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A New Approach to Predict the Pit Depth Extreme Value of a Localized Corrosion Process

机译:预测局部腐蚀过程的坑深极限值的新方法

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Depth of pits that propagate during a pitting corrosion process is an important characteristic of the damage of steels; the greater the depth, the more dramatic the damage. For evident reasons of safety and reliability of industrial installations, statistical procedures must be constructed to assess the maximum pit depth to perform proper maintenance from limited inspection data. This paper outlines a new methodology to predict accurately the pit depth extreme value related to a localized corrosion process independently of the nature of the unknown parent distribution of the experimental data. Based on computer calculations and simulations, this methodology combines the Generalized Lambda Distribution (GLD) and the Bootstrap statistical methods. The GLD method was used in this study to determine a modeled distribution that fits the experimental frequency distribution of pit depths produced on a ferritic stainless steel sample during an accelerated corrosion test. This modeled distribution was used to generate, thanks to the Computer-Based Bootstrap Method (CBBM), simulated distributions of corrosion pit depths equivalent to the experimental one. An estimation of the mean with a 90% confidence interval of the maximum pit depth can be finally deduced not only for these simulated samples of equivalent surface size than the experimental one but also for a large scale installation.
机译:在点蚀过程中传播的点蚀深度是钢损伤的重要特征。深度越大,损坏越严重。出于工业设备安全性和可靠性的明显原因,必须构建统计程序来评估最大坑深,以便根据有限的检查数据进行适当的维护。本文概述了一种新方法,可准确预测与局部腐蚀过程相关的凹坑深度极值,而与实验数据的未知父分布的性质无关。基于计算机计算和模拟,此方法结合了广义Lambda分布(GLD)和Bootstrap统计方法。本研究中使用GLD方法确定模型分布,该模型分布与加速腐蚀试验中铁素体不锈钢样品上产生的凹坑深度的实验频率分布相符。多亏了基于计算机的自举法(CBBM),这种模型化的分布才得以生成,模拟了腐蚀坑深度的分布,其等效于实验值。最终,不仅对于这些等效表面尺寸的模拟样品,而且对于大型装置,都可以得出最大凹坑深度的置信区间为90%的平均值的估计值。

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