Optimizing the control of transition to turbulence using a Bayesian method
Anton Pershin, Cedric Beaume, Tom S. Eaves, Steven M. Tobias

TL;DR
This paper introduces a Bayesian method to efficiently evaluate the effectiveness of flow control strategies in delaying or promoting turbulence transition by computing the global laminarization probability.
Contribution
A novel Bayesian approach is developed to accurately compute laminarization probability, enabling optimal control parameter selection with reduced computational cost.
Findings
Bayesian method accurately estimates laminarization probability.
Laminarization probability effectively evaluates control strategy performance.
Optimal control parameters can be identified using the proposed metrics.
Abstract
The nonlinear robustness of laminar plane Couette flow is considered under the action of in-phase spanwise wall oscillations by computing properties of the edge of chaos, i.e., the boundary of its basin of attraction. Three measures are used to quantify the chosen control strategy on laminar-to-turbulent transition: the kinetic energy of edge states (local attractors on the edge of chaos), the form of the minimal seed (least energetic perturbation on the edge of chaos), and the laminarization probability (the probability that a random perturbation from the laminar flow of given kinetic energy will laminarize). A novel Bayesian approach is introduced to enable the accurate computation of the laminarization probability at a fraction of the cost of previous methods. While the edge state and the minimal seed provide useful information about the dynamics of transition to turbulence, neither…
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