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IMPACT OF CORRELATED DATA IN VALIDATION PROCEDURES

机译:相关数据在验证程序中的影响

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The increasing demand on accuracy of criticality calculations leads to the question, how to treat correlated data of benchmark experiments correctly. Correlations in the process of validation arise for example if a configuration in a series of experiments shares certain components, e.g. fuel rods. Traditional methods of code validation do not treat correlations explicitly, but give a more conservative estimation of the bias. Including correlations can lead to a more precise estimation. In the work at hand, a method is discussed based on Bayes theorem to include correlations in the experimental data when estimating an application case k_(ef)ff. After a short introduction to the applied method and the demonstration of the general capability of it to predict the K_(eff) correctly, it is shown how the calculated Keff of an application case depends on correlations in experimental data for a simple Toy Model. The impact of ignoring correlations and taking to account lower and higher correlations is shown and discussed. Further results are shown using a database of correlated experimental data from the International Handbook of Criticality Safety Experiments to estimate the bias of two application cases. The experiments were chosen following the suggestion of the OECD/NEA EGUACSA Benchmark phase IV and consists of 21 experiments from the LEU-COMP-THERM series 007 and 039. With the extracted data results the calculated keff values of the application cases are shown and discussed for different examples of correlations. The calculations were done by applying Monte-Carlo sampling methods with the GRS tool SUnCISTT, using ORNL's SCALE 6.1.2. This work discusses a possible way of treating correlations in the recalculation of critical experiments to get a more precise bias estimation of the used code system. It will be shown, that the presented method is capable to treat similarities in experimental setups of data used to calculate the bias correctly, independent of the size of similarities. The presented method is in principle capable of assessing regimes with little experimental data to estimate a bias.
机译:对临界计算准确性的需求越来越大,这导致了问题,如何正确处理基准实验的相关数据。例如,如果一系列实验中的配置共享某些组件,则会出现验证过程中的相关性,例如,燃料棒。传统的代码验证方法不会明确处理相关性,但提供更保守的偏差估计。包括相关性可能导致更精确的估计。在手头的工作中,基于贝叶斯定理讨论了一种方法,以包括在估计应用案例K_(EF)FF时在实验数据中的相关性。在对应用方法简要介绍和它的一般能力来预测k_(eff)之后,显示了计算出的应用案例的CoSff如何取决于简单玩具模型的实验数据中的相关性。显示并讨论了忽略相关性和考虑较低和更高的相关性的影响。示出了使用来自国际手册的相关实验数据数据库显示了来自临界安全实验的国际手册的数据库,以估计两个应用程序案例的偏差。在OECD / NEA EGUACSA基准阶段IV的建议之后选择实验,并由来自Leu-Comp-Therm Series 007和039的21个实验组成。随着提取的数据结果,显示并讨论了申请表的计算的Keff值对于相关的相关例子。通过使用ORNL的标准6.1.2将Monte-Carlo采样方法应用Monte-Carlo采样方法使用Monte-Carlo采样方法进行。这项工作讨论了治疗重新计算关键实验中的相关性的可能方法,以获得使用的代码系统更精确的偏差估计。结果表明,所示的方法能够在用于计算偏差的数据的实验设置中处理用于计算偏差的数据的相似性,与相似度的尺寸无关。本方法原则上能够评估具有少量实验数据的制度来估计偏差。

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