Model-based spectral coherence analysis
Seyedalireza Abootorabi, Armin Zare

TL;DR
This paper evaluates the effectiveness of stochastically forced linearized Navier-Stokes equations, enhanced with eddy-viscosity, in capturing the spectral coherence and self-similar structures of turbulence in channel flow, aligning with DNS results.
Contribution
It demonstrates that incorporating eddy-viscosity and colored-in-time forcing improves the prediction of turbulence structures and coherence spectra in linearized models.
Findings
Eddy-viscosity enhances self-similar turbulence features.
Colored-in-time forcing better matches DNS stress profiles.
Model captures active motions contributing to momentum transfer.
Abstract
Recent data-driven efforts have utilized spectral decomposition techniques to uncover the geometric self-similarity of dominant motions in the logarithmic layer, and thereby validate the attached eddy model. In this paper, we evaluate the predictive capability of the stochastically forced linearized Navier-Stokes equations in capturing such structural features in turbulent channel flow at . We use the linear coherence spectrum to quantify the wall-normal coherence within the velocity field generated by the linearized dynamics. In addition to the linearized Navier-Stokes equations around the turbulent mean velocity profile, we consider an enhanced variant in which molecular viscosity is augmented with turbulent eddy-viscosity. We use judiciously shaped white- and colored-in-time stochastic forcing to generate a statistical response with energetic attributes that are…
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Taxonomy
TopicsOptical Coherence Tomography Applications · Spectroscopy Techniques in Biomedical and Chemical Research
