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  4. Efficient numerical modeling of 3D-printed lattice-cell structures using neural networks
 
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2018
Journal Article
Title

Efficient numerical modeling of 3D-printed lattice-cell structures using neural networks

Abstract
Additively manufactured structures can be tailor-made to optimally distribute mechanical loads while remaining light-weight. To efficiently analyze the locally unique mechanical behavior of structures made from a large number of small lattice cells, a strategy which employs neural networks and deep learning to predict the maximum stresses in the realm of linear elasto-plasticity of a detail-level finite-element model is presented. The strategy is demonstrated on a single lattice cell specimen. Good agreements between experimental, finite element and neural network results are found at a significant reduction in computation time.
Author(s)
Koeppe, A.
Hernandez Padilla, C.A.
Voshage, M.
Schleifenbaum, J.H.
Markert, B.
Journal
Manufacturing letters  
DOI
10.1016/j.mfglet.2018.01.002
Language
English
Fraunhofer-Institut für Lasertechnik ILT  
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