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Statistical Foundation for Decision Making in Nuclear Safety-Related Problems Using Best Estimate Plus Uncertainty Analyses

机译:使用最佳估计加不确定度分析的核安全相关问题决策的统计基础

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摘要

The response of a complex physical system is often evaluated by a tolerance interval for a percentile of the distribution of a variable of interest that is estimated by best-estimate codes. This tolerance interval is used as a test statistic to make decisions about the behavior of the system in the context of the specific safety issue. The most common methods to determine such tolerance intervals are order statistics methods leading to the so-called "95/95" level of safety standard. The application of these methods is predicated on the assumption that the simulated responses are identical to those of an actual reactor under the postulated conditions. We present here a novel statistical framework [referred to as EVS (extreme value statistics) methodology], not relying on the above assumption, for deriving tolerance limits involving data selected from a population that is different from the population of interest. Such a situation arises when the unobservable population is being estimated by an imperfect code and imperfect input. This leads us to distinguishing between "true" system stochastic (aleatory) variables and those resulting from the safety codes (subject to epistemic uncertainty). Methods using Monte Carlo sampling or sensitivity analysis, order statistics, and EVS methods produce different solutions as a consequence of a difference in how the true values and data are distinguished. This difference ultimately leads to different test statistics that are used to solve a decision-making problem. Closed-form expressions for the EVS-based tolerance limits are derived for a large class of models representing complex systems. Problems, both analytical and using actual reactor operating data, are presented and solved. EVS results demonstrate substantial improvements in operational and safety margins when compared to results obtained from existing methods used in the nuclear industry.
机译:复杂物理系统的响应通常通过公差范围来评估,该公差范围是由最佳估计代码估计的关注变量分布的百分位数。该容差间隔用作测试统计信息,以在特定安全问题的范围内做出有关系统行为的决策。确定此类公差间隔的最常见方法是导致所谓的“ 95/95”安全标准等级的顺序统计方法。在假定的模拟条件下模拟响应与实际反应堆的响应相同的前提下,可以应用这些方法。我们在这里提出一种新颖的统计框架[称为EVS(极值统计)方法论],而不依赖于上述假设,以推导涉及从与目标人群不同的人群中选择的数据的容限。当通过不完美的代码和不完美的输入来估计不可观察的种群时,就会出现这种情况。这导致我们区分“真实的”系统随机(偶然)变量和由安全代码产生的变量(受认知不确定性的影响)。由于区分真实值和数据的方式不同,使用蒙特卡洛采样或灵敏度分析,阶次统计和EVS方法的方法会产生不同的解决方案。这种差异最终导致用于解决决策问题的测试统计数据不同。基于EVS的公差极限的闭式表达式是针对代表复杂系统的一大类模型得出的。提出并解决了分析性问题和使用实际反应堆运行数据的问题。与从核工业中使用的现有方法获得的结果相比,EVS结果证明了在操作和安全裕度方面的显着改善。

著录项

  • 来源
    《Nuclear science and engineering》 |2014年第2期|119-155|共37页
  • 作者单位

    AMEC NSS 700 University Avenue, Toronto, Ontario, Canada, M5G 1X6 McMaster University, Department of Mathematics and Statistics, Hamilton, Ontario, Canada;

    McMaster University, Department of Mathematics and Statistics 1280 Main Street West, Hamilton, Ontario, Canada, L8S4K1;

    AMEC NSS 700 University Avenue, Toronto, Ontario, Canada, M5G 1X6;

    Shaftesbury Associates 35 Church Street, Suite 503, Toronto, Ontario, Canada, M5E 1T3;

    AMEC NSS 700 University Avenue, Toronto, Ontario, Canada, M5G 1X6;

    AMEC NSS 700 University Avenue, Toronto, Ontario, Canada, M5G 1X6;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
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  • 入库时间 2022-08-18 00:42:58

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