© 2018 IEEE. The principal aim of this study was to develop and verify a new Artificial Intelligence model to predict the hyperbolic soil stress-strain parameter, namely the modulus exponent (n). To achieve the planned aim, artificial neural network was developed and trained, additionally, it targeted to provide an appropriate empirical model to predict the parameter n with high efficiency. A database of laboratory measurements encompasses total of (83) case records for modulus exponent (n). Four input parameters namely: Dry unit weight, Plasticity index, Confining stress, and Water content, are considered to have the most substantial influence on the nonlinear soil stress-train relationship parameter, which are used as individual input par...
Abstract- The behaviour of soil at the location of the project and interactions of the earth materia...
The compression index and recompression index are one of the important compressibility parameters to...
Expansive soils exhibit significantly high volumetric deformations and so pose a serious threat to s...
© 2018 IEEE. The principal aim of this study was to develop and verify a new Artificial Intelligence...
The elastic modulus of soil is a key parameter for geotechnical projects, transportation engineering...
Part 16: Multi Layer ANNInternational audienceThe use of Neural Networks for modeling systems has be...
The deformation modulus of the rock mass as a very important parameter in rock mechanic projects gen...
Constitutive models are one of the main building blocks of the Finite Element Analysis that nowadays...
Swelling behavior of expansive soil is a complicated phenomenon. In order to cope with the complicat...
The authors presented a good comparison of different artificial neural network (ANN) models to predi...
The pitfalls inherent in the indiscriminate application of artificial neural networks to numerical m...
WOS: 000257088900004Great efforts are required for determination of the effective stress parameter c...
In recent years, the employment of artificial neural networks (ANNs) has risen in various engineerin...
Finite Element Analysis is an application used in many engineering fields, including geotechnical en...
The rock mass deformation modulus (Em) is an essential input parameter in numerical modeling for ass...
Abstract- The behaviour of soil at the location of the project and interactions of the earth materia...
The compression index and recompression index are one of the important compressibility parameters to...
Expansive soils exhibit significantly high volumetric deformations and so pose a serious threat to s...
© 2018 IEEE. The principal aim of this study was to develop and verify a new Artificial Intelligence...
The elastic modulus of soil is a key parameter for geotechnical projects, transportation engineering...
Part 16: Multi Layer ANNInternational audienceThe use of Neural Networks for modeling systems has be...
The deformation modulus of the rock mass as a very important parameter in rock mechanic projects gen...
Constitutive models are one of the main building blocks of the Finite Element Analysis that nowadays...
Swelling behavior of expansive soil is a complicated phenomenon. In order to cope with the complicat...
The authors presented a good comparison of different artificial neural network (ANN) models to predi...
The pitfalls inherent in the indiscriminate application of artificial neural networks to numerical m...
WOS: 000257088900004Great efforts are required for determination of the effective stress parameter c...
In recent years, the employment of artificial neural networks (ANNs) has risen in various engineerin...
Finite Element Analysis is an application used in many engineering fields, including geotechnical en...
The rock mass deformation modulus (Em) is an essential input parameter in numerical modeling for ass...
Abstract- The behaviour of soil at the location of the project and interactions of the earth materia...
The compression index and recompression index are one of the important compressibility parameters to...
Expansive soils exhibit significantly high volumetric deformations and so pose a serious threat to s...