Integration of Data From Multiple In-Line Inspection Systems to Improve Crack Detection and Characterization

M. Piazza, Justin Harkrader, Rogelio Guajardo, T. Henning, M. Urrea, R. Krishnamurthy, S. Tandon, M. Gao
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Abstract

In-line inspection (ILI) systems continue to improve in the detection and characterization of cracks in pipelines, and are relied on substantially by pipeline operators to support Integrity Management Programs for continual assessment of conditions on operating pipelines that are susceptible to cracking as an integrity threat. Recent experience for some forms of cracking have shown that integration of data from multiple ILI systems can improve detection and characterization (depth sizing, crack orientation, and crack feature profile) performance. This paper will describe the approach taken by a liquids pipeline operator to integrate data from multiple ILI systems, namely Ultrasonic axial (UC) and circumferential (UCc) crack detection and Magnetic Flux Leakage (MFL) technologies, to improve detection and characterization of cracks and crack fields on a 42 miles long, 12-inch OD liquid pipeline with a 38-year operating history. ILI data has indicated a large number of crack features, including 4000+ crack features reported by UC, 1000+ crack features by UCc, and 2500+ metal loss features reported by MFL. Initial excavations demonstrated a unique pattern of blended circumferential-, oblique- and axial-orientated cracks along the entire extent of the 42-mile pipeline, requiring advanced methods of data integration and analysis. Applying individual technologies and their analysis approaches showed limitations in performance for identification and characterization of these blended features. The outcome of the study was the development of a feature classification approach to classify the cracks with respect to their orientation, and rank them based on the depth sizing by using multiple datasets. Several sections of the 42-mile pipeline were cut-out and subjected to detailed examination using multiple non-destructive examination (NDE) methods and destructive testing to confirm the crack depths and profiles. These data were used as the basis for confirming the ILI tool performance and providing confirmation on the improvements made to crack detection and sizing through the data integration process.
从多个在线检测系统的数据集成,以提高裂纹检测和表征
在线检查(ILI)系统在管道裂缝的检测和表征方面不断改进,管道运营商在很大程度上依赖于支持完整性管理程序,以持续评估易受裂缝影响的管道运行状况。最近对某些形式的裂缝的经验表明,来自多个ILI系统的数据集成可以提高检测和表征(深度尺寸、裂缝方向和裂缝特征剖面)的性能。本文将介绍液体管道运营商采用的方法,整合来自多个ILI系统的数据,即超声轴向(UC)和周向(UCc)裂纹检测和漏磁(MFL)技术,以改善42英里长,12英寸外径,具有38年运行历史的液体管道的裂纹和裂纹场的检测和表征。ILI数据显示了大量的裂纹特征,UC报告了4000+个裂纹特征,UCc报告了1000+个裂纹特征,MFL报告了2500+个金属损耗特征。最初的挖掘表明,42英里长的管道沿线存在独特的环形、斜向和轴向混合裂缝模式,这需要先进的数据整合和分析方法。应用单独的技术及其分析方法在识别和表征这些混合特征方面存在局限性。研究的结果是开发了一种特征分类方法,根据裂缝的方向对裂缝进行分类,并通过使用多个数据集根据深度大小对裂缝进行排序。这条42英里长的管道的几个部分被切断,并使用多种无损检测(NDE)方法和破坏性测试进行详细检查,以确认裂缝深度和轮廓。这些数据被用作确认ILI工具性能的基础,并通过数据集成过程确认裂纹检测和尺寸的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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