用于测量不确定度先验估计的虚拟校准环境

C. Gugg, M. Harker, P. O’Leary
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引用次数: 1

摘要

在测量仪器的产品设计过程中,问题是需要采取哪些措施来达到尽可能高的测量精度。在这种情况下,测量仪器的目标不确定度是其需求规范的重要组成部分,因为它是测量整体质量的指示器。介绍了一种确定标定曲线置信区间和预测区间的代数框架;基于矩阵的框架极大地简化了相关的证明和实现细节。导出了离散正交多项式的回归分析方法,并首次提出了新的置信区间和预测区间公式。与传统的多项式Vandermonde基相比,正交基函数在数值上更稳定,得到的结果更精确;因此,可以直接比较这些方法。这种新型的虚拟测量与校准环境非常适合建立贯穿整个测量系统的误差传播链,包括数据融合等复杂任务。以参考测量为例,建立了光学测量系统的自适应虚拟透镜模型。如果在不同的系统中使用相同的硬件设置,则可以对单个系统的校准进行先验估计,使其适用于工业应用。使用该模型,可以确定系统级校准所需的校准节点数量,以实现预定义的测量不确定度。因此,用这种方法可以大大减少系统误差,剩余的随机误差用概率模型来描述。通过使用非参数Kolmogorov-Smirnov测试和蒙特卡罗模拟的数值实验进行验证。
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Virtual calibration environment for a-priori estimation of measurement uncertainty
During product engineering of a measuring instrument, the question is which measures are necessary to achieve the highest possible measurement accuracy. In this context, a measuring instrument's target uncertainty is an essential part of its requirement specifications, because it is an indicator for the measurement's overall quality. This paper introduces an algebraic framework to determine the confidence and prediction intervals of a calibration curve; the matrix based framework greatly simplifies the associated proofs and implementation details. The regression analysis for discrete orthogonal polynomials is derived, and new formulae for the confidence and prediction intervals are presented for the first time. The orthogonal basis functions are numerically more stable and yield more accurate results than the traditional polynomial Vandermonde basis; the methods are thereby directly compared. The new virtual environment for measurement and calibration of cyber-physical systems is well suited for establishing the error propagation chain through an entire measurement system, including complicated tasks such as data fusion. As an example, an adaptable virtual lens model for an optical measurement system is established via a reference measurement. If the same hardware setup is used in different systems, the uncertainty can be estimated a-priori to an individual system's calibration, making it suitable for industrial applications. With this model it is possible to determine the number of required calibration nodes for system level calibration in order to achieve a predefined measurement uncertainty. Hence, with this approach, systematic errors can be greatly reduced and the remaining random error is described by a probabilistic model. Verification is performed via numerical experiments using a non-parametric Kolmogorov-Smirnov test and Monte Carlo simulation.
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