Uncertainty Quantification (UQ) is an essential step in computational model validation because assessment of the model accuracy requires a concrete, quantifiable measure of uncertainty in the model predictions. The concept of UQ in the nuclear community generally means forward UQ (FUQ), in which the information flow is from the inputs to the outputs. Inverse UQ (IUQ), in which the information flow is from the model outputs and experimental data to the inputs, is an equally important component of UQ but has been significantly underrated until recently. FUQ requires knowledge in the input uncertainties which has been specified by expert opinion or user self-evaluation. IUQ is defined as the process to inversely quantify the input uncertainties based on experimental data. This review paper aims to provide a comprehensive and comparative discussion of the major aspects of the IUQ methodologies that have been used on the physical models in system thermal-hydraulics codes. IUQ methods can be categorized by three main groups: frequentist (deterministic), Bayesian (probabilistic), and empirical (design-of-experiments). We used eight metrics to evaluate an IUQ method, including solidity, complexity, accessibility, independence, flexibility, comprehensiveness, transparency, and tractability. Twelve IUQ methods are reviewed, compared, and evaluated based on these eight metrics. Such comparative evaluation will provide a good guidance for users to select a proper IUQ method based on the IUQ problem under investigation.
翻译:不确定性定量(UQ)是计算模型验证的一个必要步骤,因为评估模型准确性需要用具体、量化的量度来计量模型预测中的不确定性。在核共同体中,UQ概念一般是指前方UQ(FUQ),信息流动来自投入到产出;反之,UQ(IUQ),信息流动来自模型产出和实验数据到投入,这是UQ的一个同样重要的组成部分,但直到最近一直被大大低估。FoQ需要了解专家意见或用户自我评价所具体规定的投入不确定性。IUQ的定义是,对基于实验数据的投入不确定性进行反向量化的过程。本审查文件旨在对IQ方法的主要方面进行全面和比较讨论。IUQ方法可以分为三大类:经常性(确定性)、Bayesian(预测性)和实证(描述性),根据专家意见或用户自我评价确定的不确定性。我们用八种衡量方法,包括准确性、准确性、可比较性、准确性、准确性、准确性、准确性、比较性、准确性评估方法。