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A generic statistical methodology to predict the maximum pit depth of a localized corrosion process

机译:预测局部腐蚀过程的最大凹坑深度的通用统计方法

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摘要

This paper outlines a new methodology to predict accurately the maximum pit depth related to a localized corrosion process. It combines two statistical methods: the Generalized Lambda Distribution (GLD), to determine a model of distribution fitting with the experimental frequency distribution of depths, and the Computer Based Bootstrap Method (CBBM), to generate simulated distributions equivalent to the experimental one. In comparison with conventionally established statistical methods that are restricted to the use of inferred distributions constrained by specific mathematical assumptions, the major advantage of the methodology presented in this paper is that both the GLD and the CBBM enable a statistical treatment of the experimental data without making any preconceived choice neither on the unknown theoretical parent underlying distribution of pit depth which characterizes the global corrosion phenomenon nor on the unknown associated theoretical extreme value distribution which characterizes the deepest pits. Considering an experimental distribution of depths of pits produced on an aluminium sample, estimations of maximum pit depth using a GLD model are compared to similar estimations based on usual Gum-bel and Generalized Extreme Value (GEV) methods proposed in the corrosion engineering literature. The GLD approach is shown having smaller bias and dispersion in the estimation of the maximum pit depth than the Gumbel approach both for its realization and mean. This leads to comparing the GLD approach to the GEV one. The former is shown to be relevant and its advantages are discussed compared to previous methods.
机译: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最大凹坑深度。它结合了两种统计方法:广义Lambda分布(GLD)(用于确定与实验的深度频率分布相吻合的分布模型)和计算机引导法(CBBM),用于生成与实验等效的模拟分布。与常规建立的统计方法(仅限于使用受特定数学假设约束的推断分布)相比,本文介绍的方法的主要优势在于,GLD和CBBM均可对实验数据进行统计处理,而无需无论是关于表征整体腐蚀现象的未知深度深度​​的未知母体基础分布,还是表征最深深度的未知关联理论极值分布,都没有任何先入为主的选择。考虑到铝样品上产生的凹坑深度的实验分布,将使用GLD模型的最大凹坑深度估计与基于腐蚀工程文献中提出的常规Gum-bel和广义极值(GEV)方法的类似估计进行比较。在最大凹坑深度的估计中,GLD方法在实现和均值方面均比Gumbel方法具有更小的偏差和离散。这导致将GLD方法与GEV方法进行比较。与前一种方法相比,前者被证明是相关的,并讨论了其优势。

著录项

  • 来源
    《Corrosion science》 |2011年第8期|p.2453-2467|共15页
  • 作者单位

    Equipe Mecanique des Structures, Hautes Etudes d'lnginieur, 13 Rue de Toul, 59046 Lille Cedex, France,Arts et Metiers ParisTech - Centre de Lille, 8, Boulevard Louis XIV, 59000 Lille Cedex, France;

    Arts et Metiers ParisTech - Centre de Lille, 8, Boulevard Louis XIV, 59000 Lille Cedex, France;

    Arts et Metiers ParisTech - Centre de Lille, 8, Boulevard Louis XIV, 59000 Lille Cedex, France,Laboratoire de Mecanique de Lille (LML), UMR CNRS 8107, PRES Universite Lille Nord de France, F-59650 Vilteneuve d'Ascq, France;

    Arts et Metiers ParisTech - Centre de Lille, 8, Boulevard Louis XIV, 59000 Lille Cedex, France,Laboratoire de Mecanique de Lille (LML), UMR CNRS 8107, PRES Universite Lille Nord de France, F-59650 Vilteneuve d'Ascq, France;

    Arts et Metiers ParisTech - Centre de Lille, 8, Boulevard Louis XIV, 59000 Lille Cedex, France,Laboratoire de Mecanique de Lille (LML), UMR CNRS 8107, PRES Universite Lille Nord de France, F-59650 Vilteneuve d'Ascq, France;

    Equipe Mecanique des Structures, Hautes Etudes d'lnginieur, 13 Rue de Toul, 59046 Lille Cedex, France;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    A. Aluminium; B. Modelling studies; C. Pitting corrosion;

    机译:A.铝;B。建模研究;C.点腐蚀;

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