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A Neural Based Fuzzy Logic Model to Determine Corrosion Rate for Carbon Steel subject to Corrosion under Insulation

机译:基于神经基于神经的模糊逻辑模型,以确定绝缘下腐蚀腐蚀的腐蚀速率

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One of the most common external corrosion failures in petroleum and power industry is due to corrosion under insulation (CUI). The difficulty in corrosion monitoring has contributed to the scarcity of corrosion rate data to be used in Risk-Based Inspection (RBI) analysis for degradation mechanism due to CUI. Limited data for CUI presented in American Petroleum Institute standard, (API 581) reflected some uncertainty for both stainless steels and carbon steels which limits the use of the data for quantitative RBI analysis. The objective of this paper is to present an adaptive neural based fuzzy model to estimate CUI corrosion rate of carbon steel based on the API data. The simulation reveals that the model successfully predict the corrosion rates against the values given by API 581 with a mean absolute deviation ( MAD ) value of 0.0005, within that the model is also providing its outcomes for those values even for which API 581 has not given its results. The results from this model would provide the engineers to do necessary inferences in a more quantitative approach.
机译:一个在石油和电力工业的最常见的外部腐蚀故障是保温层下(CUI)由于腐蚀。在腐蚀监测的困难已腐蚀速率数据的稀缺在基于风险的检验(RBI)分析被用于降解机理由于CUI作出了贡献。对于CUI限定数据在美国石油学会标准提出,(API 581)反射的两个不锈钢和碳钢这限制了定量RBI分析使用的数据的某些不确定性。本文的目的是提出一种自适应神经基于模糊模型来估计基于API数据碳钢CUI腐蚀速率。仿真表明,该模型成功预测对价值观的腐蚀速率通过API 581与0.0005,平均绝对偏差(MAD)值给出,内,该机型还提供其结果为,即使对于API 581还没有给这些值其结果。从这个模型的结果将提供工程师做必要的推论中更加定量的办法。

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