Sie befinden Sich nicht im Netzwerk der Universität Paderborn. Der Zugriff auf elektronische Ressourcen ist gegebenenfalls nur via VPN oder Shibboleth (DFN-AAI) möglich. mehr Informationen...
Ergebnis 21 von 5965
Computers & structures, 2021-02, Vol.244, p.106425, Article 106425
2021

Details

Autor(en) / Beteiligte
Titel
Selection of element-wise shell kinematics using neural networks
Ist Teil von
  • Computers & structures, 2021-02, Vol.244, p.106425, Article 106425
Ort / Verlag
New York: Elsevier Ltd
Erscheinungsjahr
2021
Link zum Volltext
Quelle
Access via ScienceDirect (Elsevier)
Beschreibungen/Notizen
  • •Identify areas of an FE model in which FSDT may lead to significant inaccuracies.•Find best distributions of shell theories over FE meshes.•Exploit synergies among CUF, FEM, Node-Dependent Kinematics, and Neural Networks.•Neural networks require a fraction of FE analyses for training.•Neural networks evaluate FE models and embed physical features, e.g., thickness. This paper presents a novel approach to evaluate the role of non-classical effects, e.g., shear deformability, over a shell finite element model. Such an approach can identify the areas of a structural model in which the use of first-order shear deformation theories may lead to significant inaccuracies. Furthermore, it can indicate optimal distributions of structural theories over the finite element mesh to trade-off accuracy and computational costs. The proposed framework exploits the synergies among four methods, namely, the Carrera Unified Formulation (CUF), the Finite Element Method (FEM), the Node-Dependent Kinematics (NDK), and Neural Networks (NN). CUF generates the FE matrices for higher-order shell theories and provides numerical results feeding the NN for training. Via NDK, the shell theory is a property of the node; that is, a distribution of various shell theories over the FE mesh is attainable. The distributions of theories and the thickness of the structure are the inputs of multilayer NN to target natural frequencies. This work investigates the accuracy and cost-effectiveness of well-known NN. The results look promising as the NN requires a fraction of FE analyses for training, can evaluate the accuracy of FE models, and can incorporate physical features, e.g., the thickness ratio, that drives the complexity of the mathematical model. In other words, NN can inform on the FE modeling without the need to modify, rebuild, or rerun an FE model.

Weiterführende Literatur

Empfehlungen zum selben Thema automatisch vorgeschlagen von bX