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Predicting structure zone diagrams for thin film synthesis by generative machine learning

Lars Banko, Yury Lysogorskiy, Dario Grochla, Dennis Naujoks, Ralf Drautz, Alfred Ludwig

2020Communications Materials62 citationsDOIOpen Access PDF

Abstract

Abstract Thin films are ubiquitous in modern technology and highly useful in materials discovery and design. For achieving optimal extrinsic properties, their microstructure needs to be controlled in a multi-parameter space, which usually requires too high a number of experiments to map. Here, we propose to master thin film processing microstructure complexity, and to reduce the cost of microstructure design by joining combinatorial experimentation with generative deep learning models to extract synthesis-composition-microstructure relations. A generative machine learning approach using a conditional generative adversarial network predicts structure zone diagrams. We demonstrate that generative models provide a so far unseen level of quality of generated structure zone diagrams that can be applied for the optimization of chemical composition and processing parameters to achieve a desired microstructure.

Topics & Concepts

Generative grammarMicrostructureComputer scienceArtificial intelligenceGenerative modelGenerative DesignSpace (punctuation)Chemical spaceDiagramGenerative adversarial networkDeep learningMachine learningMaterials scienceBioinformaticsOperating systemCompatibility (geochemistry)MetallurgyDrug discoveryBiologyDatabaseComposite materialMachine Learning in Materials ScienceX-ray Diffraction in CrystallographyBlock Copolymer Self-Assembly
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