The seismic bearing capacity of a shallow strip footing above a void displays a complex dependence on several characteristics, linked to geometric problems and to the soil properties. Hence, setting analytical models to estimate such bearing capacity is extremely challenging. In this work, machine learning (ML) techniques have been employed to predict the seismic bearing capacity of a shallow strip footing located over a single unsupported rectangular void in heterogeneous soil. A dataset consisting of 38,000 finite element limit analysis simulations has been created, and the mean value between the upper and lower bounds of the bearing capacity has been computed at the varying undrained shear strength and internal friction angle of the soil...
Copyright © 2008 Elsevier Ltd All rights reserved.In reality, footings are most likely to be founded...
This study investigates to provide a fast solution to the problem of bearing capacity in layered soi...
In the recent past years, utilization of intelligent models for solving geotechnical problems has re...
The seismic bearing capacity of a shallow strip footing above a void displays a complex dependence o...
The seismic bearing capacity of a shallow strip footing above a void displays a complex dependence o...
The estimation of the seismic bearing capacity of strip footing is of paramount importance in geotec...
The utilization of Artificial Neural Network (ANN) for bearing capacity estimation has some disadvan...
In this study, two different approaches are proposed to determine the ultimate bearing capacity of s...
Laboratory model tests have been conducted on a strip foundation resting over multi-layered geogrid-...
In the present work, we employed artificial neural network (ANN) that is optimized with two hybrid m...
573-582The present study aims to utilise machine learning techniques in order to predict the dimensi...
The aim of the present study is to apply machine learning technique to predict the ultimate bearing ...
Thin-walled spread foundations are used in coastal projects where the soil strength is relatively lo...
This study developed machine learning (ML) models for predicting the peak lateral displacements of s...
Urbanization is evident in some municipalities in Pampanga specifically in San Fernando and Santo To...
Copyright © 2008 Elsevier Ltd All rights reserved.In reality, footings are most likely to be founded...
This study investigates to provide a fast solution to the problem of bearing capacity in layered soi...
In the recent past years, utilization of intelligent models for solving geotechnical problems has re...
The seismic bearing capacity of a shallow strip footing above a void displays a complex dependence o...
The seismic bearing capacity of a shallow strip footing above a void displays a complex dependence o...
The estimation of the seismic bearing capacity of strip footing is of paramount importance in geotec...
The utilization of Artificial Neural Network (ANN) for bearing capacity estimation has some disadvan...
In this study, two different approaches are proposed to determine the ultimate bearing capacity of s...
Laboratory model tests have been conducted on a strip foundation resting over multi-layered geogrid-...
In the present work, we employed artificial neural network (ANN) that is optimized with two hybrid m...
573-582The present study aims to utilise machine learning techniques in order to predict the dimensi...
The aim of the present study is to apply machine learning technique to predict the ultimate bearing ...
Thin-walled spread foundations are used in coastal projects where the soil strength is relatively lo...
This study developed machine learning (ML) models for predicting the peak lateral displacements of s...
Urbanization is evident in some municipalities in Pampanga specifically in San Fernando and Santo To...
Copyright © 2008 Elsevier Ltd All rights reserved.In reality, footings are most likely to be founded...
This study investigates to provide a fast solution to the problem of bearing capacity in layered soi...
In the recent past years, utilization of intelligent models for solving geotechnical problems has re...