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Recent Patents on Corrosion Science

Editor-in-Chief

ISSN (Print): 2210-6839
ISSN (Online): 1877-6108

Stress Corrosion Prediction Modeling Software - A Proposal

Author(s): O. F. Aly, M. Mattar Neto and M. M.A.M. Schvartzman

Volume 2, Issue 2, 2012

Page: [112 - 117] Pages: 6

DOI: 10.2174/2210683911202020112

Price: $65

Abstract

Stress Corrosion Cracking (SCC) is a sudden and difficult-to-predict severe degradation mode of failure of nuclear, petrochemical, and other industries. This is a development proposal for a methodological software for modeling SCC based on: the failure propensity plus a kinetic model link which better describes its evolution. The main result is prediction with an adequate statistical regression. The basic issues of this methodology are: a) A fixed combination of material-environmental condition is plotted on a potential-pH (Pourbaix) diagram marked with corrosion submodes – which can be originated from literature and/or experimental data. This forms a Knowledge Base (KB) for SCCPropensity. Fuzzy Logic- a form of multiple valued logic where uncertainties can be considered - can be used to determine the SCC-Propensity zones; b) When the actual corrosion submode of the concerning material-environment is marked, based on new experiments, a feedback should be sent to the KB with the purpose to check the original submode border; c) Over the determined point (or region) in a SCC submode, a proper kinetic model should be chosen (departing for example from a kinetic library model-KB) to adjust the experimental data from the concerning material-environment. Alternatively a new empiric or numeric model can be adjusted; d) The regression quality of the model adjusted should be properly and statistically evaluated, and a feedback should be “fuzzylogically” retrofit its adequacy. Here, we also discuss some of the patents related to the topic.

Keywords: Light water nuclear reactors, modeling software, Pourbaix diagram, stress corrosion prediction

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