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Probabilistic bounding analysis in the Quantification of Margins and Uncertainties

机译:边际和不确定性量化中的概率边界分析

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The current challenge of nuclear weapon stockpile certification is to assess the reliability of complex, high-consequent, and aging systems without the benefit of full-system test data. In the absence of full-system testing, disparate kinds of information are used to inform certification assessments such as archival data, experimental data on partial systems, data on related or similar systems, computer models and simulations, and expert knowledge. In some instances, data can be scarce and information incomplete. The challenge of Quantification of Margins and Uncertainties (QMU) is to develop a methodology to support decision-making in this informational context. Given the difficulty presented by mixed and incomplete information, we contend that the uncertainty representation for the QMU methodology should be expanded to include more general characterizations that reflect imperfect information. One type of generalized uncertainty representation, known as probability bounds analysis, constitutes the union of probability theory and interval analysis where a class of distributions is defined by two bounding distributions. This has the advantage of rigorously bounding the uncertainty when inputs are imperfectly known. We argue for the inclusion of probability bounds analysis as one of many tools that are relevant for QMU and demonstrate its usefulness as compared to other methods in a reliability example with imperfect input information.
机译:核武器储备证书的当前挑战是在不利用完整系统测试数据的情况下评估复杂,高频率和老化的系统的可靠性。在没有完整系统测试的情况下,会使用不同种类的信息来进行认证评估,例如档案数据,部分系统的实验数据,相关或相似系统的数据,计算机模型和仿真以及专家知识。在某些情况下,数据可能会稀缺,信息可能会不完整。保证金和不确定性量化(QMU)面临的挑战是开发一种在这种信息环境下支持决策的方法。考虑到混合信息和不完整信息带来的困难,我们认为QMU方法论的不确定性表示应扩展为包括更多反映不完善信息的一般特征。一种类型的广义不确定性表示形式(称为概率边界分析)构成了概率论和区间分析的结合,其中一类分布由两个边界分布定义。当输入不完全已知时,这具有严格限制不确定性的优点。我们主张将概率边界分析作为与QMU相关的许多工具之一,并在输入信息不完善的可靠性示例中证明了其与其他方法相比的有用性。

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