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Journal Article

Citation

Xie J, Zhang L, Zheng Q, Liu X, Dubljevic S, Zhang H. Earthq. Struct. 2021; 20(1): 109-122.

Copyright

(Copyright © 2021, KoreaScience Techno-Press)

DOI

10.12989/eas.2021.20.1.109

PMID

unavailable

Abstract

Significant progress in the oil and gas industry advances the application of pipeline into an intelligent era, which poses rigorous requirements on pipeline safety, reliability, and maintainability, especially when crossing seismic zones. In general, strike-slip faults are prone to induce large deformation leading to local buckling and global rupture eventually. To evaluate the performance and safety of pipelines in this situation, numerical simulations are proved to be a relatively accurate and reliable technique based on the built-in physical models and advanced grid technology. However, the computational cost is prohibitive, so one has to wait for a long time to attain a calculation result for complex large-scale pipelines. In this manuscript, an efficient and accurate surrogate model based on machine learning is proposed for strain demand prediction of buried X80 pipelines subjected to strike-slip faults. Specifically, the support vector regression model serves as a surrogate model to learn the high-dimensionally nonlinear relationship which maps multiple input variables, including pipe geometries, internal pressures, and strike-slip displacements, to output variables (namely tensile strains and compressive strains). The effectiveness and efficiency of the proposed method are validated by numerical studies considering different effects caused by structural sizes, internal pressure, and strike-slip movements. © 2021. Techno-Press

Keywords: Pipeline transportation


Language: en

Keywords

Accident prevention; Pipelines; Steel pipe; Numerical methods; Fault slips; Strain; Strike-slip faults; Gas industry; Petroleum industry; Crossings (pipe and cable); Support vector regression

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