An accurate prediction of pile capacity under axial loads is necessary for the design. This paper presents the development of a new model to predict axial capacity of pile foundations driven into cohesive soils. Gene expression programming technique (GEP) has been utilized for this purpose. The data used for development of the GEP model is collected from the literature and comprise a series of in-situ driven piles load tests as well as cone penetration test (CPT) results. The data are divided into two subsets: training set for model calibration and independent validation set for model verification. Predictions from the GEP model are compared with experimental data and with predictions of number of currently adopted CPT-based methods. The re...
In this study, the least square support vector machine (LSSVM) algorithm was applied to predicting t...
AbstractThe design of pile foundations requires good estimations of the pile load-carrying capacity ...
AbstractIn this study, a gene expression programming (GEP) approach was employed to develop modified...
Numerous methods have been proposed to assess the axial capacity of pile foundations. Most of the me...
The behavior of pile foundations under axial loading is complex and not yet entirely understood. Mos...
This paper presents the development of a new model to predict the lateral capacity of piles inserted...
This study presents the development of a new model obtained from the correlation of dynamic input an...
AbstractThis study presents the development of a new model obtained from the correlation of dynamic ...
The settlement design of bored piles socketed into rock has received considerable attention. Althoug...
In the last few decades, numerous methods have been developed for predicting the axial capacity of p...
This paper presents an application of two advanced approaches, Artificial Neural Networks (ANN) and ...
An accurate prediction of pile load-settlement behavior under axial load is necessary for design. Th...
Prediction of pile bearing capacity has been considered an unsolved problem for years. This study pr...
The design of pile foundations requires good estimation of the pile load-carrying capacity and settl...
The complication linked with the prediction of the ultimate capacity of concrete-filled steel tubes ...
In this study, the least square support vector machine (LSSVM) algorithm was applied to predicting t...
AbstractThe design of pile foundations requires good estimations of the pile load-carrying capacity ...
AbstractIn this study, a gene expression programming (GEP) approach was employed to develop modified...
Numerous methods have been proposed to assess the axial capacity of pile foundations. Most of the me...
The behavior of pile foundations under axial loading is complex and not yet entirely understood. Mos...
This paper presents the development of a new model to predict the lateral capacity of piles inserted...
This study presents the development of a new model obtained from the correlation of dynamic input an...
AbstractThis study presents the development of a new model obtained from the correlation of dynamic ...
The settlement design of bored piles socketed into rock has received considerable attention. Althoug...
In the last few decades, numerous methods have been developed for predicting the axial capacity of p...
This paper presents an application of two advanced approaches, Artificial Neural Networks (ANN) and ...
An accurate prediction of pile load-settlement behavior under axial load is necessary for design. Th...
Prediction of pile bearing capacity has been considered an unsolved problem for years. This study pr...
The design of pile foundations requires good estimation of the pile load-carrying capacity and settl...
The complication linked with the prediction of the ultimate capacity of concrete-filled steel tubes ...
In this study, the least square support vector machine (LSSVM) algorithm was applied to predicting t...
AbstractThe design of pile foundations requires good estimations of the pile load-carrying capacity ...
AbstractIn this study, a gene expression programming (GEP) approach was employed to develop modified...