Corrosion Growth Modeling Based on Mass In-Line Inspection Data Using Variational Inference

M. Birkland, M. Dann
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引用次数: 1

Abstract

In-line inspection (ILI) data is commonly used in corrosion growth models (CGMs) to predict the corrosion growth in energy pipelines. A hierarchical stochastic corrosion growth model is considered in this paper which considers the variations in the corrosion growth, both spatially and temporally, the inherent measurement error of the ILI tools as well as the model uncertainties. These uncertainties are represented as unknown model variables and are often inferred using a Bayesian method [1], [2] and samples of the unknown parameters’ posterior probability density functions (PDFs) are obtained using Markov Chain Monte Carlo (MCMC) sampling techniques [3]. ILIs can result in massive data sets. In order for MCMC-based inference techniques to yield reasonably accurate results, many samples (approaching infinity) are required. This fact in addition to the massive data sets exponentially increases the scale of the inference problem from an attainable solution to a potentially impossible one that is limited by today’s computing power. For this reason, MCMC-based inference techniques can become inefficient in the cases where ILI datasets are large. The objective is to propose variational inference (VI) as an alternative to MCMC to determine a Bayesian solution for the unknown parameters in complex stochastic CGMs. VI produces approximations of the posterior PDFs by treating the inference as an optimization problem. Variational inference emerged from machine learning for Bayesian inference of large data sets; therefore, it is an appropriate tool to use in the analysis of mass pipeline inspection data[4]–[7]. This paper introduces VI to solve the inference problem and provide a solution for a hierarchical stochastic CGM to describe the defect-specific corrosion growth experienced in pipelines based on excessively large ILI datasets. To gauge the accuracy of the VI implementation in the model, the results are compared to a set of values generated using a stochastic gamma process that represents the corrosion growth process experienced by the pipe.
基于大量在线检测数据的变分推理腐蚀生长模型
在线检测(ILI)数据通常用于腐蚀增长模型(cgm)中,以预测能源管道的腐蚀增长。本文提出了一种分层随机腐蚀生长模型,该模型考虑了腐蚀生长的时空变化、ILI工具固有的测量误差以及模型的不确定性。这些不确定性表示为未知模型变量,通常使用贝叶斯方法进行推断[1],[2],并且使用马尔可夫链蒙特卡罗(MCMC)采样技术获得未知参数的后验概率密度函数(pdf)的样本[3]。ili可以产生大量的数据集。为了使基于mcmc的推理技术产生相当准确的结果,需要许多样本(接近无穷大)。除了庞大的数据集之外,这一事实以指数方式增加了推理问题的规模,从可实现的解决方案到受当今计算能力限制的潜在不可能的解决方案。因此,在ILI数据集很大的情况下,基于mcmc的推理技术可能会变得低效。目的是提出变分推理(VI)作为MCMC的替代方案,以确定复杂随机cgm中未知参数的贝叶斯解。VI通过将推理视为优化问题来产生后验pdf的近似值。变分推理源于机器学习,用于大数据集的贝叶斯推理;因此,它是分析大量管道检测数据的合适工具[4]-[7]。本文引入VI来解决推理问题,并提供了一种基于超大ILI数据集的分层随机CGM来描述管道中特定缺陷腐蚀增长的解决方案。为了衡量模型中VI实现的准确性,将结果与使用随机伽马过程生成的一组值进行比较,该过程表示管道所经历的腐蚀生长过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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