海底管道
管道运输
腐蚀
石油工程
概率逻辑
原油
点蚀
环境科学
海洋工程
法律工程学
工程类
冶金
地质学
材料科学
岩土工程
计算机科学
环境工程
人工智能
作者
Xinhong Li,Yuhang Zhang,Luyao Zhang,Ziyue Han
标识
DOI:10.1016/j.oceaneng.2023.116112
摘要
Pitting corrosion is considered as the main degradation form and poses a serious threat on service life of offshore crude oil pipelines. The prediction and assessment of pitting corrosion is challenging due to the uncertainties in pitting corrosion growth. This paper presents a probabilistic methodology based on Bayesian Network (BN) and Hierarchical Bayesian Analysis (HBA) to estimate the pitting corrosion condition of offshore crude oil pipelines. To capture the uncertainties in pitting corrosion growth, Continuous BN model is utilized to simulate the temporal evolution of pitting corrosion depth. HBA is employed to evaluate the time-varying probability of pitting corrosion failure. A case study is implemented to illustrate the methodology. It is observed that the methodology can serve as a useful tool for integrity management of offshore crude oil pipelines subject to pitting corrosion.
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