NeuroSEM: A hybrid framework for simulating multiphysics problems by coupling PINNs and spectral elements
Khemraj Shukla, Zongren Zou, Chi Hin Chan, Additi Pandey, Zhicheng, Wang, George Em Karniadakis

TL;DR
NeuroSEM is a hybrid framework combining physics-informed neural networks and spectral element methods to efficiently and accurately simulate complex multiphysics problems involving fluid flow, heat transfer, and structural mechanics.
Contribution
This paper introduces NeuroSEM, a novel hybrid approach integrating PINNs with spectral element solvers for improved multiphysics simulation accuracy and efficiency.
Findings
NeuroSEM accurately models thermal convection and flow past a cylinder.
It effectively handles missing boundary conditions and noisy data.
The framework is optimized for GPU-CPU architectures.
Abstract
Multiphysics problems that are characterized by complex interactions among fluid dynamics, heat transfer, structural mechanics, and electromagnetics, are inherently challenging due to their coupled nature. While experimental data on certain state variables may be available, integrating these data with numerical solvers remains a significant challenge. Physics-informed neural networks (PINNs) have shown promising results in various engineering disciplines, particularly in handling noisy data and solving inverse problems in partial differential equations (PDEs). However, their effectiveness in forecasting nonlinear phenomena in multiphysics regimes, particularly involving turbulence, is yet to be fully established. This study introduces NeuroSEM, a hybrid framework integrating PINNs with the high-fidelity Spectral Element Method (SEM) solver, Nektar++. NeuroSEM leverages the strengths of…
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Taxonomy
TopicsNeural Networks and Applications
