使用人工智能技术评估被破坏和恶化的输油管道运输系统的决策支持系统。第1部分:建模

IF 2.7 4区 材料科学 Q3 ELECTROCHEMISTRY Corrosion Reviews Pub Date : 2022-05-20 DOI:10.1515/corrrev-2021-0080
Jonathan J. Cid-Galiot, A. Aguilar-Lasserre, J. R. Grande-Ramírez, Ramiro Meza-Palacios, J. P. Rodríguez-Jarquin
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引用次数: 1

摘要

摘要世界范围内的石油和天然气行业正面临着各种管道运输系统腐蚀造成的人为破坏和机械退化问题,新冠肺炎导致的碳氢化合物价格下跌,以及维修过程的限制。本文通过在墨西哥的一个案例研究中开发结合现场数据、实验室和认知知识的智能评估模型,为管道运输系统(PTS)的知识和管理提供了原始贡献,而不会产生直接的高影响,有助于减少腐蚀造成的财产损失。该研究分为第1部分:建模,一个模糊专家系统(FES)将腐蚀专家和机械完整性研究(MIS)的知识统一起来,并确定了可靠性为0.9029的进化腐蚀模式。由统计学和金相学支持的人工神经网络(ANN)确定了0.9556的测试可靠性,并根据墨西哥碳氢化合物混合物与碳钢相比的性能确定了其缓蚀能力(C)。第2部分:PTS在腐蚀性影响下的运营和经济风险分析,使用蒙特卡罗模拟(MCS)估计考虑土壤腐蚀性、供应、需求和通货膨胀的各种财务情景。
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Decision support system to evaluate a vandalized and deteriorated oil pipeline transportation system using artificial intelligence techniques. Part 1: modeling
Abstract The oil and gas industry worldwide is experiencing problems of vandalism and mechanical deterioration due to corrosion in its various pipeline transport systems, a drop in the price of hydrocarbons due to the COVID-19, limitation of maintenance processes. This article provides a contribution original to the knowledge and management of a pipeline transportation system (PTS), without an immediate high impact that would help reduce property loss due to corrosion, through the development of intelligent evaluation models that combine field data, laboratory, and cognitive knowledge in a case study in Mexico. The research is divided into Part 1: modeling, a Fuzzy expert system (FES) unified the knowledge of corrosion specialists and mechanical integrity studies (MIS) and identified evolutionary corrosion patterns with reliability of 0.9029. An artificial neural network (ANN) supported by statistics and metallography establishes test reliability of 0.9556 and determines the corrosion inhibition capacity (C) of Mexican hydrocarbon mixtures based on their properties compared to carbon steel. Part 2: analysis of the operational and economic risk of the PTS under corrosive effects, using Monte Carlo simulation (MCS) estimates various financial scenarios considering corrosive profiles of soils, supply, demand, and inflation.
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来源期刊
Corrosion Reviews
Corrosion Reviews 工程技术-材料科学:膜
CiteScore
5.20
自引率
3.10%
发文量
44
审稿时长
4.5 months
期刊介绍: Corrosion Reviews is an international bimonthly journal devoted to critical reviews and, to a lesser extent, outstanding original articles that are key to advancing the understanding and application of corrosion science and engineering in the service of society. Papers may be of a theoretical, experimental or practical nature, provided that they make a significant contribution to knowledge in the field.
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