Hierarchical Bayesian Corrosion Growth Model Based on In-Line Inspection Data

Author:

Al-Amin Mohammad1,Zhou Wenxing2,Zhang Shenwei3,Kariyawasam Shahani4,Wang Hong5

Affiliation:

1. Engineer-in-Training TransCanada Corporation, 450-1st Street SW, Calgary, AB T2P 5H1, Canada e-mail:

2. Assistant Professor Department of Civil and Environmental Engineering, Western University, London, ON N6A 5B9, Canada e-mail:

3. Department of Civil and Environmental Engineering, Western University, London, ON N6A 5B9, Canada e-mail:

4. Principal Engineer TransCanada Corporation, 450-1st Street SW, Calgary, AB T2P 5H1, Canada e-mail:

5. Risk Engineer TransCanada Corporation, 450-1st Street SW, Calgary, AB T2P 5H1, Canada e-mail:

Abstract

A hierarchical Bayesian growth model is presented in this paper to characterize and predict the growth of individual metal-loss corrosion defects on pipelines. The depth of the corrosion defects is assumed to be a power-law function of time characterized by two power-law coefficients and the corrosion initiation time, and the probabilistic characteristics of the these parameters are evaluated using Markov Chain Monte Carlo (MCMC) simulation technique based on in-line inspection (ILI) data collected at different times for a given pipeline. The model accounts for the constant and non-constant biases and random scattering errors of the ILI data, as well as the potential correlation between the random scattering errors associated with different ILI tools. The model is validated by comparing the predicted depths with the field-measured depths of two sets of external corrosion defects identified on two real natural gas pipelines. The results suggest that the growth model is able to predict the growth of active corrosion defects with a reasonable degree of accuracy. The developed model can facilitate the pipeline corrosion management program.

Publisher

ASME International

Subject

Mechanical Engineering,Mechanics of Materials,Safety, Risk, Reliability and Quality

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