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首页> 外文期刊>International journal of metrology and quality engineering >Analysis of approximations of GUM supplement 2 based non-Gaussian PDFs of measurement models with Rosenblatt Gaussian transformation mappings
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Analysis of approximations of GUM supplement 2 based non-Gaussian PDFs of measurement models with Rosenblatt Gaussian transformation mappings

机译:Rosenblatt高斯转换映射测量模型中Gum补充2非高斯PDF的近似分析

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摘要

In scientific metrology practise the application of Monte Carlo simulations with the aid of the GUM Supplement 2 (GS2) technique for performing multivariate uncertainty analyses is now more prevalent, however a key remaining challenge for metrologists in many laboratories is the implicit assumption of Gaussian characteristics for summarizing and analysing measurement model results. Whilst non-Gaussian probability density functions (PDFs) may result from Monte Carlo simulations when the GS2 is applied for more complex non-linear measurement models, in practice results are typically only reported in terms of multivariate expected and covariance values. Due to this limitation the measurement model PDF summary is implicitly restricted to a multivariate Gaussian PDF in the absence of additional higher order statistics (HOS) information. In this paper an earlier classical theoretical result by Rosenblatt that allows for an arbitrary multivariate joint distribution function to be transformed into an equivalent system of Gaussian distributions with mapped variables is revisited. Numerical simulations are performed in order to analyse and compare the accuracy of the equivalent Gaussian system of mapped random variables for approximating a measurement model’s PDF with that of an exact non-Gaussian PDF that is obtained with a GS2 Monte Carlo statistical simulation. Results obtained from the investigation indicate that a Rosenblatt transformation offers a convenient mechanism to utilize just the joint PDF obtained from the GS2 data in order to both sample points from a non-Gaussian distribution, and also in addition which allows for a simple two-dimensional approach to estimate coupled uncertainties of random variables residing in higher dimensions using conditional densities without the need for determining parametric based copulas.
机译:在科学计量实践中,蒙特卡罗模拟借助于牙龈补充2(GS2)技术的应用,用于进行多元性不确定性分析的技术现在更为普遍,但许多实验室中的计量学家的一个关键仍然挑战是高斯特征的隐含假设概述和分析测量模型结果。当非高斯概率密度函数(PDF)可能由Monte Carlo模拟产生时,当GS2应用于更复杂的非线性测量模型时,在实践中,通常仅在多变量预期和协方差值方面报道。由于该限制,测量模型PDF摘要被隐式限制在没有额外的高阶统计(HOS)信息的情况下对多变量高斯PDF限制。在本文中,Rosenblatt的早期经典理论结果,允许将任意多变量接头分布函数转换为具有映射变量的高斯分布的等效系统的任意多变量关节分布函数。执行数值模拟,以便分析和比较映射随机变量的等效高斯系统的准确性,用于近似测量模型的PDF,其具有通过GS2蒙特卡罗统计模拟获得的精确的非高斯PDF。从调查获得的结果表明,Rosenblatt转换提供了一种利用从GS2数据获得的关节PDF的方便机制,以便来自非高斯分布的样本点,也可以添加其简单的二维使用条件密度估计升高尺寸较高尺寸的随机变量的耦合不确定性的方法,而无需确定基于参数的Copulas。

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