Statistical Approaches for the Reduction of Measurement Errors in Metrology

Marc Gille, Pierre Beaurepaire, N. Gayton, Antoine Dumas, T. Yalamas
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Abstract

Metrology is extensively used in the manufacturing industry to determine whether the dimensions of parts are within their tolerance interval. However, errors cannot be avoided. Metrology experts are of course aware of it, and able to identify the different sources that contribute to making errors. In this paper, the probability density function of measurement errors is assumed to be given as an input. Very little research has been made in metrology to develop methods that take into account such data. This work deals with a batch of measures and its statistical properties. A first method is proposed to correct the effects of the measurement errors on the distribution that characterizes the entire batch. Then a second method is proposed to estimate the true value that is hidden behind each single measure, by removing the measurement error statistically. The second method is based on the output knowledge of the first, which is integrated with Bayesian statistics. The relevance of these two methods is shown through two examples applied on simulated data.
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减少计量测量误差的统计方法
计量学被广泛应用于制造业,以确定零件的尺寸是否在公差范围内。然而,误差是无法避免的。计量专家当然知道这一点,并能识别造成误差的不同来源。本文假定测量误差的概率密度函数作为输入。计量学领域在开发考虑此类数据的方法方面鲜有研究。这项工作涉及一批测量数据及其统计特性。首先提出了一种方法来修正测量误差对整个批量测量分布的影响。然后提出第二种方法,通过统计方法消除测量误差,从而估算出隐藏在每个测量值背后的真实值。第二种方法以第一种方法的输出知识为基础,并与贝叶斯统计学相结合。这两种方法的相关性将通过两个应用于模拟数据的示例来说明。
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