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首页> 外文期刊>Journal of loss prevention in the process industries >Pattern recognition techniques implementation on data from In-Line Inspection (ILI)
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Pattern recognition techniques implementation on data from In-Line Inspection (ILI)

机译:模式识别技术对在线检查(ILI)数据的实现

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摘要

According to databases such as CONCAWE and PHMSA, corrosion failures of onshore pipelines accounted for about 16% of the overall number of incidents among 2004 to 2011. Therefore, corrosion monitoring has become a major objective within the oil industry. The most popular technique used for this purpose is the In-Line Inspection (ILI), which is used to determine overall pipeline status (e.g., inner and outer condition of the pipe and wall thickness). It is widely used for risk management with standards such as ASMEB31G or API579-1/ASME FFS-1. However, these approaches do not take into account the uncertainty associated with ILI inspection tools (e.g., MFL and UT). Several investigations have been conducted to reduce the noise generated and to accurately measure metal losses. However, there are still important deficiencies in evaluating both the spatial and the time-dependent variability of damage. This work seeks to use data obtained from ILI to better support risk-based decision making. The proposed approach uses corrosion growth models to estimate the remaining life of the pipeline based on mechanistic models (e.g., pressure failure criteria). This information, combined with pattern recognition techniques, clustering and reliability concepts, is then used to obtain base failure probabilities. Actual data from two ILI measurements was used to validate the model. The results show that by using statistical clustering of data, the failure probability may actually increases by 10% in comparison with the corresponding defects evaluated individually. This result have an important impact on any decision regarding life-cycle analysis. (C) 2016 Elsevier Ltd. All rights reserved.
机译:根据CONCAWE和PHMSA等数据库的统计,2004年至2011年间,陆上管道的腐蚀故障约占事故总数的16%。因此,腐蚀监测已成为石油行业的主要目标。用于此目的的最流行的技术是在线检查(ILI),用于确定总体管道状态(例如,管道的内部和外部状况以及壁厚)。它已通过ASMEB31G或API579-1 / ASME FFS-1等标准广泛用于风险管理。但是,这些方法未考虑与ILI检查工具(例如MFL和UT)相关的不确定性。为了减少产生的噪声并准确测量金属损耗,已经进行了一些研究。但是,在评估损害的空间和时间相关性方面仍然存在重大缺陷。这项工作试图利用从ILI获得的数据更好地支持基于风险的决策。所提出的方法使用腐蚀增长模型基于机械模型(例如压力破坏准则)来估计管道的剩余寿命。然后,此信息与模式识别技术,聚类和可靠性概念相结合,用于获得基本故障概率。来自两次ILI测量的实际数据用于验证模型。结果表明,通过使用统计数据聚类,与单独评估的相应缺陷相比,故障概率实际上可能增加10%。该结果对有关生命周期分析的任何决定都具有重要影响。 (C)2016 Elsevier Ltd.保留所有权利。

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