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Generating Input Data for Microstructure Modelling: A Deep Learning Approach Using Generative Adversarial Networks

Felix Pütz, Manuel Henrich, Niklas Fehlemann, Andreas Roth, Sebastian Münstermann

2020Materials25 citationsDOIOpen Access PDF

Abstract

For the generation of representative volume elements a statistical description of the relevant parameters is necessary. These parameters usually describe the geometric structure of a single grain. Commonly, parameters like area, aspect ratio, and slope of the grain axis relative to the rolling direction are applied. However, usually simple distribution functions like log normal or gamma distribution are used. Yet, these do not take the interdependencies between the microstructural parameters into account. To fully describe any metallic microstructure though, these interdependencies between the singular parameters need to be accounted for. To accomplish this representation, a machine learning approach was applied in this study. By implementing a Wasserstein generative adversarial network, the distribution, as well as the interdependencies could accurately be described. A validation scheme was applied to verify the excellent match between microstructure input data and synthetically generated output data.

Topics & Concepts

Representation (politics)InterdependenceGenerative grammarComputer scienceAdversarial systemArtificial neural networkMicrostructureArtificial intelligenceAlgorithmMaterials sciencePolitical scienceMetallurgyPoliticsLawMachine Learning in Materials ScienceInjection Molding Process and PropertiesGenerative Adversarial Networks and Image Synthesis
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