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| Pipeline Corrosion Prediction Method Based on Physics-informed Neural Networks |
ZHOU Taotao1,2,3, LIU Yingzheng1,2,3( ), ZHENG Wenpei1,2,3, JIANG Hengliang4, LIU Haipeng4, XIA Gang4 |
1 College of Safety and Ocean Engineering, China University of Petroleum (Beijing), Beijing 102249, China 2 Key Laboratory of Oil and Gas Safety and Emergency Technology, Ministry of Emergency Management, Beijing 102249, China 3 Key Laboratory of Oil and Gas Production Equipment Quality Inspection and Health Diagnosis, State Administration for Market Regulation, Beijing 102249, China 4 China National Oil and Gas Exploration and Development Corporation Limited, Beijing 102100, China |
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Cite this article:
ZHOU Taotao, LIU Yingzheng, ZHENG Wenpei, JIANG Hengliang, LIU Haipeng, XIA Gang. Pipeline Corrosion Prediction Method Based on Physics-informed Neural Networks. Journal of Chinese Society for Corrosion and protection, 2025, 45(5): 1320-1330.
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Abstract With the increasing oil and gas exploration, the number of service pipelines is growing, making the accurate prediction of internal corrosion crucial for pipeline integrity management. To address the limitations of traditional machine learning methods in interpreting and generalizing corrosion rate predictions, the monotonic relationships between temperature, CO2 partial pressure, and corrosion rate are incorporated into a Physics-Informed Neural Network (PINN). This approach is designed to adhere to mechanistic constraints, avoid overfitting and underfitting, and ensure physical consistency. The PINN model is shown to outperform Support Vector Machines (SVM), Extreme Gradient Boosting (XGBoost), and Artificial Neural Networks (ANN), demonstrating superior accuracy and generalization.
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Received: 06 November 2024
32134.14.1005.4537.2024.363
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| Fund: National Natural Science Foundation of China(72301294);Cooperation Technology Projects of CNPC (China National Petroleum Corporation) and CUPB (China University of Petroleum, Beijing)(ZLZX2020-05);Program for Youth Talents by the China University of Petroleum-Beijing(2462023BJRC016) |
Corresponding Authors:
LIU Yingzheng, E-mail: liuyingzheng2024@126.com
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