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A machine learning framework for aerodynamic lift-to-drag ratio prediction of multi-stepped airfoils
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作者 ahmed M.Elshewey Mohamed A.Aziz +3 位作者 Shery Asaad Wahba Marzouk ahmed m.elsayed Hazem M.El-Bakry ahmed M.Osman 《Aerospace Systems》 2026年第1期147-165,共19页
This paper proposes a machine learning framework for accurately predicting the aerodynamic lift-to-drag ratio(CL/CD)of multi-stepped airfoils under varied flow conditions.Experimental wind-tunnel data were collected f... This paper proposes a machine learning framework for accurately predicting the aerodynamic lift-to-drag ratio(CL/CD)of multi-stepped airfoils under varied flow conditions.Experimental wind-tunnel data were collected for multiple step configurations,and a stacked ensemble model combining XGBoost,Support Vector Regression(SVR),and K-Nearest Neighbors(KNN)with a Random Forest meta-learner was developed for prediction.The proposed model achieved a test R^(2)of 0.9951 and a tenfold cross-validation R^(2) of 0.9872±0.0043,demonstrating superior accuracy compared to individual regressors.This approach provides a fast,data-driven alternative to conventional CFD simulations,enabling reliable prediction of aerodynamic performance and efficient airfoil optimization. 展开更多
关键词 Multi-stepped airfoil Lift-to-drag ratio(CL/CD) Aerodynamic performance prediction Machine learning in aerodynamics Airfoil optimization SHAP interpretability
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