Artificial Intelligence AI Assisted Thermography to Detect Corrosion Under Insulation CUI

A. Amer, Ali Alshehri, H. Saiari, Ali Meshaikhis, Abdulaziz Alshamrany
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引用次数: 2

Abstract

Corrosion under insulation (CUI) is a critical challenge that affects the integrity of assets where the oil and gas industry is not immune. Its severity arises due to its hidden nature as it can often times go unnoticed. CUI is stimulated, in principle, by moisture ingress through the insulation layers to the surface of the pipeline. This Artificial Intelligence (AI)-powered detection technology stemmed from an urgent need to detect the presence of these corrosion types. The new approach is based on a Cyber Physical (CP) system that maximizes the potential of thermographic imaging by using a Machine Learning application of Artificial Intelligence. In this work, we describe how common image processing techniques from infra-red images of assets can be enhanced using a machine learning approach allowing the detection of locations highly vulnerable to corrosion through pinpointing locations of CUI anomalies and areas of concern. The machine learning is examining the progression of thermal images, captured over time, corrosion and factors that cause this degradation are predicted by extracting thermal anomaly features and correlating them with corrosion and irregularities in the structural integrity of assets verified visually during the initial learning phase of the ML algorithm. The ML classifier has shown outstanding results in predicting CUI anomalies with a predictive accuracy in the range of 85 – 90% projected from 185 real field assets. Also, IR imaging by itself is subjective and operator dependent, however with this cyber physical transfer learning approach, such dependency has been eliminated. The results and conclusions of this work on real field assets in operation demonstrate the feasibility of this technique to predict and detect thermal anomalies directly correlated to CUI. This innovative work has led to the development of a cyber-physical that meets the demands of inspection units across the oil and gas industry, providing a real-time system and online assessment tool to monitor the presence of CUI enhancing the output from thermography technologies, using Artificial Intelligence (AI) and machine learning technology. Additional benefits of this approach include safety enhancement through non-contact online inspection and cost savings by reducing the associated scaffolding and downtime.
人工智能AI辅助热成像检测绝缘层腐蚀CUI
绝缘层腐蚀(CUI)是影响资产完整性的关键挑战,油气行业也无法幸免。它的严重性源于它的隐蔽性,因为它经常被忽视。原则上,CUI是由通过保温层进入管道表面的水分引起的。这种人工智能(AI)驱动的检测技术源于检测这些腐蚀类型的迫切需求。新方法基于网络物理(CP)系统,通过使用人工智能的机器学习应用程序,最大限度地发挥热成像的潜力。在这项工作中,我们描述了如何使用机器学习方法增强来自资产红外图像的常见图像处理技术,通过精确定位CUI异常位置和关注区域来检测高度易受腐蚀的位置。机器学习正在检查热图像的进展,随着时间的推移,腐蚀和导致这种退化的因素通过提取热异常特征,并将其与腐蚀和不规则的资产结构完整性相关联,在ML算法的初始学习阶段进行视觉验证。ML分类器在预测崔异常方面显示出出色的结果,预测准确率在85 - 90%之间,预测185个实际油田资产。此外,红外成像本身是主观的,依赖于操作员,然而,通过这种网络物理迁移学习方法,这种依赖已经消除。在实际油田资产上的工作结果和结论证明了该技术预测和检测与CUI直接相关的热异常的可行性。这项创新工作促进了网络物理的发展,满足了整个石油和天然气行业检测单位的需求,提供了一个实时系统和在线评估工具来监测CUI的存在,利用人工智能(AI)和机器学习技术提高了热成像技术的输出。这种方法的其他好处包括通过非接触式在线检查提高安全性,并通过减少相关脚手架和停机时间节省成本。
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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