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首页> 外文期刊>International journal of metrology and quality engineering >Comparison of the GUM and Monte Carlo measurement uncertainty techniques with application to effective area determination in pressure standards
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Comparison of the GUM and Monte Carlo measurement uncertainty techniques with application to effective area determination in pressure standards

机译:GUM和蒙特卡洛测量不确定度技术的比较及其在压力标准中有效面积确定中的应用

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摘要

A common measurement model for a gas operated piston-cylinder based pressure standard effective area is the well known integral equation formulation originally developed by Dadson of the NPL. However a problem with directly applying this exact mathematical model is that it cannot be easily cast into a functional form suitable for application of the Guide to the expression of Uncertainty in Measurement (GUM) which is reliant on the concept of sensitivity coefficients without various simplifications. In this paper, we examine the standard approximations that are currently necessary in order to directly apply the GUM for a pressure standard effective area uncertainty determination. We also compare and contrast this to the exact effective area uncertainty results obtained through the direct application of the Monte Carlo Method (MCM) which has recently been published as Supplement 1 to the GUM. Based on these investigations we also draw some preliminary conclusions on the relative merits on the extent to which the shape of the piston and cylinder radii and whose uncertainties may vary along the engagement length of the piston-cylinder may be modeled and incorporated into a piston-cylinder’s effective area uncertainty calculation.
机译:基于气动活塞缸的压力标准有效面积的常见测量模型是由NPL的Dadson最初开发的众所周知的积分方程式。但是,直接应用此精确数学模型的问题在于,不能轻易地将其转换为适合于应用《测量不确定度表达指南》(GUM)的功能形式,而该指南依赖于灵敏度系数的概念而没有进行各种简化。在本文中,我们研究了将直接用于压力标准有效面积不确定度确定的GUM所必需的标准近似值。我们还将这与通过直接应用蒙特卡罗方法(MCM)获得的确切有效面积不确定性结果进行比较和对比,该结果最近已作为GUM的增刊1发表。基于这些研究,我们还可以就活塞和汽缸半径的形状以及其不确定性沿活塞-汽缸的啮合长度可能变化的程度的相对优劣进行建模并结合到活塞中,从而得出一些初步结论。气缸有效面积不确定度计算。

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