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An efficient procedure for reducing in-line-inspection datasets for structural integrity assessments

机译:减少在线检查数据集以进行结构完整性评估的有效程序

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摘要

In-line inspection (ILI) has become a routine procedure in the Oil and Gas industry for performing cost-effective pipeline integrity assessments, allowing continuing monitoring and providing a basis for informed decisions in terms of repair, maintenance or a change to the operating conditions. The amount of ILI data is however immense and dealing with these data from a fitness-for-service point of view poses a significant challenge to the industry. Thus, smart methods for using ILI data in the assessment of the integrity of oil and gas transmission pipelines are essential. The aim of this paper is to propose a screening approach for reducing the amount of ILI inspection data requiring detailed structural integrity assessment. The screening approach has two main stages: (I) a geometry based filter assessing the shape of the flaw and (II) an elastic stress based filter that uses the point method, as in the Theory of Critical Distances (TCD), to identify the most severe flaws. The methodology uses the outputs from ILI (dimensions of flaws, orientation and distance from starting point) to generate a visualisation of the pits within the pipeline, a ranking of pits in terms of sphericity (roundness) and depth, to evaluate pit density and generate the models for finite element analysis. The method was tested on actual ILI data, where the number of pits in a 12.75 inch riser of 11 km length was reduced significantly (i.e. two/three orders of magnitude), such reduction depending on the level of conservatism introduced by the analyst. The tool will allow Oil and Gas owners and operators to reduce the immense amount of data obtained during pigging to a much less time-consuming set for flaw assessment.
机译:在线检查(ILI)已成为石油和天然气行业中的常规程序,用于执行具有成本效益的管道完整性评估,从而可以进行持续监控,并为维修,维护或更改工作条件方面的明智决策提供依据。但是,ILI数据量巨大,从适合服务的角度来看,处理这些数据对行业构成了重大挑战。因此,在油气输送管道完整性评估中使用ILI数据的智能方法至关重要。本文的目的是提出一种筛选方法,以减少需要详细结构完整性评估的ILI检查数据量。筛选方法有两个主要阶段:(I)基于几何的过滤器评估缺陷的形状;(II)基于弹性应力的过滤器,该过滤器使用临界距离理论(TCD)中的点方法来识别缺陷。最严重的缺陷。该方法使用ILI的输出(缺陷尺寸,方向和距起点的距离)生成管道内凹坑的可视化图像,以球形度(圆度)和深度对凹坑进行排名,以评估凹坑密度并生成有限元分析模型。该方法已在实际的ILI数据上进行了测试,在该数据中,长度为11 km的12.75英寸立管中的凹坑数量显着减少(即两个/三个数量级),这种减少取决于分析师引入的保守程度。该工具将使石油和天然气的所有者和运营商可以将清管过程中获得的大量数据减少到更少的时间来进行缺陷评估。

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