Liquid-Droplet Coalescence: CNN-based Reconstruction of Flow Fields from Concentration Fields
Vasanth Kumar Babu, Nadia Bihari Padhan, Rahul Pandit

TL;DR
This paper demonstrates that CNN-based neural networks can accurately reconstruct flow fields from concentration images in droplet coalescence, validated through simulations and experimental data, advancing fluid dynamics analysis.
Contribution
It introduces CNN architectures for flow field reconstruction from concentration data, validated with extensive simulations and experimental measurements in multi-phase flow coalescence.
Findings
CNNs accurately predict flow fields from concentration images.
The method works across different droplet coalescence scenarios.
Flow reconstruction is effective at various Ohnesorge numbers.
Abstract
Liquid-droplet coalescence and the mergers of liquid lenses are problems of great practical and theoretical interest in fluid dynamics and the statistical mechanics of multi-phase flows. During such mergers, there is an interesting and intricate interplay between the shapes of the interfaces, separating two phases, and the background flow field. In experiments, it is easier to visualize concentration fields than to obtain the flow field. We demonstrate that two-dimensional (2D) encoder-decoder CNNs, 2D U-Nets, and three-dimensional (3D) U-Nets can be used to obtain flow fields from concentration fields here. To train these networks, we use concentration and flow fields, which we obtain from extensive direct numerical simulations (DNSs) of (a) the coalescence of two circular droplets in the two-component 2D Cahn-Hilliard-Navier-Stokes (CHNS) partial differential equations (PDEs), (b)…
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Taxonomy
TopicsFluid Dynamics and Heat Transfer · Air Quality Monitoring and Forecasting · Icing and De-icing Technologies
