Data Assimilation using Non-invasive Monte Carlo Sensitivity Analysis of Reactor Kinetics Parameters [Slides]

N. Kleedtke, J. Hutchinson, T. Cutler, I. Michaud, M. Rising, M. Hua, J. Alwin, M. Grosskopf, S. V. Vander Wiel, D. Neudecker, N. Thompson
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引用次数: 1

Abstract

Accurately predicting the criticality of an experiment before interacting with the experimental components is very important for criticality safety. Radiation transport software can be utilized to calculate the effective neutron multiplication factor of a nuclear system. Because of the integral nature of the effective neutron multiplication factor, the value calculated contains various sources of nuclear-data induced uncertainty. The sensitivity analysis and data assimilation technique presented in this paper exhibit one possible method of identifying and reducing the effective neutron multiplication factor nuclear-data induced uncertainty. The results presented in this work show that it is possible to use relative sensitivity coefficients of the prompt neutron decay constant and the effective delayed neutron fraction to 239Pu nuclear data to reduce nuclear-data induced uncertainties in the effective neutron ultiplication factor. This work has been utilized by members of the Los Alamos National Laboratory project EUCLID (Experiments Underpinned by Computational Learning for Improvements in Nuclear Data) for optimally designing a new experiment, which will be used to reduce compensating errors in 239Pu nuclear data.
基于非侵入式蒙特卡罗灵敏度分析的数据同化反应器动力学参数[幻灯片]
在与实验元件相互作用之前准确预测实验的临界状态,对于临界安全至关重要。利用辐射输运软件可以计算核系统的有效中子倍增系数。由于有效中子倍增因子的积分性质,计算的值包含了各种核数据不确定性的来源。本文提出的灵敏度分析和数据同化技术为识别和降低有效中子增殖因子核数据诱导不确定性提供了一种可能的方法。本文的研究结果表明,可以利用提示中子衰变常数和有效延迟中子分数对239Pu核数据的相对灵敏度系数来减少有效中子增殖因子中核数据引起的不确定性。这项工作已被洛斯阿拉莫斯国家实验室项目EUCLID(以计算学习为基础的核数据改进实验)的成员用于优化设计一个新的实验,该实验将用于减少239Pu核数据中的补偿误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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