Numerical upscaling of parametric microstructures in a possibilistic uncertainty framework with tensor trains

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Date
2022
Volume
71
Issue
Journal
Series Titel
Book Title
Publisher
Heidelberg : Springer
Abstract

A fuzzy arithmetic framework for the efficient possibilistic propagation of shape uncertainties based on a novel fuzzy edge detection method is introduced. The shape uncertainties stem from a blurred image that encodes the distribution of two phases in a composite material. The proposed framework employs computational homogenisation to upscale the shape uncertainty to a effective material with fuzzy material properties. For this, many samples of a linear elasticity problem have to be computed, which is significantly sped up by a highly accurate low-rank tensor surrogate. To ensure the continuity of the underlying mapping from shape parametrisation to the upscaled material behaviour, a diffeomorphism is constructed by generating an appropriate family of meshes via transformation of a reference mesh. The shape uncertainty is then propagated to measure the distance of the upscaled material to the isotropic and orthotropic material class. Finally, the fuzzy effective material is used to compute bounds for the average displacement of a non-homogenized material with uncertain star-shaped inclusion shapes.

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Keywords
Fuzzy partial differential equations, Homogenisation, Linear elasticity, Low-rank tensor formats, Parametric partial differential equations, Polymorphic uncertainty modeling, Possibility, Tensor trains, Uncertainty quantification
Citation
Eigel, M., Gruhlke, R., Moser, D., & Grasedyck, L. (2022). Numerical upscaling of parametric microstructures in a possibilistic uncertainty framework with tensor trains. 71. https://doi.org//10.1007/s00466-022-02261-z
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License
CC BY 4.0 Unported