2020
DOI: 10.48550/arxiv.2005.09569
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Towards Particle-Resolved Accuracy in Euler-Lagrange Simulations of Multiphase Flow Using Machine Learning and Pairwise Interaction Extended Point-particle (PIEP) Approximation

S. Balachandar,
W. C. Moore,
G. Akiki
et al.

Abstract: This study presents two different machine learning approaches for the modeling of hydrodynamic force on particles in a particle-laden multiphase flow. Results from particle-resolved direct numerical simulations (PR-DNS) of flow over a random array of stationary particles for eight combinations of particle Reynolds number (Re) and volume fraction (φ) are used in the development of the models. The first approach follows a two step process. In the first flow prediction step, the perturbation flow due to a particl… Show more

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“…However, fluid-mediated particle-particle interaction models are currently actively researched and are able to capture some of these phenomena. Notable studies in this direction are Akiki et al [16,17], Sen et al [18], Moore and Balachandar [19], Balachandar et al [20].…”
Section: Introductionmentioning
confidence: 99%
“…However, fluid-mediated particle-particle interaction models are currently actively researched and are able to capture some of these phenomena. Notable studies in this direction are Akiki et al [16,17], Sen et al [18], Moore and Balachandar [19], Balachandar et al [20].…”
Section: Introductionmentioning
confidence: 99%