POD-Galerkin reduced order models and physics-informed neural networks for solving inverse problems for the Navier–Stokes equations

被引:0
作者
Saddam Hijazi
Melina Freitag
Niels Landwehr
机构
[1] University of Potsdam,Institute of Mathematics
[2] University of Hildesheim,Institute of Computer Science
来源
Advanced Modeling and Simulation in Engineering Sciences | / 10卷
关键词
Proper orthogonal decomposition; Inverse problems; Physics-based machine learning; Navier–Stokes equations;
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摘要
We present a Reduced Order Model (ROM) which exploits recent developments in Physics Informed Neural Networks (PINNs) for solving inverse problems for the Navier–Stokes equations (NSE). In the proposed approach, the presence of simulated data for the fluid dynamics fields is assumed. A POD-Galerkin ROM is then constructed by applying POD on the snapshots matrices of the fluid fields and performing a Galerkin projection of the NSE (or the modified equations in case of turbulence modeling) onto the POD reduced basis. A POD-Galerkin PINN ROM is then derived by introducing deep neural networks which approximate the reduced outputs with the input being time and/or parameters of the model. The neural networks incorporate the physical equations (the POD-Galerkin reduced equations) into their structure as part of the loss function. Using this approach, the reduced model is able to approximate unknown parameters such as physical constants or the boundary conditions. A demonstration of the applicability of the proposed ROM is illustrated by three cases which are the steady flow around a backward step, the flow around a circular cylinder and the unsteady turbulent flow around a surface mounted cubic obstacle.
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  • [1] Benner P(2015)A survey of projection-based model reduction methods for parametric dynamical systems SIAM Rev 57 483-531
  • [2] Gugercin S(2016)Certified reduced basis methods for parametrized distributed elliptic optimal control problems with control constraints SIAM J Sci Comput 38 3921-3946
  • [3] Willcox K(2012)Stabilization of projection-based reduced order models of the Navier–Stokes Nonlinear Dyn 70 1619-1632
  • [4] Bader E(2012)Stabilization of projection-based reduced-order models Int J Numer Methods Eng 91 358-377
  • [5] Kärcher M(2013)Greedy algorithms for reduced bases in banach spaces Construct Approxim 37 455-466
  • [6] Grepl MA(2011)Convergence rates for greedy algorithms in reduced basis methods SIAM J Math Anal 43 1457-1472
  • [7] Veroy K(2013)Proper orthogonal decomposition: Theory and reduced-order modelling Lecture Notes, University of Konstanz 4 8-538
  • [8] Balajewicz M(2009)Enablers for robust POD models J Comput Phys 228 516-216
  • [9] Dowell EH(2014)Reduced-order modelling strategies for the finite element approximation of the incompressible Navier-Stokes equations Comput Appl Sci 33 189-355
  • [10] Amsallem D(2006)POD and CVT-based reduced-order modeling of navier-stokes flows Computer Methods Appl Mech Eng 196 337-1034