A Bayesian Approach for Effective Use of Multiple Measurements of Crack Depths

S. Koduru, M. Nessim, S. Bott, M. Al-Amin
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Abstract

A Bayesian methodology was applied to use data from multiple inline inspection (ILI) runs and field measurements with non-destructive examination (NDE) tools to increase confidence in crack size estimates. Multiple crack depth measurements were used in two different ways — namely, to improve the characterization of ILI sizing error bias and to update the maximum depth distribution of individual crack features. This methodology was applied to selected datasets from an industrywide database for crack ILI data collected over a series of Pipeline Research Council International (PRCI) projects. The results of the approach are presented for two datasets, showing reduced variance in sizing error bias and improved confidence in crack depth estimates. In addition to the PRCI datasets, an additional dataset was collected and used to investigate the effect of multiple ILI runs on estimates of rate of detection and depth distribution of undetected features. The results of this analysis are also summarized.
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有效利用多重裂纹深度测量的贝叶斯方法
采用贝叶斯方法,利用多次在线检测(ILI)的数据和无损检测(NDE)工具的现场测量数据,提高裂缝尺寸估计的可信度。多重裂纹深度测量以两种不同的方式使用,即改进ILI尺寸误差偏差的表征和更新单个裂纹特征的最大深度分布。该方法应用于从国际管道研究委员会(PRCI)一系列项目中收集的裂缝ILI数据的行业数据库中选择的数据集。该方法在两个数据集上的结果显示,尺寸误差偏差的方差减少,裂缝深度估计的置信度提高。除了PRCI数据集之外,还收集了一个额外的数据集,并用于研究多次ILI运行对未检测特征的检出率和深度分布的影响。并对分析结果进行了总结。
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