Prediction of particle-laden pipe flows using deep neural network models
Veröffentlichungsdatum
2023-08-16
Zusammenfassung
An accurate and fast prediction of particle-laden flow fields is of particular relevance for a wide variety of industrial applications. The motivation for this research is to evaluate the applicability of deep learning methods for providing statistical properties of the carrier and dispersed phases in a particle-laden vertical pipe flow. Deep neural network (DNN) models are trained for different dependent variables using 756 high-fidelity datasets acquired from point-particle large-eddy simulations for different values of Stokes number, St, bulk particle volume fraction,
, and wall roughness, , for the range , and . The considered parameter space corresponds to the inertia-dominated regime and covers a large extent of the typical conditions in powder-based laser metal deposition. We find that the DNN models capture the nonlinear dynamics of the system and recreate the statistical properties of the particle-laden pipe flow. However, DNN predictions of the particle statistics are of higher accuracy compared to the fluid statistics, which is attributed to the highly non-monotonic dependence of the fluid statistics on the control parameters. Owing to significantly decreased time-to-solution, the trained DNN models are promising as surrogate models to expedite model development and design process of various industrial applications.
, and wall roughness, , for the range , and . The considered parameter space corresponds to the inertia-dominated regime and covers a large extent of the typical conditions in powder-based laser metal deposition. We find that the DNN models capture the nonlinear dynamics of the system and recreate the statistical properties of the particle-laden pipe flow. However, DNN predictions of the particle statistics are of higher accuracy compared to the fluid statistics, which is attributed to the highly non-monotonic dependence of the fluid statistics on the control parameters. Owing to significantly decreased time-to-solution, the trained DNN models are promising as surrogate models to expedite model development and design process of various industrial applications.
Schlagwörter
Non linear dynamics
;
Deep learning
;
Artificial neural networks
;
Machine learning
;
Metal deposition
;
TECHNOLOGY::Engineering mechanics::Fluid mechanics
;
Multiphase flows
;
Turbulence simulations
;
Turbulent flows
;
Particle statistics
Verlag
American Institute of Physics
Institution
Dokumenttyp
Wissenschaftlicher Artikel
Zeitschrift/Sammelwerk
Physics of Fluids
ISSN
1089-7666
Band
35
Heft
8
Artikel-ID
083320
Zweitveröffentlichung
Ja
Dokumentversion
Published Version
Lizenz
Sprache
Englisch
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Haghshenas_Hedayatpour_Groll_Prediction of particle-laden pipe flows using deep neural network models_2023_published-version.pdf
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5.44 MB
Format
Adobe PDF
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