Development of empirical models with high accuracy for estimation of drag coefficient of flow around a smooth sphere: An evolutionary approach
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- @Article{Barati:2014:PT,
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author = "Reza Barati and
Seyed Ali Akbar {Salehi Neyshabouri} and Goodarz Ahmadi",
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title = "Development of empirical models with high accuracy for
estimation of drag coefficient of flow around a smooth
sphere: An evolutionary approach",
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journal = "Powder Technology",
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volume = "257",
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pages = "11--19",
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year = "2014",
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ISSN = "0032-5910",
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DOI = "doi:10.1016/j.powtec.2014.02.045",
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URL = "http://www.sciencedirect.com/science/article/pii/S003259101400182X",
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keywords = "genetic algorithms, genetic programming, Particle
motion, Sphere drag, Reynolds number",
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abstract = "An accurate correlation for the smooth sphere drag
coefficient with wide range of applicability is a
useful tool in the field of particle technology. The
present study focuses on the development of high
accurate drag coefficient correlations from low to very
high Reynolds numbers (up to 1000000) using a
multi-gene Genetic Programming (GP) procedure. A clear
superiority of GP over other methods is that GP is able
to determine the structure and parameters of the model,
simultaneously, while the structure of the model is
imposed by the user in traditional regression analysis,
and only the parameters of the model are assigned. In
other words, in addition to the parameters of the
model, the structure of it can be optimised using GP
approach. Among two new and high accurate models of the
present study, one of them is acceptable for the region
before drag dip, and the other is applicable for the
whole range of Reynolds numbers up to 1 million
including the transient region from laminar to
turbulent. The performances of the developed models are
examined and compared with other reported models. The
results indicate that these models respectively give
16.2percent and 69.4percent better results than the
best existing correlations in terms of the sum of
squared of logarithmic deviations (SSLD). On the other
hand, the proposed models are validated with
experimental data. The validation results show that all
of the estimated drag coefficients are within the
bounds of 7percent of experimental values.",
- }
Genetic Programming entries for
Reza Barati
Seyed Ali Akbar Salehi Neyshabouri
Goodarz Ahmadi
Citations