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Sensitivity Study on Parameters that Influence Automated Slope Determination

机译:影响自动坡度测定的参数的敏感性研究

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There are numerous ASTM standard test methods where force and displacement are recorded and the data analysis requires that the slope of the force-displacement record be determined. Demands for greater accuracy and the availability of computers have led to the widespread use of simple linear regression. However, computers are not good at determining what data to include in the regression, so the analyst must manually select the upper and lower limits of the regression region, thereby introducing subjectivity into the analysis. Fixed fit ranges that are often used for linear regression can lead to slope bias for data sets that exhibit curvature within the fixed range. This is particularly true for data sets that have an initial curvature or that have a small linear region. Two approaches that provide a powerful tool for examining a data set to determine the linear region are reduced displacement and analysis of residuals. The latter was incorporated into a fully automated algorithm for slope determination by analysis of residuals. This study looked at how noise, digital resolution, and sampling rate influence the determination of slope using this algorithm. Twelve synthetically generated data sets were analyzed to provide insight into how each of these data sets' characteristics affected the resulting slope. It was determined that slope error from linear regression is a complex interaction between the shape of the data in the nonlinear regions and the data set characteristics. Noise has more effect on slope error than digital resolution over the ranges considered. The algorithm proved robust in that, even with typical noise and digital resolution, slope error in data sets with small linear regions was less than about 2 %.
机译:记录力和位移有许多ASTM标准测试方法,并且数据分析要求确定力 - 位移记录的斜率。要求更高的准确性和计算机的可用性导致了简单的线性回归的广泛使用。然而,计算机不擅长确定在回归中包含的数据,因此分析师必须手动选择回归区域的上限和下限,从而引入分析中的主观性。固定拟合范围通常用于线性回归可能导致数据集的斜率偏置,在固定范围内表现出曲率。对于具有初始曲率或具有小线性区域的数据集尤其如此。提供用于检查数据集的强大工具以确定线性区域的方法是减少了残差的位移和分析。后者被纳入全自动算法,用于通过分析残留物的坡度测定。本研究研究了噪声,数字分辨率和采样率如何影响使用该算法的斜率的确定。分析了十二个综合生成的数据集,以了解这些数据集的特征如何影响所产生的斜率。确定线性回归的斜率误差是非线性区域中数据的形状与数据集特征之间的复杂交互。噪声对斜率误差的影响比考虑范围的数字分辨率更多。该算法证明是强大的,即使具有典型的噪声和数字分辨率,具有小线性区域的数据集中的斜率误差小于约2%。

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