2024
DOI: 10.1007/s00466-024-02490-4
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Machine learning assisted discovery of effective viscous material laws for shear-thinning fiber suspensions

Benedikt Sterr,
Andrew Hrymak,
Matti Schneider
et al.

Abstract: In this article, we combine a Fast Fourier Transform based computational approach and a supervised machine learning strategy to discover models for the anisotropic effective viscosity of shear-thinning fiber suspensions. Using the Fast Fourier Transform based computational approach, we study the effects of the fiber orientation state and the imposed macroscopic shear rate tensor on the effective viscosity for a broad range of shear rates of engineering process interest. We visualize the effective viscosity in … Show more

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