Optimizing the Management of Excavation and Repair Data From Inline Inspection Programs

M. Safari, D. Shaw
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Abstract

As integrity programs mature over the life of a pipeline, an increasing number of data points are collected from second, third, or further condition monitoring cycles. Types of data include Inline Inspection (ILI) or External Corrosion Direct Assessment (ECDA) inspection data, validation or remediation dig information, and records of various repairs that have been completed on the pipeline system. The diversity and massive quantity of this gathered data proposes a challenge to pipeline operators in managing and maintaining these data sets and records. The management of integrity data is a key element to a pipeline system Integrity Management Program (IMP) as per the CSA Z662[1]. One of the most critical integrity datasets is the repair information. Incorrect repair assignments on a pipeline can lead to duplicate unnecessary excavations in the best scenario and a pipeline failure in the worst scenario. Operators rely on various approaches to manage and assign repair data to ILIs such as historical records reviews, ILI-based repair assignments, or chainage-based repair assignments. However, these methods have significant gaps in efficiency and/or accuracy. Failure to adequately manage excavation and repair data can lead to increased costs due to repeated excavation of an anomaly, an increase in resources required to match historical information with new data, uncertainty in the effectiveness of previous repairs, and the possibility of incorrect assignment of repairs to unrepaired features. This paper describes the approach adopted by Enbridge Gas to track and maintain repairs, as a part of the Pipeline Risk and Integrity Management (PRIM) platform. This approach was designed to create a robust excavation and repair management framework, providing a robust system of data gathering and automation, while ensuring sufficient oversight by Integrity Engineers. Using this system, repairs are assigned to each feature in an excavation, not only to a certain chainage along the pipeline. Subsequently, when a new ILI results report is received, a process of “Repair Matching” is completed to assign preexisting repairs and assessments to the newly reported features at a feature level. This process is partially automated, whereby pre-determined box-to-box features matched between ILIs can auto-populate repairs for many of the repaired features. The proposed excavation management system would provide operators a superior approach to managing their repair history and projecting historical repairs and assessments onto new ILI reports, prior to assessing the ILI and issuing further digs on the pipeline. This optimized method has many advantages over the conventional repair management methods used in the industry. This method is best suited for operators that are embarking on their second or third condition monitoring cycle, with a moderate number of historical repairs.
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优化管理挖掘和修复数据从在线检查程序
随着完整性计划在管道生命周期中的成熟,从第二次、第三次或进一步的状态监测周期中收集的数据点越来越多。数据类型包括内联检查(ILI)或外部腐蚀直接评估(ECDA)检查数据、验证或修复挖掘信息,以及管道系统已完成的各种修复记录。这些收集数据的多样性和数量给管道运营商在管理和维护这些数据集和记录方面提出了挑战。根据CSA Z662标准,完整性数据管理是管道系统完整性管理计划(IMP)的关键要素。修复信息是最关键的完整性数据集之一。在最好的情况下,不正确的管道维修任务可能导致重复的不必要的挖掘,在最坏的情况下,可能导致管道故障。运营商依靠各种方法来管理和分配维修数据给ili,如历史记录审查、基于ili的维修任务或基于链的维修任务。然而,这些方法在效率和/或准确性方面存在显著差距。由于重复挖掘异常、将历史信息与新数据相匹配所需的资源增加、先前修复效果的不确定性以及将修复错误分配给未修复特征的可能性,未能充分管理挖掘和修复数据可能导致成本增加。本文介绍了Enbridge Gas采用的跟踪和维护维修的方法,作为管道风险和完整性管理(PRIM)平台的一部分。该方法旨在创建一个强大的挖掘和修复管理框架,提供一个强大的数据收集和自动化系统,同时确保完整性工程师的充分监督。使用该系统,对挖掘中的每个特征进行维修,而不仅仅是沿着管道的某个链。随后,当收到新的ILI结果报告时,将完成“修复匹配”过程,在特征级别上对新报告的特征分配先前存在的修复和评估。这个过程是部分自动化的,因此在ili之间匹配的预先确定的盒对盒特征可以自动填充许多修复特征的修复。拟议的挖掘管理系统将为运营商提供一种更好的方法来管理他们的维修历史,并在评估ILI和发布对管道的进一步挖掘之前,将历史维修和评估预测到新的ILI报告中。该优化方法与工业上常用的维修管理方法相比具有许多优点。这种方法最适合进行第二次或第三次状态监测周期的作业者,并且需要进行适度的历史维修。
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