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Modeling of critical experiments and its impact on integral covariance matrices and correlation coefficients

机译:关键实验的建模及其对积分协方差矩阵和相关系数的影响

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In this manuscript we study the modeling of experimental data and its impact on the resulting integral experimental covariance and correlation matrices. By investigating a set of three low enriched and water moderated UO2 fuel rod arrays we found that modeling the same set of data with different, yet reasonable assumptions concerning the fuel rod composition and its geometric properties leads to significantly different covariance matrices or correlation coefficients. Following a Monte Carlo Sampling approach, we show for nine different modeling assumptions the corresponding correlation coefficients and sensitivity profiles for each pair of the effective neutron multiplication factor k(eff). Within the 95% confidence interval the correlation coefficients vary from 0 to 1, depending on the modeling assumptions. Our findings show that the choice of modeling can have a huge impact on integral experimental covariance matrices. When the latter are used in a validation procedure to derive a bias, this procedure can be affected by the choice of modeling assumptions, too. The correct consideration of correlated data seems to be inevitable if the experimental data in a validation procedure is limited or one cannot rely on a sufficient number of uncorrelated data sets, e.g. from different laboratories using different setups. (C) 2016 Elsevier Ltd. All rights reserved.
机译:在这份手稿中,我们研究了实验数据的建模及其对所得积分实验协方差和相关矩阵的影响。通过研究一组三个低浓和水适度的UO2燃料棒阵列,我们发现,使用关于燃料棒成分及其几何特性的不同但合理的假设对同一组数据进行建模会导致显着不同的协方差矩阵或相关系数。遵循蒙特卡洛采样方法,我们针对九种不同的建模假设,展示了每对有效中子倍增因子k(eff)的相应相关系数和灵敏度曲线。在95%的置信区间内,相关系数取决于建模假设,从0到1不等。我们的发现表明,建模的选择可能会对积分实验协方差矩阵产生巨大影响。当在验证过程中使用后者来得出偏差时,该过程也会受到建模假设选择的影响。如果验证程序中的实验数据受到限制,或者不能依靠足够数量的不相关数据集(例如,验证数据),则正确考虑相关数据似乎是不可避免的。来自不同实验室的不同设置。 (C)2016 Elsevier Ltd.保留所有权利。

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