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dc.contributor.author
 hal.structure.identifier
NAJJAR, Denis
11230 Laboratoire de Métallurgie Physique et Génie des Matériaux [LMPGM]
dc.contributor.author
 hal.structure.identifier
BIGERELLE, Maxence
11230 Laboratoire de Métallurgie Physique et Génie des Matériaux [LMPGM]
dc.contributor.authorBOURDEAUX, Laurent
dc.contributor.authorGUILLOU, Delphine
dc.contributor.author
 hal.structure.identifier
IOST, Alain
11230 Laboratoire de Métallurgie Physique et Génie des Matériaux [LMPGM]
dc.date.accessioned2016
dc.date.available2016
dc.date.issued2004
dc.date.submitted2015
dc.identifier.urihttp://hdl.handle.net/10985/10821
dc.description.abstractPassive alloys like stainless steels are prone to localized corrosion in chlorides containing environments. The greater the depth of the localized corrosion phenomenon, the more dramatic the related damage that can lead to a structure weakening by fast perforation. In practical situations, because measurements are time consuming and expensive, the challenge is usually to predict the maximum pit depth that could be found in a large scale installation from the processing of a limited inspection data. As far as the parent distribution of pit depths is assumed to be of exponential type, the most successful method was found in the application of the statistical extreme-value analysis developed by Gumbel. This study aims to present a new and alternative methodology to the Gumbel approach with a view towards accurately estimating the maximum pit depth observed on a ferritic stainless steel AISI 409 subjected to an accelerated corrosion test (ECC1) used in automotive industry. This methodology consists in characterising and modelling both the morphology of pits and the statistical distribution of their depths from a limited inspection dataset. The heart of the data processing is based on the combination of two recent statistical methods that avoid making any choice about the type of the theoretical underlying parent distribution of pit depths: the Generalized Lambda Distribution (GLD) is used to model the distribution of pit depths and the Bootstrap technique to determine a confidence interval on the maximum pit depth.
dc.language.isoen
dc.publisherEurocorr
dc.rightsPost-print
dc.subjectPit depth
dc.subjectExtreme value statistics
dc.subjectBootstrap
dc.subjectLimited inspection data
dc.subjectSafety
dc.titleCorrosion pit depth extreme value prediction from limited inspection data
dc.typdocCommunication avec acte
dc.localisationCentre de Lille
dc.subject.halChimie: Matériaux
dc.subject.halMathématique: Statistiques
dc.subject.halSciences de l'ingénieur: Matériaux
ensam.audienceInternationale
ensam.conference.titleLong term prediction and modelling of corrosion
ensam.conference.date2004-07-12
ensam.countryFrance
ensam.title.proceedingProceedings eurocorr'04,
ensam.page1-9
ensam.cityNice
ensam.peerReviewingOui
ensam.invitedCommunicationNon
ensam.proceedingOui
hal.identifierhal-03169312
hal.version1
hal.date.transferred2021-03-15T10:29:37Z
hal.submission.permittedtrue
hal.statusaccept


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