Sparse space-time resolvent analysis for statistically stationary and time-varying flows
Abstract
Resolvent analysis provides a framework to predict coherent spatio-temporal structures of the largest linear energy amplification, through a singular value decomposition (SVD) of the resolvent operator, obtained by linearising the Navier–Stokes equations about a known turbulent mean velocity profile. Resolvent analysis utilizes a Fourier decomposition in time, which has thus far limited its application to statistically stationary or time-periodic flows. This work develops a variant of resolvent analysis applicable to time-evolving flows, and proposes a variant that identifies spatio-temporally sparse structures, applicable to either stationary or time-varying mean velocity profiles. Spatio-temporal resolvent analysis is formulated through the incorporation of the temporal dimension to the numerical domain via a discrete time-differentiation operator. Sparsity (which manifests in localisation) is achieved through the addition of an l₁-norm penalisation term to the optimisation associated with the SVD. This modified optimisation problem can be formulated as a nonlinear eigenproblem and solved via an inverse power method. We first showcase the implementation of the sparse analysis on a statistically stationary turbulent channel flow, and demonstrate that the sparse variant can identify aspects of the physics not directly evident from standard resolvent analysis. This is followed by applying the sparse space–time formulation on systems that are time varying: a time-periodic turbulent Stokes boundary layer and then a turbulent channel flow with a sudden imposition of a lateral pressure gradient, with the original streamwise pressure gradient unchanged. We present results demonstrating how the sparsity-promoting variant can either change the quantitative structure of the leading space–time modes to increase their sparsity, or identify entirely different linear amplification mechanisms compared with non-sparse resolvent analysis.
Copyright and License
© The Author(s), 2024. Published by Cambridge University Press.
Funding
This work was supported by the Air Force Office of Scientific Research grant FA9550-22-1-0109 and National Science Foundation Award number 2238770. The authors gratefully acknowledge the advanced computing resources made available through ACCESS project MCH230005.
Additional details
- United States Air Force Office of Scientific Research
- FA9550-22-1-0109
- National Science Foundation
- CBET-2238770
- Accepted
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2024-09-25Accepted
- Available
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2024-11-21Published online
- Caltech groups
- GALCIT
- Publication Status
- Published