Stochastic modeling of pitting corrosion in underground pipelines using Markov chains

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Abstract

A non-homogenous, linear growth (pure birth) Markov process, with discrete states in continuous time, has been used to model external pitting corrosion in underground pipelines. The transition probability function for the pit depth is obtained from the analytical solution of the forward Kolmogorov equations for this process. The parameters of the transition probability function between depth states can be identified from the observed time evolution of the mean of the pit depth distribution. Monte Carlo simulations were used to predict the time evolution of the mean value of the pit depth distribution in soils with different physicochemical characteristics. The simulated distributions have been used to create an empirical Markov-chain-based stochastic model for predicting the evolution of pitting corrosion from the observed properties of the soil in contact with the pipeline. Real-life case studies, involving simulated and measured pit depth distributions are presented to illustrate the application of the proposed Markov chains model.

Original languageEnglish
JournalRio Pipeline Conference and Exposition, Technical Papers
Volume2009-September
StatePublished - 2009
Externally publishedYes
Event2009 Rio Pipeline Conference and Exposition - Rio de Janeiro, Brazil
Duration: 22 Sep 200924 Sep 2009

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