The reliability estimation of pipeline using FORM, SORM and Monte Carlo Simulation with FAD

被引:0
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作者
Ouk Sub Lee
Dong Hyeok Kim
机构
[1] INHA University,School of Mechanical Engineering
[2] INHA University,Department of Mechanical Engineering
关键词
Reliability; Failure Probability; FAD; FORM; SORM; Monte Carlo Simulation; Pipeline;
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摘要
In this paper, the reliability estimation of pipelines is performed by employing the probabilistic method, which accounts for the uncertainties in the load and resistance parameters of the limit state function. The FORM (first order reliability method) and the SORM (second order reliability method) are carried out to estimate the failure probability of pipeline utilizing the FAD (failure assessment diagram). And the reliability of pipeline is assessed by using this failure probability and analyzed in accordance with a target safety level. Furthermore, the MCS (Monte Carlo Simulation) is used to verify the results of the FORM and the SORM. It is noted that the failure probability increases with the increase of dent depth, gouge depth, operating pressure, outside radius, and the decrease of wall thickness. It is found that the FORM utilizing the FAD is a useful and is an efficient method to estimate the failure probability in the reliability assessment of a pipeline. Furthermore, the pipeline safety assessment technique with the deterministic procedure utilizing the FAD only is turned out more conservative than those obtained by using the probability theory together with the FAD. The probabilistic method such as the FORM, the SORM and the MCS can be used by most plant designers regarding the operating condition and design parameters.
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页码:2124 / 2135
页数:11
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