Predicting the bulk drag coefficient of flexible vegetation in wave flows based on a genetic programming algorithm
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- @Article{WANG:2021:OE,
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author = "Yanxu Wang and Zegao Yin and Yong Liu",
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title = "Predicting the bulk drag coefficient of flexible
vegetation in wave flows based on a genetic programming
algorithm",
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journal = "Ocean Engineering",
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volume = "223",
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pages = "108694",
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year = "2021",
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ISSN = "0029-8018",
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DOI = "doi:10.1016/j.oceaneng.2021.108694",
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URL = "https://www.sciencedirect.com/science/article/pii/S0029801821001293",
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keywords = "genetic algorithms, genetic programming, Aquatic
vegetation, Wave flows, Bulk drag coefficient,
Predictor",
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abstract = "The prediction of the bulk drag coefficient (CD) for
aquatic vegetation is of great significance for
evaluating the influence of vegetation on the
hydrodynamic processes in wave environments. Different
CD empirical formulas have been mostly proposed as
functions of either Reynolds (Re) number or
Keulegan-Carpenter (KC) number in the literature, and
the influences of other wave and vegetation parameters
on CD were often ignored. The difference in formulas is
largely attributable to inconsistent uses of
characteristic velocity and length scales in the
definitions of Re and KC. By considering the vegetation
and hydrodynamic characteristics in this study, new Re
and KC numbers were redefined using the mean pore
velocity and vegetation-related hydraulic radius.
Besides, a genetic programming algorithm was adopted to
develop a robust relationship between CD and possible
dimensionless variables based on extensive experimental
data. Ultimately, a new CD predictor that has a similar
form to that of the classical expression was obtained
without any prespecified forms before searching. It
turns out that the new predictor depends on not only
the new KC number but also the submergence ratio and
Ursell number. Compared with the existing predictors,
the proposed CD predictor exhibits a considerable
improvement in predictive ability for a wider parameter
space",
- }
Genetic Programming entries for
Yanxu Wang
Zegao Yin
Yong Liu
Citations