Pile foundations usually are used when the upper soil layers are soft clay and, hence, unable to support the structures’ loads. Piles are needed to carry these loads deep into the hard soil layer. Therefore, the safety and stability of pile-supported structures depends on the behavior of the piles. Additionally, an accurate prediction of the piles’ behavior is very important to ensure satisfactory performance of the structures. Although many methods in the literature estimate the settlement of the piles both theoretically and experimentally, methods for comprehensively predicting the load-settlement of piles are very limited. This study develops a new data mining approach called self-learning support vector machine (SL-SVM) to predict the l...
Analysis of pile load-settlement behavior is a complex problem due to the participation of many fact...
In order to have a proper design and analysis for the column of stone in the soft clay soil, it is e...
This paper explores the capabilities of neural networks to predict the static load bearing capacity ...
Pile foundations usually are used when the upper soil layers are soft clay and, hence, unable to sup...
In this study, the least square support vector machine (LSSVM) algorithm was applied to predicting t...
AbstractIn this study, the least square support vector machine (LSSVM) algorithm was applied to pred...
The support vector machine (SVM) is an emerging machine learning technique where prediction error an...
This research presents a novel hybrid prediction technique, namely, self-tuning least squares suppor...
Pile foundations are usually used when the conditions of the upper soil layers are weak and unable t...
Model development for the prediction of the axial load carrying capacity of piles, at least at the m...
Copyright © 2009 Elsevier Ltd All rights reserved.In recent years artificial neural networks (ANNs) ...
This paper presents an artifi cial neural network (ANN) model for the prediction of non-linear behav...
This investigation aimed to examine the load carrying capacity of model piles embedded in sandy soil...
The full-scale static pile loading test is without question the most reliable methodology for estima...
The design of pile foundations requires good estimation of the pile load-carrying capacity and settl...
Analysis of pile load-settlement behavior is a complex problem due to the participation of many fact...
In order to have a proper design and analysis for the column of stone in the soft clay soil, it is e...
This paper explores the capabilities of neural networks to predict the static load bearing capacity ...
Pile foundations usually are used when the upper soil layers are soft clay and, hence, unable to sup...
In this study, the least square support vector machine (LSSVM) algorithm was applied to predicting t...
AbstractIn this study, the least square support vector machine (LSSVM) algorithm was applied to pred...
The support vector machine (SVM) is an emerging machine learning technique where prediction error an...
This research presents a novel hybrid prediction technique, namely, self-tuning least squares suppor...
Pile foundations are usually used when the conditions of the upper soil layers are weak and unable t...
Model development for the prediction of the axial load carrying capacity of piles, at least at the m...
Copyright © 2009 Elsevier Ltd All rights reserved.In recent years artificial neural networks (ANNs) ...
This paper presents an artifi cial neural network (ANN) model for the prediction of non-linear behav...
This investigation aimed to examine the load carrying capacity of model piles embedded in sandy soil...
The full-scale static pile loading test is without question the most reliable methodology for estima...
The design of pile foundations requires good estimation of the pile load-carrying capacity and settl...
Analysis of pile load-settlement behavior is a complex problem due to the participation of many fact...
In order to have a proper design and analysis for the column of stone in the soft clay soil, it is e...
This paper explores the capabilities of neural networks to predict the static load bearing capacity ...