Enhancing FRP-concrete interface bearing capacity prediction with explainable machine learning: A feature engineering approach and SHAP analysis

被引:14
作者
Zhu, Yanping [1 ]
Taffese, Woubishet Zewdu [1 ]
Chen, Genda [1 ]
机构
[1] Missouri Univ Sci & Technol, Dept Civil Architectural & Environm Engn, Rolla, MO 65401 USA
关键词
Machine learning; Feature engineering; Shear bearing capacity; FRP-Concrete interface; Shapley additive explanation; STRENGTHENED RC BEAMS; BOND STRENGTH; BEHAVIOR; MODEL; PLATE;
D O I
10.1016/j.engstruct.2024.118831
中图分类号
TU [建筑科学];
学科分类号
0813 ;
摘要
This study introduces a novel approach to predict the shear bearing capacity of FRP-concrete interfaces using explainable machine learning. Eight algorithms are employed: three standalone models (Artificial Neural Network, Support Vector Regression, and Decision Tree) and five ensemble learning models (Bagging, Random Forest, Adaptive Boosting, Gradient Boosting, and Extreme Gradient Boosting). Four scenarios with varying input features, including engineered features inspired by mechanics-based bearing capacity equations, are examined. Notably, the inclusion of engineered features such as the stiffness of the FRP strip (Kf) K f ) significantly enhanced prediction accuracy and efficiency, although the width correction coefficient ( b f /b c ) did not yield significant benefits, contrary to findings in mechanics-based models. The Extreme Gradient Boosting (XGBoost) algorithm emerged as the top-performing model, achieving an impressive R-square value of 0.949. In terms of explain- ability, the study utilized the Shapley Additive Explanation (SHAP) technique to comprehensively elucidate the significance, dependency, and interaction effects of features within the best-performing model. Remarkable, approximately 75 % of the total mean absolute SHAP values were attributed to Kf f and bf f of the FRP, highlighting their pivotal role in the prediction process. This detailed explanation of the model using SHAP instills trust in the predictions and facilitates its practical implementation in real-world scenarios.
引用
收藏
页数:17
相关论文
共 114 条
[51]   Modeling daily reference evapotranspiration via a novel approach based on support vector regression coupled with whale optimization algorithm [J].
Mohammadi, Babak ;
Mehdizadeh, Saeid .
AGRICULTURAL WATER MANAGEMENT, 2020, 237
[52]   Interpretable Machine Learning - A Brief History, State-of-the-Art and Challenges [J].
Molnar, Christoph ;
Casalicchio, Giuseppe ;
Bischl, Bernd .
ECML PKDD 2020 WORKSHOPS, 2020, 1323 :417-431
[53]  
Monti G, 2003, FIBRE-REINFORCEMENT POLYMER: REINFORCEMENT FOR CONCRETE STRUCTURES, VOLS 1 AND 2, PROCEEDINGS, P183
[54]  
Nakaba K, 2001, ACI STRUCT J, V98, P359
[55]  
Nettleton D., 2014, COMMERCIAL DATA MINI, DOI 10.1016/ B978-0-12-416602-8.00006-6
[56]   Analytical modeling of bond behavior between FRP plate and concrete [J].
Pan, Jinlong ;
Wu, Yu-Fei .
COMPOSITES PART B-ENGINEERING, 2014, 61 :17-25
[57]   An optimized XGBoost method for predicting reservoir porosity using petrophysical logs [J].
Pan, Shaowei ;
Zheng, Zechen ;
Guo, Zhi ;
Luo, Haining .
JOURNAL OF PETROLEUM SCIENCE AND ENGINEERING, 2022, 208
[58]  
Pawel C., 2015, Data Mining Algorithms: Explained Using R. Chichester, P118
[59]  
Pedregosa F, 2011, J MACH LEARN RES, V12, P2825
[60]   Experimental study on bond behavior between concrete and FRP reinforcement [J].
Pellegrino, Carlo ;
Tinazzi, Davide ;
Modena, Claudio .
JOURNAL OF COMPOSITES FOR CONSTRUCTION, 2008, 12 (02) :180-189