Application of model tree and Evolutionary Polynomial Regression for evaluation of sediment transport in pipes
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- @Article{Najafzadeh:2017:KSCEjce,
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author = "Mohammad Najafzadeh and Daniele Biagio Laucelli and
Abdolreza Zahiri",
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title = "Application of model tree and Evolutionary Polynomial
Regression for evaluation of sediment transport in
pipes",
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journal = "KSCE Journal of Civil Engineering",
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year = "2017",
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volume = "21",
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number = "5",
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pages = "1956--1963",
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month = jul,
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keywords = "genetic algorithms, genetic programming, model tree,
evolutionary polynomial regression, sediment transport,
sewer pipes, non-deposition conditions, traditional
methods",
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ISSN = "1226-7988",
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publisher = "Korean Society of Civil Engineers",
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DOI = "doi:10.1007/s12205-016-1784-7",
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abstract = "Prediction of critical velocity for sediment
deposition is a significant component in design of
sewer pipes. Because of the abrupt changes in velocity
and shear stress distributions, traditional equations
based on regression analysis can fail in evaluating
sediment transport efficiently. Therefore, different
artificial intelligence approaches have been applied to
investigate sediment transport in sewer pipes. This
study proposes two different approaches to predict the
critical velocity for sediment deposition in sewer
networks: Model Tree (MT) and the Evolutionary
Polynomial Regression (EPR), a hybrid data-driven
technique that combines genetic algorithms with
numerical regression. The hydraulic radius, average
size of sediments, volumetric concentration, total
friction factor, and non-dimensional sediment size were
considered as input parameters to characterize sediment
transport in clean sewer pipes. The present study
implements data collected from different works in
literature. The",
- }
Genetic Programming entries for
Mohammad Najafzadeh
Daniele B Laucelli
Abdolreza Zahiri
Citations