A Deep Neural Network/Meshfree Method for Solving Dynamic Two-phase Interface Problems
Xingwen Zhu, Xiaozhe Hu, Pengtao Sun

TL;DR
This paper introduces a meshfree deep neural network approach for solving complex dynamic two-phase interface problems, including fluid-fluid and fluid-structure interactions, with detailed error analysis and numerical validation.
Contribution
The paper develops a novel DNN-based meshfree method for dynamic two-phase interface problems, providing error analysis and demonstrating its effectiveness through numerical experiments.
Findings
Accurate solutions for two-phase interface problems demonstrated.
Error analysis guides efficient sampling for DNN training.
Method extends to various dynamic interface problems.
Abstract
In this paper, a meshfree method using the deep neural network (DNN) approach is developed for solving two kinds of dynamic two-phase interface problems governed by different dynamic partial differential equations on either side of the stationary interface with the jump and high-contrast coefficients. The first type of two-phase interface problem to be studied is the fluid-fluid (two-phase flow) interface problem modeled by Navier-Stokes equations with high-contrast physical parameters across the interface. The second one belongs to fluid-structure interaction (FSI) problems modeled by Navier-Stokes equations on one side of the interface and the structural equation on the other side of the interface, both the fluid and the structure interact with each other via the kinematic- and the dynamic interface conditions across the interface. The DNN/meshfree method is respectively developed for…
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Taxonomy
TopicsNumerical methods in engineering · Advanced Numerical Methods in Computational Mathematics · Electromagnetic Simulation and Numerical Methods
