论文成果
Maximum pitting corrosion depth prediction of buried pipeline based on theory-guided machine learning
摘要:Buried pipelines are crucial for the transportation of oil and natural gas resources. However, pipeline failure accidents have frequently occurred due to corrosion. Therefore, an accurate corrosion depth prediction model is necessary for the reliable supply of energy. In this paper, a theory-guided machine learning (ML) model is developed for maximum pitting corrosion depth prediction, the engineering theory and domain knowledge are integrated into feature space to improve the model interpretability. Firstly, several new feature variables are constructed based on the interactions between independent variables. Then, feature importance of all feature variables is obtained using random forest (RF). A hybrid multi-objective grey wolf optimization (HMOGWO) is proposed to optimize the hyper-parameters of RF model, considering feature number, prediction accuracy, and stability simultaneously. Finally, a comprehensive pitting corrosion dataset is utilized for performance evaluation. The results indicate that the proposed theory-guided model can achieve high prediction accuracy and stability, the optimal feature subset can be determined using multi-objective optimization method simultaneously, which solves the problems of model interpretability and feature selection for traditional ML models with the single-objective optimizer. This study is of great significance to the transportation safety of buried pipelines. 漏 2024 Elsevier Ltd
ISSN号:0308-0161
卷、期、页:卷210
发表日期:2024-08-01
影响因子:0.000000
期刊分区(SCI为中科院分区):二区
收录情况:SCI(科学引文索引印刷版),EI(工程索引),SCIE(科学引文索引网络版)
发表期刊名称:International Journal of Pressure Vessels and Piping
通讯作者:苗兴园
第一作者:赵弘
论文类型:期刊论文
论文概要:苗兴园,赵弘,Maximum pitting corrosion depth prediction of buried pipeline based on theory-guided machine learning,International Journal of Pressure Vessels and Piping,2024,卷210
论文题目:Maximum pitting corrosion depth prediction of buried pipeline based on theory-guided machine learning
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