Data-driven reduced modeling of turbulent convection using DMD-enhanced Fluctuation-Dissipation Theorem

ORAL

Abstract

A data-driven, model-free framework is introduced for calculating Reduced-Order Models (ROMs) capable of accurately predicting time-mean responses to external forcings, or forcings needed for specified responses, e.g., for control, in fully turbulent flows. The framework is based on using the Fluctuation-Dissipation Theorem (FDT) in the space of a limited number of modes obtained from Dynamic Mode Decomposition (DMD). Using the DMD modes as the basis functions, rather than the commonly used Proper Orthogonal Decomposition (POD) modes, resolves a previously identified problem in applying FDT to high-dimensional, non-normal turbulent flows. Employing this DMD-enhanced FDT method (FDTDMD ), a linear ROM with horizontally averaged temperature as state vector, is calculated for a 3D Rayleigh-Benard convection system at the Rayleigh number of 106 using data obtained from Direct Numerical Simulation (DNS). The calculated ROM performs well in various tests for this turbulent ow, suggesting FDTDMD as a promising method for developing ROMs for high-dimensional, turbulent systems.

Presenters

  • Pedram Hassanzadeh

    Rice University, Rice Univ

Authors

  • Pedram Hassanzadeh

    Rice University, Rice Univ

  • Mohammad Amin Khodkar

    Rice University