2016
DOI: 10.1017/jfm.2016.261
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Frequency selection by feedback control in a turbulent shear flow

Abstract: Many previous studies have shown that the turbulent mixing layer under periodic forcing tends to adopt a lock-on state, where the major portion of the fluctuations in the flow are synchronized at the forcing frequency. The goal of this experimental study is to apply closed-loop control in order to provoke the lock-on state, using information from the flow itself. We aim to determine the range of frequencies for which the closed-loop control can establish the lock-on, and what mechanisms are contributing to the… Show more

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Cited by 33 publications
(24 citation statements)
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References 36 publications
(39 reference statements)
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“…Sensor-based feedback has been shown to outperform periodic forcing for drag reduction of a D-shaped body (Pastoor et al 2008). A very general method for sensor-based feedback is provided by genetic programming control (GPC) (Gautier et al 2015;Debien et al 2016;Parezanović et al 2016). Yet, the advantages of filtering out noise has hardly been explored in GPC ).…”
Section: Discussionmentioning
confidence: 99%
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“…Sensor-based feedback has been shown to outperform periodic forcing for drag reduction of a D-shaped body (Pastoor et al 2008). A very general method for sensor-based feedback is provided by genetic programming control (GPC) (Gautier et al 2015;Debien et al 2016;Parezanović et al 2016). Yet, the advantages of filtering out noise has hardly been explored in GPC ).…”
Section: Discussionmentioning
confidence: 99%
“…In addition, there is no a priori reason why sensor-based feedback should be better than optimized forcing. In fact, a mixing layer control study (Parezanović et al 2016) shows that optimized periodic forcing may be better or worse than sensor-feedback depending on the location of the sensors and the definition of the cost functional. However, closed-loop control laws may be formulated in a manner to include the optimal open-loop control.…”
Section: Discussionmentioning
confidence: 99%
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“…Unsupervised generic methodology based on machine learning which can exploit arbitrary nonlinearities in complex systems has recently gain traction on the past years in the fluid mechanics community to, literarily, learn a control law. As a pioneer work, Noack and co-authors used genetic programming to achieve both structure and parameters identification of control laws in the context of various turbulence flow control problems even at high Reynolds numbers [46,29,20,18]. One of the obstacles of using machine learning, such as introduced in Duriez et al [20], is that a large number of experiments are required to fulfill the criterion of statistical convergence.…”
Section: Introductionmentioning
confidence: 99%
“…Previous attempts to use symbolic regression for the control of dynamical systems were mostly restricted to experiments [1,24,25] without multiobjectivity and without the optimization of constants involved in the equations. In contrast, here we use a multi-objective formulation of GP, which allows learning much sparser, as well as multiple Pareto (or non-dominated) solutions [20,21,22].…”
mentioning
confidence: 99%