AbstractThis paper presents a novel methodology to assess the accuracy of shell finite elements via neural networks. The proposed framework exploits the synergies among three well-established methods, namely, the Carrera Unified Formulation (CUF), the Finite Element Method (FE), and neural networks (NN). CUF generates the governing equations for any-order shell theories based on polynomial expansions over the thickness. FE provides numerical results feeding the NN for training. Multilayer NN have the generalized displacement variables, and the thickness ratio as inputs, and the target is the maximum transverse displacement. This work investigates the minimum requirements for the NN concerning the number of neurons and hidden layers, and the...
Machine learning techniques are increasingly used to predict material behavior in scientific applica...
In this paper, an efficient methodology to obtain Best Theory Diagrams (BTDs) for composite and sand...
The artificial neural networks (ANN) methodology is an outgrowth of research in artificial intellige...
This paper presents a novel methodology to assess the accuracy of shell finite elements via neural ...
This work proposes a hybrid approach based on finite element analysis and deep learning for predicti...
In recent years, the finite element method has been widely used as a powerful tool in the analysis o...
This paper presents a novel approach to developing refined structural theories for finite element mo...
This paper provides an overview of the modeling approaches adopted over the years to develop shell t...
The numerical modeling of thin shell structures is a challenge, which has been met by a variety of f...
Engineering fields such as aerospace rely heavily on the Finite Element Method (FEM) as a modelling ...
(Artificial) neural networks have become increasingly popular in mechanics and materials sciences to...
In industry, there is a growing interest to optimize the use of raw material in blow molded products...
In mechanics and engineering, the Finite Element Method (FEM) represents the predominant numerical s...
In this research project, an attempt is made to fuse the fields of structural mechanics and machine ...
International audienceThis work proposes a data driven approach which utilizes Artificial Neural Net...
Machine learning techniques are increasingly used to predict material behavior in scientific applica...
In this paper, an efficient methodology to obtain Best Theory Diagrams (BTDs) for composite and sand...
The artificial neural networks (ANN) methodology is an outgrowth of research in artificial intellige...
This paper presents a novel methodology to assess the accuracy of shell finite elements via neural ...
This work proposes a hybrid approach based on finite element analysis and deep learning for predicti...
In recent years, the finite element method has been widely used as a powerful tool in the analysis o...
This paper presents a novel approach to developing refined structural theories for finite element mo...
This paper provides an overview of the modeling approaches adopted over the years to develop shell t...
The numerical modeling of thin shell structures is a challenge, which has been met by a variety of f...
Engineering fields such as aerospace rely heavily on the Finite Element Method (FEM) as a modelling ...
(Artificial) neural networks have become increasingly popular in mechanics and materials sciences to...
In industry, there is a growing interest to optimize the use of raw material in blow molded products...
In mechanics and engineering, the Finite Element Method (FEM) represents the predominant numerical s...
In this research project, an attempt is made to fuse the fields of structural mechanics and machine ...
International audienceThis work proposes a data driven approach which utilizes Artificial Neural Net...
Machine learning techniques are increasingly used to predict material behavior in scientific applica...
In this paper, an efficient methodology to obtain Best Theory Diagrams (BTDs) for composite and sand...
The artificial neural networks (ANN) methodology is an outgrowth of research in artificial intellige...