DEVELOPMENT OF PREDICTION MODEL OF STEEL FIBER-REINFORCED CONCRETE COMPRESSIVE STRENGTH USING RANDOM FOREST ALGORITHM COMBINED WITH HYPERPARAMETER TUNING AND K-FOLD CROSS-VALIDATION
Because of the incorporation of discontinuous
fibers, steel fiber-reinforced concrete (SFRC) outperforms regular concrete. However, due to its complexity and limited available data, the development
of SFRC strength prediction techniques
is still in its infancy when compared
to that of standard concrete. In this paper, the compressive strength of steel fiber-reinforced concrete was predicted from different variables using the Random forest model. Case studies of 133 samples were used for this aim. To design and validate
the models, we generated training and testing datasets. The proposed models
were developed using ten important material parameters for steel fiber-reinforced
concrete characterization. To minimize
training and testing split bias, the approach used in this study was validated using the 10-fold Cross-Validation procedure.
To determine the optimal hyperparameters
for the Random Forest algorithm,
the Grid Search Cross-Validation approach was utilized. The root mean square error (RMSE), coefficient of determination
(R2), and mean absolute error (MAE) between measured and estimated
values were used to validate and compare
the models. The prediction performance
with RMSE=5.66, R2=0.88 and MAE=3.80 for the Random forest model. Compared with the traditional linear regression model, the outcomes showed that the Random forest model is able to produce enhanced predictive results of the compressive strength of steel fiber-reinforced
concrete. The findings show that
hyperparameter tuning with grid search and cross-validation is an efficient way to find the optimal parameters for the RF
method. Also, RF produces good results and gives an alternate way for anticipating
the compressive strength of SFRC