A Kriging-Based Magnetic Flux Leakage Method for Fast Defect Detection in Massive Pipelines

IF 2 Q2 ENGINEERING, MULTIDISCIPLINARY
Subrata Mukherjee, Xuhui Huang, L. Udpa, Y. Deng
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引用次数: 6

Abstract

Systems in service continue to degrade with the passage of time. Pipelines are among the most common systems that wear away with usage. For public safety, it is of utmost importance to monitor pipelines. Magnetic flux leakage (MFL) testing is a widely used nondestructive evaluation (NDE) technique for defect detections within the pipelines, particularly those composed of ferromagnetic materials. Pipeline inspection gauge (PIG) procedure based on line scans can collect accurate MFL readings for defect detection. However, in real world, applications involving large pipe sectors such as extensive scanning techniques are extremely time consuming and costly. In this article, we develop a fast and cheap methodology that does not need MFL readings at all the points used in traditional PIG procedures but conducts defect detection with similar accuracy. We consider an under-sampling based scheme that collects MFL at uniformly chosen random scan points over large lattices instead of extensive PIG scans over all lattice points. On the basis of readings from the chosen random scan points, we use kriging to reconstruct MFL readings. Thereafter, we use thresholding-based segmentation on the reconstructed data for detecting defective areas. We demonstrate the applicability of our methodology on synthetic data generated using finite element models and on MFL data collected via laboratory experiments. In these experiments, spanning a wide range of defect types, our proposed novel MFL-based NDE methodology is witnessed to have operating characteristics within the acceptable threshold of PIG-based traditional methods and thus provide an extremely cost-effective, fast procedure with competing error rates.
一种基于kriging的大管道漏磁快速检测方法
服务中的系统会随着时间的推移而不断退化。管道是随着使用而磨损的最常见的系统之一。为了公共安全,对管道进行监控至关重要。漏磁检测是一种广泛应用于管道内部缺陷检测的无损检测技术,特别是铁磁材料管道。基于管线扫描的管道检测计(PIG)程序可以收集精确的漏磁读数,用于缺陷检测。然而,在现实世界中,涉及大型管道部门的应用,如广泛的扫描技术,是非常耗时和昂贵的。在本文中,我们开发了一种快速且廉价的方法,该方法不需要在传统的PIG程序中使用的所有点上读取MFL,但可以以相似的精度进行缺陷检测。我们考虑了一种基于欠采样的方案,该方案在大晶格上均匀选择随机扫描点收集MFL,而不是在所有晶格点上进行广泛的PIG扫描。基于所选随机扫描点的读数,我们使用克里格法重建了MFL读数。然后,我们对重建的数据使用基于阈值的分割来检测缺陷区域。我们证明了我们的方法在使用有限元模型生成的合成数据和通过实验室实验收集的MFL数据上的适用性。在这些实验中,跨越了广泛的缺陷类型,我们提出的基于mfl的新型NDE方法被证明具有在基于pig的传统方法的可接受阈值范围内的操作特征,从而提供了一个具有竞争错误率的极具成本效益,快速的过程。
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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来源期刊
CiteScore
3.80
自引率
9.10%
发文量
25
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