2023
DOI: 10.1002/fld.5225
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Robust interpolation for dispersed gas‐droplet flows using statistical learning with the fully Lagrangian approach

Abstract: SummaryA novel methodology is presented for reconstructing the Eulerian number density field of dispersed gas‐droplet flows modelled using the fully Lagrangian approach (FLA). In this work, the nonparametric framework of kernel regression is used to accumulate the FLA number density contributions of individual droplets in accordance with the spatial structure of the dispersed phase. The high variation which is observed in the droplet number density field for unsteady flows is accounted for by using the Euleria… Show more

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