The use of periodical elliptically-based web (EBW) openings in high strength steel (HSS) beams has been increasingly popular in recent years mainly because of the high strength-to-weight ratio and the reduction in the floor height as a result of allowing different utility services to pass through the web openings. However, these sections are susceptible to web-post buckling (WPB) failure mode and therefore it is imperative that an accurate design tool is made available for prediction of the web-post buckling capacity. Therefore, the present paper aims to implement the power of various machine learning (ML) methods for prediction of the WPB capacity in HSS beams with (EBW) openings and to assess the performance of existing analytical design ...
The design model for the resistance of headed stud connectors was originally developed from push tes...
Cellular beams are an attractive option for the steel construction industry due to their versatility...
The present paper aims to develop an Artificial Neural Network (ANN) formula to predict the LTB resi...
This paper aims to propose an Artificial Neural Network (ANN) model that predicts accurately web-pos...
The aim of this paper is to predict web-post buckling shear strength of cellular beams made from nor...
Large web openings introduce complex structural behaviors and additional failure modes of steel cell...
In this paper, the influence of the web-post geometric parameters on the shear buckling resistance o...
For the design of high strength steel bolted connections, all existing standards adopt the same fram...
There has been an increase in the use of high-strength steel in several countries, as they provide d...
The use of circular hollow sections (CHS) has increased in recent years owing to its excellent mecha...
This paper presents an experimental and analytical study on the behaviour of perforated steel beams ...
Castellated steel beams (CSB) are an attractive option for the steel construction industry thanks to...
The current method of assessment is based on FE models which still lack computational efficiency and...
This study pioneers the application of machine learning (ML) for predicting the bearing strength of ...
The economical and reliable design of steel-concrete composite structures relies on accurate predict...
The design model for the resistance of headed stud connectors was originally developed from push tes...
Cellular beams are an attractive option for the steel construction industry due to their versatility...
The present paper aims to develop an Artificial Neural Network (ANN) formula to predict the LTB resi...
This paper aims to propose an Artificial Neural Network (ANN) model that predicts accurately web-pos...
The aim of this paper is to predict web-post buckling shear strength of cellular beams made from nor...
Large web openings introduce complex structural behaviors and additional failure modes of steel cell...
In this paper, the influence of the web-post geometric parameters on the shear buckling resistance o...
For the design of high strength steel bolted connections, all existing standards adopt the same fram...
There has been an increase in the use of high-strength steel in several countries, as they provide d...
The use of circular hollow sections (CHS) has increased in recent years owing to its excellent mecha...
This paper presents an experimental and analytical study on the behaviour of perforated steel beams ...
Castellated steel beams (CSB) are an attractive option for the steel construction industry thanks to...
The current method of assessment is based on FE models which still lack computational efficiency and...
This study pioneers the application of machine learning (ML) for predicting the bearing strength of ...
The economical and reliable design of steel-concrete composite structures relies on accurate predict...
The design model for the resistance of headed stud connectors was originally developed from push tes...
Cellular beams are an attractive option for the steel construction industry due to their versatility...
The present paper aims to develop an Artificial Neural Network (ANN) formula to predict the LTB resi...