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State estimation in wall-bounded flow systems. Part 2. Turbulent flows

Published online by Cambridge University Press:  29 March 2006

MATTIAS CHEVALIER
Affiliation:
The Swedish Defence Research Agency (FOI), SE-164 90, Stockholm, Sweden Department of Mechanics, Royal Institute of Technology, SE-100 44, Stockholm, Sweden
JÉRÔME HŒPFFNER
Affiliation:
Department of Mechanics, Royal Institute of Technology, SE-100 44, Stockholm, Sweden
THOMAS R. BEWLEY
Affiliation:
Flow Control Lab, Department of MAE, UC San Diego, La Jolla, CA 92093, USA
DAN S. HENNINGSON
Affiliation:
The Swedish Defence Research Agency (FOI), SE-164 90, Stockholm, Sweden Department of Mechanics, Royal Institute of Technology, SE-100 44, Stockholm, Sweden

Abstract

This work extends the estimator developed in Part 1 of this study to the problem of estimating a turbulent channel flow at $Re_{\tau}\,{=}\,100$ based on a history of noisy measurements on the wall. The key advancement enabling this work is the development and implementation of an efficient technique to extract, from direct numerical simulations, the relevant statistics of an appropriately defined ‘external forcing’ term on the Navier–Stokes equation linearized about the mean turbulent flow profile. This forcing term is designed to account for the unmodelled (nonlinear) terms during the computation of the (linear) Kalman filter feedback gains in Fourier space. Upon inverse transform of the resulting feedback gains computed on an array of wavenumber pairs to physical space, we obtain, as in Part 1, effective and well-resolved feedback convolution kernels for the estimation problem. It is demonstrated that, by applying the feedback so determined, satisfactory correlation between the actual and estimated flow is obtained in the near-wall region. As anticipated, extended Kalman filters (with the nonlinearity of the actual system reintroduced into the estimator model after the feedback gains are determined) outperform standard (linear) Kalman filters on the full system.

Type
Papers
Copyright
© 2006 Cambridge University Press

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