This paper investigates the artificial neural network (ANN) to predict the dimensionless parameters for contact pressures and contact lengths under the rigid punch, the initial separation loads, and the initial separation distances of a contact problem. The problem consisted of two elastic infinitely layers (EL) loaded by means of a rigid cylindrical punch and resting on a half-infinite plane (HP). Firstly, the problem was formulated and solved theoretically using the Theory of Elasticity (ET). Secondly, the contact problem was extended based on the ANN. External load, the radius of punch, layer heights, and material properties were created by giving examples of different values used at the training and test stages of ANN. Finally, the accu...
In this paper an Artificial Intelligent approach that performs materials' tests and evaluates their ...
A neural network approach for dealing with the solution of frictional contact problems is proposed. ...
This paper explores the ability of physics-informed neural networks (PINNs) to solve forward and inv...
The elastic contact problem, as implemented in some commercial software such as ANSYS, depends on th...
The elastic contact problem, as implemented in some commercial software such as ANSYS, depends on th...
A common problem of excavation machinery based on mechanical actions is the unknown interaction of t...
The frictionless double receding contact problem for two functionally graded (FG) layers pressed by ...
Orientador: Alberto Luiz SerpaDissertação (mestrado) - Universidade Estadual de Campinas, Faculdade ...
In this paper the possibility of using artificial neural network (ANN) in the classification of forc...
Artificial Intelligence has brought many new problem-solving approaches to society in the last few y...
The monitoring of in-service loads on many components has become a routine operation for simple and ...
A back propagation artificialneuralnetwork (BP ANN) is proposed as a tool for numerical modelling of...
Summarization: A two-stage neural network approach is proposed for the elastoplastic analysis of ste...
ABSTRACT Recently online prediction of plate deformations in modern systems have been considered by ...
This paper presents an example of the use of an artificial neural network (ANN) for parameter identi...
In this paper an Artificial Intelligent approach that performs materials' tests and evaluates their ...
A neural network approach for dealing with the solution of frictional contact problems is proposed. ...
This paper explores the ability of physics-informed neural networks (PINNs) to solve forward and inv...
The elastic contact problem, as implemented in some commercial software such as ANSYS, depends on th...
The elastic contact problem, as implemented in some commercial software such as ANSYS, depends on th...
A common problem of excavation machinery based on mechanical actions is the unknown interaction of t...
The frictionless double receding contact problem for two functionally graded (FG) layers pressed by ...
Orientador: Alberto Luiz SerpaDissertação (mestrado) - Universidade Estadual de Campinas, Faculdade ...
In this paper the possibility of using artificial neural network (ANN) in the classification of forc...
Artificial Intelligence has brought many new problem-solving approaches to society in the last few y...
The monitoring of in-service loads on many components has become a routine operation for simple and ...
A back propagation artificialneuralnetwork (BP ANN) is proposed as a tool for numerical modelling of...
Summarization: A two-stage neural network approach is proposed for the elastoplastic analysis of ste...
ABSTRACT Recently online prediction of plate deformations in modern systems have been considered by ...
This paper presents an example of the use of an artificial neural network (ANN) for parameter identi...
In this paper an Artificial Intelligent approach that performs materials' tests and evaluates their ...
A neural network approach for dealing with the solution of frictional contact problems is proposed. ...
This paper explores the ability of physics-informed neural networks (PINNs) to solve forward and inv...