期刊论文详细信息
Fluids
LES of Particle-Laden Flow in Sharp Pipe Bends with Data-Driven Predictions of Agglomerate Breakage by Wall Impacts
Ali Khalifa1  Michael Breuer1  Jasper Gollwitzer1 
[1] Professur für Strömungsmechanik, Helmut–Schmidt Universität Hamburg, D-22043 Hamburg, Germany;
关键词: LES;    particle-laden flow;    agglomerate breakage;    wall impact;    data-driven modeling;    artificial neural network;   
DOI  :  10.3390/fluids6120424
来源: DOAJ
【 摘 要 】

The breakage of agglomerates due to wall impact within a turbulent two-phase flow is studied based on a recently developed model which relies on two artificial neural networks (ANNs). The breakup model is intended for the application within an Euler-Lagrange approach using the point-particle assumption. The ANNs were trained based on comprehensive DEM simulations. In the present study the entire simulation methodology is applied to the flow through two sharp pipe bends considering two different Reynolds numbers. In a first step, the flow structures of the continuous flow arising in both bend configurations are analyzed in detail. In a second step, the breakage behavior of agglomerates consisting of spherical, dry and cohesive silica particles is predicted based on the newly established simulation methodology taking agglomeration, fluid-induced breakage and breakage due to wall impact into account. The latter is found to be the dominant mechanism determining the resulting size distribution at the bend outlet. Since the setups are generic geometries found in dry powder inhalers, important knowledge concerning the effect of the Reynolds number as well as the design type (one-step vs. two-step deflection) can be gained.

【 授权许可】

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