A Variational Computational-based Framework for Unsteady Incompressible Flows
H. Sababha, A. Elmaradny, H. Taha, M. Daqaq

TL;DR
This paper introduces a variational framework using physics-informed neural networks to simulate unsteady incompressible flows, addressing pressure-velocity coupling issues and boundary condition challenges in CFD.
Contribution
It proposes a novel variational approach with PINNs that improves convergence and computational efficiency over traditional Navier-Stokes solutions.
Findings
Accurately predicts flow fields in benchmark tests
Outperforms conventional PINNs in convergence rate and computational time
Addresses longstanding CFD challenges like pressure-velocity coupling and boundary conditions
Abstract
Advancements in computational fluid mechanics have largely relied on Newtonian frameworks, particularly through the direct simulation of Navier-Stokes equations. In this work, we propose an alternative computational framework that employs variational methods, specifically by leveraging the principle of minimum pressure gradient, which turns the fluid mechanics problem into a minimization problem whose solution can be used to predict the flow field in unsteady incompressible viscous flows. This method exhibits two particulary intriguing properties. First, it circumvents the chronic issues of pressure-velocity coupling in incompressible flows, which often dominates the computational cost in computational fluid dynamics (CFD). Second, this method eliminates the reliance on unphysical assumptions at the outflow boundary, addressing another longstanding challenge in CFD. We apply this…
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Taxonomy
TopicsSimulation Techniques and Applications
