequent cycle. As it turns out, the resulting improvement of the prediction quality is impressive. In particular, the prediction uncertainty of the boron letdown curve, which is of utmost importance for the planning of the reactor cycle length, can be reduced by one order of magnitude by including the boron concentration measurement information of the previous cycle in the analysis. Additionally, we present first results of non-perturbative nuclear-data updating and show that predictions obtained with the updated libraries are consistent with those induced by Bayesian inference applied directly to the integral observables. (C) 2016 Elsevier Ltd. All rights reserved.
引用
收藏
页码:148 / 156
页数:9
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