Abstract
Many wake flows exhibit self-excited flow oscillations which are
sustained by the flow
itself and are not caused by amplification of external noise. The archetypal
example
of a self-excited wake flow is the low Reynolds number flow past a circular
cylinder.
This flow exhibits self-sustained periodic vortex shedding above a critical
Reynolds
number. In general, control of such flows requires stabilization of many
globally
unstable modes; the present work describes a multiple-sensor control strategy
for the
cylinder wake which succeeds in controlling a simplified wake model at
a Reynolds
number above that at which single-sensor schemes fail.Representation of the flow field by a finite set of coherent structures
or modes,
which are extracted by proper orthogonal decomposition and correspond to
the
large-scale wake components, allows the efficient design of a closed-loop
control
algorithm. A neural network is used to furnish an empirical prediction
of the modal
response of the wake to external control forcing. This model avoids the
need for
explicit representation of the control actuator–wake interaction.
Additionally, the
neural network structure of the model allows the design of a robust nonlinear
control algorithm. Furthermore the controller does not necessarily require
velocity
field information, but can control the wake using other quantities (for
example flow
visualization pictures) which characterize the structure of the velocity
field. Successful
control of a simplified cylinder wake model is used to demonstrate the
feasibility of
the low-dimensional control strategy.
Publisher
Cambridge University Press (CUP)
Subject
Mechanical Engineering,Mechanics of Materials,Condensed Matter Physics
Cited by
138 articles.
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