Pipeline Data Analytics: Enhanced Corrosion Growth Assessment Through Machine Learning

Michael Smith, Stefan Cronjaeger, N. Ershad, R. Nickle, Matthias Peussner
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Abstract

Effective integrity management of a corroded pipeline requires a significant quantity of data. Common data sources include in-line inspection (ILI), process monitoring, or external surveys. The key challenge for an integrity engineer is to leverage the data to understand the level of corrosion activity along the pipeline route, and make optimal decisions on future repair, mitigation and monitoring. This practice of gaining business insights from historical datasets is often referred to as ‘data analytics’. In this paper, a single application of data analytics is investigated — that of improving the estimation of corrosion growth rates (CGRs) from ILI data. When two or more sets of ILI data are available for the same pipeline, a process known as ‘box matching’ is typically used to estimate CGRs. Corresponding feature ‘boxes’ are linked between the two ILIs and a population of CGRs is generated based on changes in reported depth. While this is a well-established technique, there are uncertainties related to ILI sizing, detection limitations, and data censoring. Great care is required if these uncertain CGRs are used to predict future pipeline integrity. A superior technique is ‘signal matching’, which involves the direct alignment, normalization and comparison of magnetic flux leakage (MFL) signals. This delivers CGRs with a higher accuracy than box matching. However, signal matching is not always feasible (e.g. when conducting a cross-vendor or cross-technology comparison). When box matching is the only option for a pipeline, there is great value in understanding how the box matching CGRs can be improved in order to more closely resemble those from signal matching. This limits the extent to which uncertainties are propagated into any subsequent analyses, such as repair plan generation or remaining life assessment. Given their relative accuracy, signal matching CGRs can be utilized as a ‘ground truth’ against which box matching results can be validated. This is analogous to the ILI verification process, where in-field measurements (e.g. with laser scan) are used to validate feature depths reported by an ILI. By extension, a model to estimate CGRs following a box matching analysis can be trained with CGRs from a signal matching analysis, using supervised machine learning. The outcome is an enhanced output from box matching, which more closely resembles the true state of corrosion growth in a pipeline. Through testing on real pipeline data, it is shown that this new technique has the potential to improve pipeline integrity management decisions and support economical, safe and compliant operation.
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管道数据分析:通过机器学习增强腐蚀生长评估
对腐蚀管道进行有效的完整性管理需要大量的数据。常见的数据源包括在线检查(ILI)、过程监控或外部调查。完整性工程师面临的主要挑战是利用数据了解管道沿线的腐蚀活动水平,并对未来的修复、缓解和监测做出最佳决策。这种从历史数据集中获得业务洞察力的做法通常被称为“数据分析”。本文研究了数据分析的一个单一应用-改进从ILI数据估计腐蚀增长率(CGRs)的方法。当同一管道可获得两组或多组ILI数据时,通常使用称为“框匹配”的过程来估计cgr。相应的特征“框”在两个ili之间连接,并根据报告深度的变化生成cgr的总体。虽然这是一项成熟的技术,但存在与ILI大小、检测限制和数据审查相关的不确定性。如果使用这些不确定的cgr来预测未来管道的完整性,则需要非常小心。一种较好的技术是“信号匹配”,它涉及漏磁信号的直接对准、归一化和比较。这提供了比框匹配更高精度的cgr。然而,信号匹配并不总是可行的(例如,在进行跨供应商或跨技术比较时)。当盒匹配是管道的唯一选择时,了解如何改进盒匹配cgr以更接近信号匹配的cgr是很有价值的。这限制了不确定性传播到任何后续分析的程度,例如维修计划生成或剩余寿命评估。考虑到它们的相对精度,信号匹配cgr可以被用作“接地真理”,根据它可以验证框匹配结果。这类似于ILI验证过程,其中使用现场测量(例如激光扫描)来验证ILI报告的特征深度。通过扩展,在盒子匹配分析之后估计cgr的模型可以使用来自信号匹配分析的cgr进行训练,使用监督机器学习。其结果是增强了盒匹配的输出,更接近于管道中腐蚀增长的真实状态。通过对实际管道数据的测试,表明该新技术具有改善管道完整性管理决策和支持经济、安全、合规运行的潜力。
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