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Pitting degradation modelling of ocean steel structures using Bayesian network
journal contribution
posted on 2023-05-19, 05:34 authored by Bhandari, J, Faisal KhanFaisal Khan, Rouzbeh AbbassiRouzbeh Abbassi, Vikrambhai GaraniyaVikrambhai Garaniya, Roberto Ojeda RabanalRoberto Ojeda RabanalModelling depth of long-term pitting corrosion is of interest for engineers in predicting the structural longevity of ocean infrastructures. Conventional models demonstrate poor quality in predicting the long-term pitting corrosion depth. Recently developed phenomenological models provide a strong understanding of the pitting process however they have limited engineering applications. In this study, a novel probabilistic model is developed for predicting the long-term pitting corrosion depth of steel structures in marine environment using Bayesian Network. The proposed Bayesian Network model combines an understanding of corrosion phenomenological model and empirical model calibrated using real-world data. A case study, which exemplifies the application of methodology to predict the pit depth of structural steel in long-term marine environment, is presented. The result shows that the proposed methodology succeeds in predicting the time dependent, long-term anaerobic pitting corrosion depth of structural steel in different environmental and operational conditions.
Funding
University of Tasmania
History
Publication title
Journal of Offshore Mechanics and Arctic EngineeringVolume
139Issue
5Article number
051402Number
051402Pagination
1-11ISSN
0892-7219Department/School
Australian Maritime CollegePublisher
American Society for Mechanical EngineersPlace of publication
USARights statement
Copyright 2017 by ASMERepository Status
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