Operator Inference and Physics-Informed Learning of Low-Dimensional Models for Incompressible Flows

10/13/2020
by   Peter Benner, et al.
0

Reduced-order modeling has a long tradition in computational fluid dynamics. The ever-increasing significance of data for the synthesis of low-order models is well reflected in the recent successes of data-driven approaches such as Dynamic Mode Decomposition and Operator Inference. With this work, we suggest a new approach to learning structured low-order models for incompressible flow from data that can be used for engineering studies such as control, optimization, and simulation. To that end, we utilize the intrinsic structure of the Navier-Stokes equations for incompressible flows and show that learning dynamics of the velocity and pressure can be decoupled, thus leading to an efficient operator inference approach for learning the underlying dynamics of incompressible flows. Furthermore, we show the operator inference performance in learning low-order models using two benchmark problems and compare with an intrusive method, namely proper orthogonal decomposition, and other data-driven approaches.

READ FULL TEXT
research
08/08/2023

Nonlinear parametric models of viscoelastic fluid flows

Reduced-order models have been widely adopted in fluid mechanics, partic...
research
12/02/2022

Operator inference with roll outs for learning reduced models from scarce and low-quality data

Data-driven modeling has become a key building block in computational sc...
research
08/06/2020

Data-driven reduced-order models via regularized operator inference for a single-injector combustion process

This paper derives predictive reduced-order models for rocket engine com...
research
09/10/2020

Data-Driven Optimization Approach for Inverse Problems : Application to Turbulent Mixed-Convection Flows

Optimal control of turbulent mixed-convection flows has attracted consid...
research
03/18/2023

Vehicular Applications of Koopman Operator Theory – A Survey

Koopman operator theory has proven to be a promising approach to nonline...
research
02/18/2022

Data-Driven Enhanced Model Reduction for Bifurcating Models in Computational Fluid Dynamics

We investigate various data-driven methods to enhance projection-based m...

Please sign up or login with your details

Forgot password? Click here to reset