Genetically-based active flow control of a circular cylinder wake via synthetic jets
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gp-bibliography.bib Revision:1.8414
- @Article{Scala:2025:expthermflusci,
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author = "Alessandro Scala and Gerardo Paolillo and
Carlo Salvatore Greco and Tommaso Astarita and
Gennaro Cardone",
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title = "Genetically-based active flow control of a circular
cylinder wake via synthetic jets",
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journal = "Experimental Thermal and Fluid Science",
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year = "2025",
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volume = "162",
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pages = "111362",
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keywords = "genetic algorithms, genetic programming, Machine
Learning, Linear Genetic Programming, Flow control,
Drag reduction, Particle Image Velocimetry",
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ISSN = "0894-1777",
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URL = "
https://www.sciencedirect.com/science/article/pii/S0894177724002310",
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DOI = "
doi:10.1016/j.expthermflusci.2024.111362",
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abstract = "The present work investigates the use of Machine
Learning methods for optimising the control of the wake
behind a circular cylinder with the aim of reducing the
associated aerodynamic drag using a single synthetic
jet located at the rear stagnation point. Initially, a
parametric study on sinusoidal shapes is performed to
assess the control authority of the synthetic jet and
to identify suitable initial configurations for the
subsequent optimisation study. This optimisation
leverages gradient-enriched Machine Learning (gMLC),
which is based on Linear Genetic Programming, to
determine the optimal waveshape for the input driving
signal to the synthetic jet actuator, aiming at
aerodynamic drag reduction. Machine Learning is thus
exploited to overcome limitations inherent to canonical
waveshapes. All the experiments are performed at a
Reynolds number Re=1.9times104. Four different
optimisation runs are conducted to study the effect of
increasing the complexity of the genetic recombination
process and including a power penalty in the cost
function on the control effectiveness. The maximum drag
reduction is achieved when no penalty for the power
consumption is included in the cost function and
amounts to 9.77percent with respect to the baseline
case. The addition of the power penalty results in
control laws comparable in both waveshape and
performance to the canonical sinusoidal control laws.
In the second part of this work, the ML-derived control
policies are investigated via hot-wire anemometry and
Particle Image Velocimetry (PIV) to understand and
characterise the mechanisms responsible for the drag
reduction and the control effects on the wake
evolution. For this purpose, a modal analysis based on
Proper Orthogonal Decomposition is performed to
comparatively assess the control laws and evaluate
their capability of weakening and mitigating the most
energetic flow structures associated with the vortex
shedding phenomenon",
- }
Genetic Programming entries for
Alessandro Scala
Gerardo Paolillo
Carlo Salvatore Greco
Tommaso Astarita
Gennaro Cardone
Citations