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Random Variable Estimation and Model Calibration in the Presence of Epistemic and Aleatory Uncertainties

机译:在认知和杀菌不确定性存在下随机变量估计和模型校准

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This article presents strategies for evaluating the mean, variance, and failure probability of a response variable given measurements subject to both epistemic and aleatory uncertainties. We focus on a case in which standard sensor calibration techniques cannot be used to eliminate measurement error since the uncertainties affecting the metrology system depend upon the measurement itself (e.g., the sensor bias is not constant and the measurement noise is colored). To this end, we first characterize all possible realizations of the true response that might have led to each of such measurements. This process yields a surrogate of the data for the unobservable true response taking the form of a random variable. Each of these variables, called a Random Datum Model (RDM), is manufactured according to a measurement and to the underlying structure of the uncertainty. Several random variable estimation and model calibration techniques are used within the RDM framework to approximate and bound the three metrics of interest. In contrast to all approximations, the bounding techniques account for the irreducible prediction error caused by the uncertainty. The convergence of the predictions as a function of the number of observations available is evaluated numerically for several datasets. The model of the metrology system and the main goals of this article were taken from the Sandia uncertainty quantification challenge [1]. The framework proposed not only applies to the metrology system posed therein but to systems having uncertainties that depend arbitrarily on the measurement.
机译:本文提出了评估响应变量的平均,方差和失效概率的策略给出了对认知和杀菌性不确定性的测量。我们专注于,由于影响计量系统的不确定性取决于测量本身的不确定性,因此专注于消除测量误差的情况下的情况(例如,传感器偏置不是恒定的,测量噪声彩色)。为此,我们首先表征了可能导致每个此类测量的真实响应的所有可能的实现。此过程产生了用于取代随机变量的形式的不可观察的真实响应的数据代理。称为随机基准模型(RDM)的这些变量中的每一个是根据测量和不确定性的底层结构制造的。在RDM框架内使用了几种随机变量估计和模型校准技术,以近似和绑定了三个感兴趣的指标。与所有近似相比,边界技术占由不确定性引起的不可缩短的预测误差。作为可用观察数的函数的预测的收敛是针对几个数据集进行数值评估的。从桑迪亚不确定性量化挑战中取出计量系统和本文主要目标的模型[1]。所提出的框架不仅适用于其中提出的计量系统,而是对具有在测量上任意依赖的不确定性的系统。

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