A Bayesian Approach For The Consideration Of Measurement Errors

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Abstract

Metrology is a key tool for tolerancing as it is used to determine whether dimensions are within their tolerance intervals. However, measurement errors cannot be avoided and need being accounted for. The probabilistic approach is applied to both the dimensions and their measurement errors; they are modelled as random variables and characterized by their probability density function. The probability density function of the measurement error is assumed to be known; this work is included in a research project in collaboration with a metrology company, where the engineers are able to provide us with this information. This paper describes a strategy to account for such measurement errors and (partially) correct or mitigate their effects. Through Bayesian inference, the likelihood of true values given measured values is estimated, allowing for a probabilistic correction. The proposed method is applied to numerical examples with simulated data and its relevance is discussed.
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考虑测量误差的贝叶斯方法
计量是公差的关键工具,因为它用于确定尺寸是否在公差范围内。然而,测量误差是无法避免的,需要加以考虑。概率方法适用于尺寸及其测量误差;它们被模拟为随机变量,并以其概率密度函数为特征。测量误差的概率密度函数假定是已知的;这项工作包含在与一家计量公司合作的研究项目中,该公司的工程师可以向我们提供这方面的信息。本文介绍了一种考虑此类测量误差并(部分)纠正或减轻其影响的策略。通过贝叶斯推理,可以估算出测量值的真实值的可能性,从而进行概率修正。所提出的方法应用于模拟数据的数值示例,并讨论了其相关性。
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