In this paper, an intelligent modeling approach is presented to predict the shear strength of the internal reinforced concrete (RC) beam-column joints and used to analyze the sensitivity of the influence factors on the shear strength. The proposed approach is established based on the famous boosting-family ensemble machine learning (ML) algorithms, i.e., gradient boosting regression tree (GBRT), which generates a strong predictive model by integrating several weak predictors, which are obtained by the well-known individual ML algorithms, e.g., DT, ANN, and SVM. The strong model is boosted as each weak predictor has its own weight in the final combination according to the performance. Compared with the conventional mechanical-driven shear st...
The shear strength prediction of fiber-reinforced polymer- (FRP-) reinforced concrete beams is one o...
Despite modern advancements in structural engineering, the behavior and design of reinforced concret...
This paper aims to present the application of extreme gradient boosting (XGBoost) to the prediction ...
Estimating shear strength is a crucial aspect of beam design. The goal of this research is to develo...
The strength of concrete elements under shear is a complex phenomenon, which is induced by several e...
AbstractA new model is developed for estimating the shear strength of RC interior beam-column connec...
Reinforced concrete slab-column structures, despite their advantages such as architectural flexibili...
The determination of shear strength and the identification of potential failure modes are the crucia...
The influence of concrete mix properties on the shear strength of slender structured concrete beams ...
FPR reinforcing bars have emerged as a promising alternative to steel bars in construction, especial...
A new empirical model to estimate the joint shear strength of both exterior and interior beam-column...
This study presents a new approach for predicting the punching shear strength of reinforced concrete...
Beam-column joints are critical zones in reinforced concrete structures. The behavior of joints is v...
The shear and bending are the actions that are experienced in the beam owing to the fact that the be...
Despite the importance and accuracy of empirical models, most of the existing models are only accura...
The shear strength prediction of fiber-reinforced polymer- (FRP-) reinforced concrete beams is one o...
Despite modern advancements in structural engineering, the behavior and design of reinforced concret...
This paper aims to present the application of extreme gradient boosting (XGBoost) to the prediction ...
Estimating shear strength is a crucial aspect of beam design. The goal of this research is to develo...
The strength of concrete elements under shear is a complex phenomenon, which is induced by several e...
AbstractA new model is developed for estimating the shear strength of RC interior beam-column connec...
Reinforced concrete slab-column structures, despite their advantages such as architectural flexibili...
The determination of shear strength and the identification of potential failure modes are the crucia...
The influence of concrete mix properties on the shear strength of slender structured concrete beams ...
FPR reinforcing bars have emerged as a promising alternative to steel bars in construction, especial...
A new empirical model to estimate the joint shear strength of both exterior and interior beam-column...
This study presents a new approach for predicting the punching shear strength of reinforced concrete...
Beam-column joints are critical zones in reinforced concrete structures. The behavior of joints is v...
The shear and bending are the actions that are experienced in the beam owing to the fact that the be...
Despite the importance and accuracy of empirical models, most of the existing models are only accura...
The shear strength prediction of fiber-reinforced polymer- (FRP-) reinforced concrete beams is one o...
Despite modern advancements in structural engineering, the behavior and design of reinforced concret...
This paper aims to present the application of extreme gradient boosting (XGBoost) to the prediction ...