The Application of Bayesian Network Threat Model for Corrosion Assessment of Pipeline in Design Stage

Guanlan Liu, Francois Ayello, Jiana Zhang, P. Stephens
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引用次数: 2

Abstract

Internal corrosion modeling of oil and gas pipelines requires the consideration of interactions between various parameters (e.g. brine chemistry, flow conditions or scale deposition). Moreover, the number of interactions increases when we consider that there are multiple types of internal corrosion mechanisms (i.e. uniform corrosion, localized corrosion, erosion-corrosion and microbiologically influenced corrosion). To better describe the pipeline internal corrosion threats, a Bayesian network model was created by identifying and quantifying causal relationships between parameters influencing internal corrosion. One of the strengths of the Bayesian network methodology is its capability to handle uncertain and missing data. The model had previously proven its accuracy in predicting the internal condition of existing pipelines. However, the model has never been tested on a pipeline in design stage, where future operating conditions are uncertain and data uncertainty is high. In this study, an offshore pipeline was selected for an internal corrosion threat assessment. All available information related to the pipeline were collected and uncertainties in some parameters were estimated based on subject matter expertise. The results showed that the Bayesian network model can be used to quantify the value of each information (i.e. which parameters have the most effect now and in the future), predict the range of possible corrosion rates and pipeline failure probability within a given confidence level.
贝叶斯网络威胁模型在管道设计阶段腐蚀评估中的应用
油气管道的内部腐蚀建模需要考虑各种参数之间的相互作用(例如盐水化学,流动条件或结垢沉积)。此外,当我们考虑到存在多种类型的内部腐蚀机制(即均匀腐蚀、局部腐蚀、侵蚀腐蚀和微生物影响腐蚀)时,相互作用的数量增加了。为了更好地描述管道内部腐蚀威胁,通过识别和量化影响内部腐蚀的参数之间的因果关系,建立了贝叶斯网络模型。贝叶斯网络方法的优势之一是它处理不确定和缺失数据的能力。该模型在预测现有管道内部状况方面已被证明是准确的。然而,该模型从未在设计阶段的管道上进行过测试,因为未来的操作条件不确定,数据的不确定性也很高。在本研究中,选择了一条海上管道进行内部腐蚀威胁评估。收集了与管道相关的所有可用信息,并根据主题专业知识估计了某些参数的不确定性。结果表明,贝叶斯网络模型可以量化每个信息的价值(即哪些参数在现在和将来影响最大),在给定的置信水平内预测可能的腐蚀速率和管道失效概率的范围。
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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