首页> 外文会议>Biennial International Pipeline Conference(IPC 2004) vol.3; 20041004-08; Calgary(CA) >A RISK-BASED APPROACH TO MAINTENANCE PLANNING UTILIZING IN-LINE INSPECTION DATA
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A RISK-BASED APPROACH TO MAINTENANCE PLANNING UTILIZING IN-LINE INSPECTION DATA

机译:利用在线检查数据进行维修计划的基于风险的方法

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A common approach to the management of external corrosion in the pipeline industry is to perform an In-Line Inspection, followed by repairs of defects that fail a deterministic criterion, and then leave the line in service until a prescribed time interval has elapsed, at which point another re-inspection is performed. However, many companies have found that as a result of the uncertainty associated with MFL defect sizing and corrosion growth rates, a deterministic repair and re-inspection process may often result in unnecessary maintenance expenditures while occasionally failing to identify and address critical features. When the rare feature 'slips through' the deterministic process, companies often respond by adding conservatism to the process, leading to increased spending with little additional benefit. A better approach for evaluating corrosion defects is to view the process as an analysis of a set of stochastic variables instead of deterministic values. Through such an approach, the sensitivity of a defect's failure probability can be more effectively evaluated, facilitating a decision process that is better able to find the 'exceptions' that are not addressed by a deterministic process. This paper outlines an approach to analyzing MFL data with stochastic variables using computer simulation, along with a process for continuously improving the characterization of each variable through a feedback loop. Alternative methods to Monte Carlo, such as Importance Sampling are briefly outlined to minimize the analysis time required without sacrificing simulation accuracy. Finally, acceptance criteria are required to interpret the calculated failure probability in order to inform maintenance decision making. This is presented in a risk-based context using a previously published risk management framework. Through this process, defect repair decisions and the evaluation of the benefit of MFL re-inspection can be better optimized. Examples are drawn from actual maintenance programs to illustrate this approach.
机译:在管道行业中,管理外部腐蚀的一种常用方法是执行在线检查,然后修复无法确定性标准的缺陷,然后将管道投入使用,直到经过规定的时间间隔为止。指向另一个重新检查。但是,许多公司发现,由于MFL缺陷尺寸和腐蚀增长率的不确定性,确定性的维修和重新检查过程通常可能导致不必要的维护支出,而有时却无法识别和解决关键特征。当罕见的功能“滑过”确定性流程时,公司通常会通过在流程中增加保守性来做出响应,从而导致支出增加而几乎没有额外的收益。评估腐蚀缺陷的更好方法是将过程视为对一组随机变量的分析,而不是确定性值。通过这种方法,可以更有效地评估缺陷故障概率的敏感性,从而促进决策过程,使其能够更好地找到确定性过程无法解决的“例外”。本文概述了一种使用计算机仿真分析具有随机变量的MFL数据的方法,以及一种通过反馈回路不断改进每个变量的特性的过程。简要概述了蒙特卡洛(Monte Carlo)的替代方法,例如重要采样(Importance Sampling),以最大程度地减少所需的分析时间,同时又不牺牲仿真精度。最后,需要接受标准来解释计算出的故障概率,以告知维护决策。使用先前发布的风险管理框架在基于风险的上下文中进行介绍。通过此过程,可以更好地优化缺陷修复决策和MFL重新检查的效益评估。从实际的维护程序中提取了一些示例来说明此方法。

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