The research progress and prospect of data mining methods on corrosion prediction of oil and gas pipelines

Title

The research progress and prospect of data mining methods on corrosion prediction of oil and gas pipelines

Subject

Corrosion control effect
Corrosion data
Decision support
Machine learning
Oil and gas pipeline systems

Description

As the principal means of oil and natural gas transportation, oil and gas pipeline systems suffer from common corrosion problems, accurate corrosion prediction of oil and gas pipelines has an essential influence on pipe material selection, remaining useful life prediction, maintenance planning, etc. At present, a large number of corrosion monitoring techniques are applied in oil and gas pipeline systems. The monitored data have the characteristics of multidimensional quantities, noise interference, non-linearity, etc. Machine learning can effectively solve the limitations of relying solely on mathematical models to achieve intelligent corrosion prediction and improve the corrosion control effect. Considering the corrosion prediction problems in oil and gas pipeline systems, the application of machine learning methods in corrosion rate prediction, oil and gas pipeline leakage and defect assessment, and corrosion image recognition were focused on in this paper. By constructing the application framework of machine learning in the field of oil and gas pipeline corrosion prediction, the necessity of data preprocessing and feature correlation analysis are indicated in this paper. Furthermore, random forest and deep learning have extensive application prospects in this field. Finally, the application prospects of machine learning were discussed.
106951
144

Creator

Xu, Lei
Wang, Yunfu
Mo, Lin
Tang, Yongfan
Wang, Feng
Li, Changjun

Publisher

Engineering Failure Analysis

Date

2023

Type

journalArticle

Identifier

1350-6307
10.1016/j.engfailanal.2022.106951

Collection

Citation

Xu, Lei et al., “The research progress and prospect of data mining methods on corrosion prediction of oil and gas pipelines,” Lamar University Midstream Center Research, accessed May 13, 2024, https://lumc.omeka.net/items/show/27565.

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