Hybrid Physics-Machine Learning Framework Toward Efficient Simulation of Turbulent Flows on an Exascale Platform
ORAL
Abstract
We present a hybrid physics–machine learning (ML) framework for predicting time-dependent fluid flow. This framework directly integrates ML into existing PDE-based simulations, significantly accelerating computations compared to high-fidelity simulations. By approximating small-scale flow dynamics, our method preserves accuracy while reducing computational costs. Our approach employs convolutional neural networks (CNNs), with a loss function derived from projected solutions of high-resolution simulations. Training is conducted within the simulation environment. We validate our CNN approach using backward-facing step flows using the GPU-accelerated NekRS solver on the recently deployed exascale platform, Aurora, at Argonne National Laboratory. Our results highlight the potential of combining physics-based modeling and machine learning to enhance computational efficiency and accuracy in turbulence research.
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Presenters
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Junoh Jung
Argonne National Laboratory
Authors
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Junoh Jung
Argonne National Laboratory
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Emil Constantinescu
Argonne National Laboratory