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The selection of corrosion prior distributions for risk based integrity modeling

机译:为基于风险的完整性建模选择腐蚀先验分布

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The deterioration of the condition of process plants assets has a major negative impact on the safety of its operation. Risk based integrity modeling provides a methodology to quantify the risks posed by an aging asset. This provides a means for the protection of human life, financial investment and the environmental damage from the consequences of its failures. This methodology is based on modeling the uncertainty in material degradations using probability distributions, known as priors. Using Bayes theorem, one may improve the prior distribution to obtain a posterior distribution using actual inspection data. Although the choice of priors is often subjective, a rational consensus can be achieved by judgmental studies and analyzing the generic data from the same or similar installations. The first part of this paper presents a framework for a risk based integrity modeling. This includes a methodology to select the prior distributions for the various types of corrosion degradation mechanisms, namely, the uniform, localized and erosion corrosion. Several statistical tests were conducted based on the data extracted from the literature to check which of the prior distributions follows data the best. Once the underlying distribution has been confirmed, one can estimate the parameters of the distributions. In the second part, the selected priors are tested and validated using actual plant inspection data obtained from existing assets in operation. It is found that uniform corrosion can be best described using 3P-Weibull and 3P-Lognormal distributions. Localized corrosion can be best described using Typel extreme value and 3P-Weibull, while erosionrncorrosion can best be described using the 3P-Weibull, Typel extreme value, or 3P-Lognormal distributions.
机译:加工厂资产状况的恶化对其运营安全产生重大负面影响。基于风险的完整性建模提供了一种方法来量化由老化资产构成的风险。这提供了一种保护人类生命,金融投资和环境损害的手段,以防止其失败带来的后果。该方法基于使用概率分布(称为先验)对材料退化的不确定性进行建模的基础。使用贝叶斯定理,可以使用实际检验数据来改进先验分布以获得后验分布。尽管先验的选择通常是主观的,但可以通过判断研究和分析来自相同或相似设施的通用数据来达成理性共识。本文的第一部分介绍了基于风险的完整性建模的框架。这包括为各种类型的腐蚀退化机制(即均匀腐蚀,局部腐蚀和腐蚀腐蚀)选择先验分布的方法。根据从文献中提取的数据进行了一些统计检验,以检查哪个先验分布最符合数据。一旦确定了基础分布,就可以估计分布的参数。在第二部分中,将使用从运营中的现有资产获得的实际工厂检查数据来测试和验证所选先验条件。发现使用3P-Weibull和3P-Lognormal正态分布可以最好地描述均匀腐蚀。局部腐蚀最好用Type1极值和3P-Weibull来描述,而腐蚀腐蚀最好用3P-Weibull,Type1极值或3P-对数正态分布来描述。

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