4.7 Article

Prediction of rapid chloride penetration resistance of metakaolin based high strength concrete using light GBM and XGBoost models by incorporating SHAP analysis

Journal

CONSTRUCTION AND BUILDING MATERIALS
Volume 345, Issue -, Pages -

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.conbuildmat.2022.128296

Keywords

Rapid Chloride Penetration test; Water-binder ratio; Machine learning; SHAP Analysis; LightGBM; XGBoost

Funding

  1. Deanship of Scientific Research, Vice Presidency for Graduate Studies and Scientific Research, King Faisal University, Saudi Arabia [GRANT410]

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This study investigates the non-linear capabilities of two machine learning prediction models, Light GBM and XGBoost, for predicting RCPT values. The study found that LightGBM surpasses XGBoost in prediction accuracy and that the W/B ratio and MK replacement are of significant importance in resisting chloride penetration.
This study investigates the non-linear capabilities of two machine learning prediction models, namely Light GBM and XGBoost, for predicting the values of Rapid Chloride Penetration Test (RCPT). Chloride penetration is one of the most significant issues affecting reinforced concrete (RC) structures, which necessitate frequent maintenance and repair. The mix design of concrete play a vital role in the formation of pore structure that is relatively more resistant to chloride attacks. For estimating the chloride resistance of concrete, 201 experimental records, incorporating aging of concrete, binder content, water-binder ratio, percentage of metakaolin, and content of fine and coarse aggregates as input variables. The models were trained using grid search optimization for tuning setting parameters to yield the best performance for the models. The performance of the models using statistical indices indicated LightGBM surpasses in prediction accuracy as compared to XGBoost model. The coefficient of determination (R-2) values revealed 0.9738 and 0.9379 for LightGBM and XGBoost models, respectively. The minimum value of MAE was recorded for the training data of the LightGBM model equalling 172.7 C. The best fit model, i.e., the LightGBM model, was used for SHAP analysis to see the relative importance of contributing attributes and optimization of input variables. The SHAP analysis revealed fc', aging, and W/B ratio as most significant in yielding RCPT, whereas individual interpretation of Shapley values showed that W/B ratio of 0.30 - 0.35 and 15% MK replacement highly resisted chloride penetration at higher compressive strength values.

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