PLIC-Net: A Machine Learning Approach for 3D Interface Reconstruction in Volume of Fluid Methods
Andrew Cahaly, Fabien Evrard, Olivier Desjardins

TL;DR
This paper introduces PLIC-Net, a machine learning model that improves 3D interface reconstruction in Volume of Fluid methods by providing accurate, efficient, and lower-cost predictions compared to traditional algorithms.
Contribution
The paper demonstrates the viability of a neural network approach for PLIC interface reconstruction, outperforming standard algorithms in accuracy and computational efficiency.
Findings
PLIC-Net reduces spurious interface planes.
PLIC-Net generates cleaner interface break-up.
PLIC-Net has lower computational cost than existing methods.
Abstract
The accurate reconstruction of immiscible fluid-fluid interfaces from the volume fraction field is a critical component of geometric Volume of Fluid (VOF) methods. A common strategy is the Piecewise Linear Interface Calculation (PLIC), which fits a plane in each mixed-phase computational cell. However, recent work goes beyond PLIC by using two planes or even a paraboloid. To select such planes or paraboloids, complex optimization algorithms as well as carefully crafted heuristics are necessary. Yet, the potential exists for a well-trained machine learning model to efficiently provide broadly applicable solutions to the interface reconstruction problem at lower costs. In this work, the viability of a machine learning approach is demonstrated in the context of a single plane reconstruction. A feed-forward deep neural network is used to predict the normal vector of a PLIC plane given…
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