A stochastic SPOD-Galerkin model for broadband turbulent flows
Tianyi Chu, Oliver T. Schmidt

TL;DR
This paper introduces a stochastic SPOD-Galerkin model for broadband turbulent flows that captures complex dynamics using a low-order, statistically grounded approach, enabling accurate flow prediction and analysis.
Contribution
It proposes a novel two-level stochastic SPOD-Galerkin modeling framework that effectively captures nonlinear interactions and reproduces flow statistics for turbulent flows.
Findings
Model accurately recovers original flow trajectories.
Surrogate data reproduces second-order statistics.
Quantifies model uncertainty and stability.
Abstract
The use of spectral proper orthogonal decomposition (SPOD) to construct low-order models for broadband turbulent flows is explored. The choice of SPOD modes as basis vectors is motivated by their optimality and space-time coherence properties for statistically stationary flows. This work follows the modeling paradigm that complex nonlinear fluid dynamics can be approximated as stochastically forced linear systems. The proposed stochastic two-level SPOD-Galerkin model governs a compound state consisting of the modal expansion coefficients and forcing coefficients. In the first level, the modal expansion coefficients are advanced by the forced linearized Navier-Stokes operator under the linear time-invariant assumption. The second level governs the forcing coefficients, which compensate for the offset between the linear approximation and the true state. At this level, least squares…
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