This study is aimed to predict the behaviour of channel shear connectors in composite floor systems at different temperatures. For this purpose, a soft computing approach is adopted. Two novel intelligence methods, including an Extreme Learning Machine (ELM) and a Genetic Programming (GP), are developed. In order to generate the required data for the intelligence methods, several push-out tests were conducted on various channel connectors at different temperatures. The dimension of the channel connectors, temperature, and slip are considered as the inputs of the models, and the strength of the connector is predicted as the output. Next, the performance of the ELM and GP is evaluated by developing an Artificial Neural Network (ANN). Finally,...
This study presents the application of soft computing techniques, namely, as multiple regressions (M...
Experimental and numerical investigations are presented for a theory-guided machine learning (ML) mo...
Experimental studies using a substantial number of datasets can be avoided by employing efficient me...
Evaluation of the parameters affecting the shear strength and ductility of steel–concrete composite ...
The aim of this paper is to study the performance of a composite floor system at different heat stag...
The strength of concrete elements under shear is a complex phenomenon, which is induced by several e...
In recent times, the use of fibre-reinforced plastic (FRP) has increased in reinforcing concrete str...
The experimental behavior of reinforced concrete elements exposed to fire is limited in the literatu...
In this research, a machine learning model namely extreme learning machine (ELM) is proposed to pred...
Steel-fiber-reinforced concrete (SFRC) has emerged as a viable and efficient substitute for traditio...
In this paper, it is aimed to propose prediction approaches for the 28-day compressive strength of P...
An effort has been made to develop concrete compressive strength prediction models with the help of ...
The artificial neural network and support vector machine were used to estimate the compressive stren...
ABSTRACT- This paper presents an results of experimental investigation conducted to evaluate the pos...
The experimental design of high-strength concrete (HSC) requires deep analysis to get the target str...
This study presents the application of soft computing techniques, namely, as multiple regressions (M...
Experimental and numerical investigations are presented for a theory-guided machine learning (ML) mo...
Experimental studies using a substantial number of datasets can be avoided by employing efficient me...
Evaluation of the parameters affecting the shear strength and ductility of steel–concrete composite ...
The aim of this paper is to study the performance of a composite floor system at different heat stag...
The strength of concrete elements under shear is a complex phenomenon, which is induced by several e...
In recent times, the use of fibre-reinforced plastic (FRP) has increased in reinforcing concrete str...
The experimental behavior of reinforced concrete elements exposed to fire is limited in the literatu...
In this research, a machine learning model namely extreme learning machine (ELM) is proposed to pred...
Steel-fiber-reinforced concrete (SFRC) has emerged as a viable and efficient substitute for traditio...
In this paper, it is aimed to propose prediction approaches for the 28-day compressive strength of P...
An effort has been made to develop concrete compressive strength prediction models with the help of ...
The artificial neural network and support vector machine were used to estimate the compressive stren...
ABSTRACT- This paper presents an results of experimental investigation conducted to evaluate the pos...
The experimental design of high-strength concrete (HSC) requires deep analysis to get the target str...
This study presents the application of soft computing techniques, namely, as multiple regressions (M...
Experimental and numerical investigations are presented for a theory-guided machine learning (ML) mo...
Experimental studies using a substantial number of datasets can be avoided by employing efficient me...