Flow Control Over a Circular Cylinder Using Vortex Generators: Particle Image Velocimetry Analysis and Machine-Learning Prediction of Flow Characteristics

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Date

2023

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Volume Title

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Elsevier Ltd

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Green Open Access

No

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Top 10%
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Top 10%

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Abstract

Controlling the flow around circular cylinders is crucial to mitigate vortex-induced vibrations and prevent structural damage in a range of applications, such as marine and offshore engineering, tall buildings, long-span bridges, transport ships, and heat exchangers. In this study, we aimed to control the turbulent flow structure around a circular cylinder by placing vortex generators (VGs). We examined the flow structure using particle image velocimetry (PIV). This enabled quantitative data acquisition, intuitive flow visualization, and drag coefficient determination from PIV data. We developed artificial neural network (ANN) models that successfully predict both mean and instantaneous flow characteristics for different scenarios. Our findings show that using VGs elongated the wake and increased vortex formation lengths while reducing velocity fluctuations and the drag coefficient. A minimum drag coefficient of 0.718 was achieved with VGs oriented at α = 60° & β = 60°, reducing the drag by 35.3% compared to the bare cylinder. The drag coefficient exhibited a substantial inverse correlation with both wake and vortex formation lengths. This study is significant for controlling flow structures, providing detailed insights into the near-wake region, and highlighting the potential applications of machine learning in fluid dynamics. © 2023 Elsevier Ltd

Description

Keywords

Bluff body, Flow control, Machine learning, Particle image velocimetry, Turbulence, Vortex generators, Circular cylinders, Data acquisition, Data visualization, Drag coefficient, Flow control, Flow structure, Flow visualization, Marine applications, Neural networks, Offshore oil well production, Tall buildings, Velocity measurement, Wakes, Bluff body, Flow around circular cylinder, Flow characteristic, Image velocimetry, Machine-learning, Particle image velocimetry, Particle image velocimetry analysis, Particle images, Vortex formation, Vortex generators, Machine learning, artificial neural network, cylinder, data acquisition, drag coefficient, flow control, fluid dynamics, machine learning, offshore engineering, particle image velocimetry, prediction, quantitative analysis, turbulence, vortex flow, Vortex Generators, Separation Control, Heat-Transfer, Flow Control, Vortices, Particle image velocimetry, Bluff body, Drag, Machine Learning, Turbulence, Vortex generators, Flow control, Particle Image Velocimetry, Boundary-Layer, Bluff body, Flow control, Turbulence, Machine learning, Particle image velocimetry, Vortex generators, Wake, Machine learning, Region, Smooth, Bluff Body

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Fields of Science

02 engineering and technology, 01 natural sciences, 0203 mechanical engineering, 0103 physical sciences

Citation

WoS Q

Q1

Scopus Q

Q1
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OpenCitations Citation Count
10

Source

Ocean Engineering

Volume

288

Issue

Start Page

116055

End Page

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Citations

CrossRef : 15

Scopus : 20

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Mendeley Readers : 16

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