Suspended sediment concentration estimation by stacking the genetic programming and neuro-fuzzy predictions
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- @Article{Shamaei:2016:ASC,
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author = "Ehsan Shamaei and Marjan Kaedi",
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title = "Suspended sediment concentration estimation by
stacking the genetic programming and neuro-fuzzy
predictions",
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journal = "Applied Soft Computing",
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volume = "45",
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pages = "187--196",
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year = "2016",
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ISSN = "1568-4946",
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DOI = "doi:10.1016/j.asoc.2016.03.009",
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URL = "http://www.sciencedirect.com/science/article/pii/S1568494616301181",
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abstract = "In the new decade due to rich and dense water
resources, it is vital to have an accurate and reliable
sediment prediction and incorrect estimation of
sediment rate has a huge negative effect on supplying
drinking and agricultural water. For this reason, many
studies have been conducted in order to improve the
accuracy of prediction. In a wide range of these
studies, various soft computing techniques have been
used to predict the sediment. It is expected that
combining the predictions obtained by these soft
computing techniques can improve the prediction
accuracy. Stacking method is a powerful machine
learning technique to combine the prediction results of
other methods intelligently through a meta-model based
on cross validation. However, to the best of our
knowledge, the stacking method has not been used to
predict sediment or other hydrological parameters, so
far. This study introduces stacking method to predict
the suspended sediment. For this purpose, linear
genetic programming and neuro-fuzzy methods are applied
as two successful soft computing methods to predict the
suspended sediment. Then, the accuracy of prediction is
increased by combining their results with the
meta-model of neural network based on cross validation.
To evaluate the proposed method, two stations including
Rio Valenciano and Quebrada Blanca, in the USA were
selected as case studies and streamflow and suspended
sediment concentration were defined as inputs to
predict the daily suspended sediment. The obtained
results demonstrated that the stacking method greatly
improved RMSE and R 2 statistics for both stations
compared to use of linear genetic programming or
neuro-fuzzy solitarily.",
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keywords = "genetic algorithms, genetic programming, Suspended
sediment prediction, Stacking method, Neuro-fuzzy,
Neural networks",
- }
Genetic Programming entries for
Ehsan Shamaei
Marjan Kaedi
Citations