Assessing interlaboratory comparison data adjustment procedures

Q3 Engineering
K. Jagan, A. Forbes
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引用次数: 3

Abstract

Interlaboratory comparisons (ILCs) are one of the key activities in metrology. Estimates x = (x1,…, xn) T of a measurand α along with their associated standard uncertainties u0 = (u0,1,…, u0,n) T, u0,j  = u0 (xj) are provided by each of n laboratories. Employing a model of the form xj ∈ N(α, v0,j),  j = 1,…,n, v0,j = u0,j2, we may wish to find a consensus value for α. A χ2 test can be used to assess the degree to which the spread of the estimates x are consistent with the stated uncertainties u0. If they are judged to be inconsistent, then an adjustment procedure can be applied to determine vj  ≥  v0,j, so that x and v represent consistency. The underlying assumption behind this approach is that some or all of the laboratories have underestimated or neglected some uncertainty contributions, sometimes referred to as ‘dark uncertainty’, and the adjusted v provides an estimate of this dark uncertainty derived from the complete set of laboratory results. There are many such adjustment procedures, including the Birge and Mandel–Paule (M-P) procedures. In implementing an adjustment procedure, a desirable objective is to make as minimal an adjustment as necessary in order to bring about the required degree of consistency. In this paper, we discuss the use of relative entropy, also known as the Kullback–Leibler divergence, as a measure of the degree of adjustment. We consider parameterising v = v (b) as a function of parameters b with the input v0 = v (b0) for some b0. We look to perturb b from b0 to bring about consistency in a way that minimises how far b is from b0 in terms of the relative entropy or Kullback–Leibler divergence.
评估实验室间比较数据调整程序
实验室间比较是计量学的关键活动之一。估计x = (x1,…,xn) 被测量α的T及其相关的标准不确定度u0 = (u0,1,…,u0,n) T、 u0,j  = u0 (xj)由n个实验室中的每一个提供。采用形式xj∈N(α,v0,j)的模型,  j=1,…,n,v0,j=u0,j2,我们可能希望找到α的一致值。χ2检验可用于评估估计值x的分布与所述不确定性u0一致的程度。如果它们被判断为不一致,则可以应用调整程序来确定vj  ≥  v0,j,使得x和v表示一致性。这种方法背后的基本假设是,一些或所有实验室低估或忽略了一些不确定性的贡献,有时被称为“暗不确定性”,调整后的v提供了从整套实验室结果中得出的这种暗不确定性的估计值。有许多这样的调整程序,包括Birge和Mandel–Paule(M-P)程序。在执行调整程序时,一个可取的目标是尽可能少地进行必要的调整,以实现所需的一致性。在本文中,我们讨论了相对熵的使用,也称为Kullback–Leibler散度,作为调整程度的度量。我们考虑将v参数化 = v (b) 作为具有输入v0的参数b的函数 = v (b0)对于一些b0。我们希望从b0扰动b,以使相对熵或Kullback–Leibler散度方面的b与b0的距离最小化,从而实现一致性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
International Journal of Metrology and Quality Engineering
International Journal of Metrology and Quality Engineering Engineering-Safety, Risk, Reliability and Quality
CiteScore
1.70
自引率
0.00%
发文量
8
审稿时长
8 weeks
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