We propose a super-resolution framework for accelerating three-dimensional free-surface flow simulations, termed the free-surface flow super-resolution convolutional neural network (FSFlow-SRCNN), by integrating a 3D U-Net-based CNN with an advanced free-surface flow solver. The free-surface flow solver is based on the coupled level-set and volume-of-fluid (CLSVOF) method and the full-variable Cartesian grid (FVCG) method. Numerical experiments show substantial acceleration while maintaining close agreement with high-resolution reference solutions and satisfying mass conservation to a comparatively high standard; a speed-up factor of approximately 139 is achieved in one computational environment. FSFlow-SRCNN also demonstrates generalization to nearby unseen conditions, remaining stable and maintaining robust super-resolution performance. Among the three tested loss functions, Loss3 combining an L1 term with divergence and gradient terms provides the best overall balance: the divergence term improves mass conservation, whereas the gradient term enhances the reconstruction of the density field across gas–liquid density discontinuities. Finally, training on mixed one- and two-droplet datasets yields reliable performance in both cases, indicating the potential of FSFlow-SRCNN as a versatile model for a range of free-surface flows.
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Alsulami et al. (Wed,) studied this question.
synapsesocial.com/papers/69d8962d6c1944d70ce077dc — DOI: https://doi.org/10.1063/5.0321435
Anwar Alsulami
Cardiff University
Yuki Yasuda
Japan Agency for Marine-Earth Science and Technology
R. Onishi
Tokyo Institute of Technology
Physics of Fluids
Cardiff University
Tokyo Institute of Technology
Japan Agency for Marine-Earth Science and Technology
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