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A hybrid population-based degradation model for pipeline pitting corrosion

机译:基于混合人口的管道蚀腐蚀的降解模型

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This paper presents a novel algorithm to develop a population-based pitting corrosion degradation model for piggable oil and gas pipelines. The algorithm is designed to estimate and predict the distribution of actual depth of existing pits on a pipeline segment, given two or more sets of in-line inspection data that have uncertainty in size and number of the detected pits. This algorithm eliminates the need for a defect-matching procedure for those pits that are not critical, that is required in developing defect-based pitting corrosion degradation models. A hierarchical Bayesian model based on a non-homogeneous gamma process is developed to fuse the uncertain in-line inspection data and physics of failure knowledge of pitting corrosion process. Measurement error (ME), probability of detection (POD), and probability of false call (POFC) are addressed in the developed algorithm. The application of the developed algorithm is demonstrated by implementing it on a simulated case study and the results are compared with the simulated data from a generic degradation model that is available in the literature. Results indicate that this algorithm can predict the degradation level of the pipeline with a high accuracy.
机译:本文提出了一种新型算法,用于开发一种基于群体的镀锡油气管道腐蚀降解模型。该算法旨在估计和预测流水线段上现有凹坑的实际深度的分布,给定两个或多个在线检查数据,该数据在检测到的凹坑的大小和数量中具有不确定性。该算法消除了对于那些不关键的凹坑的缺陷匹配过程,这是在开发基于缺陷的蚀腐蚀劣化模型中所必需的。开发了一种基于非均质伽马工艺的分层贝叶斯模型,融合了蚀刻腐蚀过程的不确定在线检查数据和物理学。测量误差(ME),在发布的算法中解决了检测概率(POD)和错误呼叫(POFC)的概率。通过在模拟案例研究中实现显影算法的应用,并且将结果与来自文献中可用的通用劣化模型的模拟数据进行比较。结果表明,该算法可以高精度地预测管道的劣化水平。

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