A finite element / neural network framework for modeling suspensions of non-spherical particles. Concepts and medical applications
Martyna Minakowska,
Thomas Richter,
Sebastian Sager
Abstract:An accurate prediction of the translational and rotational motion of particles suspended in a fluid is only possible if a complete set of correlations for the force coefficients of fluid-particle interaction is known. The present study is thus devoted to the derivation and validation of a new framework to determine the drag, lift, rotational and pitching torque coefficients for different non-spherical particles in a fluid flow. The motivation for the study arises from medical applications, where particles may … Show more
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