Characterization of porous membranes using artificial neural networks

Porous membranes have been utilized intensively in a wide range of fields due to their special characteristics and a rigorous characterization of their microstructures is crucial for understanding their properties and improving the performance for target applications. A promising method for the quan...

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Veröffentlicht in:Acta materialia 2023-07, Vol.253, p.118922, Article 118922
Hauptverfasser: Zhao, Yinghan, Altschuh, Patrick, Santoki, Jay, Griem, Lars, Tosato, Giovanna, Selzer, Michael, Koeppe, Arnd, Nestler, Britta
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Sprache:eng
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Zusammenfassung:Porous membranes have been utilized intensively in a wide range of fields due to their special characteristics and a rigorous characterization of their microstructures is crucial for understanding their properties and improving the performance for target applications. A promising method for the quantitative analysis of porous structures leverages the physics-based generation of porous structures at the pore scale, which can be validated against real experimental microstructures, followed by building the process–structure–property relationships with data-driven algorithms such as artificial neural networks. In this study, a Variational AutoEncoder (VAE) neural network model is used to characterize the 3D structural information of porous materials and to represent them with low-dimensional latent variables, which further model the structure–property relationship and solve the inverse problem of process–structure linkage combined with the Bayesian optimization method. Our methods provide a quantitative way to learn structural descriptors in an unsupervised manner which can characterize porous microstructures robustly. [Display omitted]
ISSN:1359-6454
1873-2453
DOI:10.1016/j.actamat.2023.118922