Squat shear walls are widely used in various structures to resist earthquake loads. However, the relevant design expressions found in building codes and literature do not incorporate the influence of all crucial parameters and provide inconsistent peak shear strength estimations. This study adopts the artificial neural network (ANN) to predict the peak shear strength of squat walls using an extensive database that includes the results of 487 walls with wide-ranging test parameters. The ANN models consider the effect of concrete strength, the wall aspect ratio, vertical and horizontal reinforcements, vertical reinforcement of boundary elements, and axial load ratio. These accurately predicted the available test results. They implemented it t...
The use of high-strength concrete (HSC) has significantly increased over the last decade, especially...
© 2022 by Korea Concrete Institute.A numerical shear strength model was proposed for seismic design ...
The artificial neural networks (ANN) was used to develop a number of models in order to predict the ...
A primary objective in the seismic design of structures is to ensure that the capacity of individual...
To provide lateral resistance in structures as well as buildings, there are some types of structural...
This paper analyses the accuracy of a selection of expressions currently available to estimate the i...
Oral Presentation Session: Testing, Monitoring and Experimental Analyses II: no. 267This paper descr...
The flanged, barbell, and rectangular squat reinforced concrete (RC) walls are broadly used in low-r...
The application of artificial neural networks (ANNs) to predict the ultimate shear strengths of rein...
Results are reported from reversed cyclic tests of five large-scale squat wall specimens reinforced ...
This study deals with a modeling approach that integrates shear and flexure interaction to predict t...
A large number of models to predict shear strength of structural walls have been proposed in the lit...
In this study, an analytical model using the strut-and-tie concept was developed to predict reinforc...
This article introduces an artificial neural network (ANN) to estimate the shear strength of reinfor...
yesThis paper investigates the feasibility of using artificial neural networks (NNs) to predict the ...
The use of high-strength concrete (HSC) has significantly increased over the last decade, especially...
© 2022 by Korea Concrete Institute.A numerical shear strength model was proposed for seismic design ...
The artificial neural networks (ANN) was used to develop a number of models in order to predict the ...
A primary objective in the seismic design of structures is to ensure that the capacity of individual...
To provide lateral resistance in structures as well as buildings, there are some types of structural...
This paper analyses the accuracy of a selection of expressions currently available to estimate the i...
Oral Presentation Session: Testing, Monitoring and Experimental Analyses II: no. 267This paper descr...
The flanged, barbell, and rectangular squat reinforced concrete (RC) walls are broadly used in low-r...
The application of artificial neural networks (ANNs) to predict the ultimate shear strengths of rein...
Results are reported from reversed cyclic tests of five large-scale squat wall specimens reinforced ...
This study deals with a modeling approach that integrates shear and flexure interaction to predict t...
A large number of models to predict shear strength of structural walls have been proposed in the lit...
In this study, an analytical model using the strut-and-tie concept was developed to predict reinforc...
This article introduces an artificial neural network (ANN) to estimate the shear strength of reinfor...
yesThis paper investigates the feasibility of using artificial neural networks (NNs) to predict the ...
The use of high-strength concrete (HSC) has significantly increased over the last decade, especially...
© 2022 by Korea Concrete Institute.A numerical shear strength model was proposed for seismic design ...
The artificial neural networks (ANN) was used to develop a number of models in order to predict the ...