系列(地层学)
腐蚀
机器学习
人工智能
计算机科学
地质学
地貌学
古生物学
作者
Wei Li,Jinkui Feng,Jin Deng,Qianqian Jiao,Fang Zhou
出处
期刊:Journal of Fluids Engineering-transactions of The Asme
[ASM International]
日期:2025-05-09
卷期号:147 (11)
摘要
Abstract Erosion in industrial pipelines is inevitable, making accurate prediction essential for ensuring equipment safety. This study employs interpretable machine learning models to predict erosion in serial elbows under gas–solid flow conditions. A predictive model was developed by integrating computational fluid dynamics (CFD) with the Euler–Lagrange method. Latin hypercube sampling (LHS) was applied to five key factors influencing pipeline erosion rates (ER). Five tree-based ensemble machine learning models were selected, optimized using grid search, and subsequently employed to predict the wall-averaged and maximum erosion rates at both upstream and downstream elbows in serial pipelines. To analyze feature interactions, correlation analysis, Shapley Additive Explanations (SHAP), and response surface methods were utilized. Results indicate that the optimized CatBoost model demonstrated high accuracy in predicting gas–solid erosion in serial elbows, while SHAP analysis enhanced model interpretability. In combination with correlation and response surface analyses, both qualitative and quantitative evaluations of factor interactions were conducted. This study improves the predictive capability and interpretability of industrial pipeline erosion modeling, offering valuable insights for erosion prevention and control in industrial applications.
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