Modeling Water-Quality Parameters Using Genetic Algorithm-Least Squares Support Vector Regression and Genetic Programming
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- @Article{Bozorg-Haddad:2017:JEE,
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author = "Omid Bozorg-Haddad and Shima Soleimani and
Hugo A. Loaiciga",
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title = "Modeling Water-Quality Parameters Using Genetic
Algorithm-Least Squares Support Vector Regression and
Genetic Programming",
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journal = "Journal of Environmental Engineering",
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year = "2017",
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volume = "143",
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number = "7",
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month = jul,
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keywords = "genetic algorithms, genetic programming, Genetic
algorithm-least squares support vector regression
(GA-LSSVR) algorithm, Water quality, Modeling,
Sensitivity analysis, Principal component analysis,
PCA",
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publisher = "American Society of Civil Engineers",
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URL = "https://ascelibrary.org/doi/abs/10.1061/%28ASCE%29EE.1943-7870.0001217?src=recsys",
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DOI = "doi:https://doi.org/10.1061/(ASCE)EE.1943-7870.0001217",
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size = "10 pages",
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abstract = "The modeling and monitoring of water-quality
parameters is necessary because of the ever increasing
use of water resources and contamination caused by
sewage disposal. This study employs two data-driven
methods for modeling water-quality parameters. The
methods are the least-squares support vector regression
(LSSVR) and genetic programming (GP). Model inputs to
the LSSVR algorithm and GP were determined using
principal component analysis (PCA). The coefficients of
the LSSVR were selected by sensitivity analysis
employing statistical criteria. The results of the
sensitivity analysis of the LSSVR showed that its
accuracy depends strongly on the values of its
coefficients. The value of the Nash-Sutcliffe (NS)
statistic was negative for 60percent of the
combinations of coefficients applied in the sensitivity
analysis. That is, using the mean of a time series
would produce a more accurate estimate of water-quality
parameters than the LSSVR method in 60percent of the
combinations of parameters tried. The genetic algorithm
(GA) was combined with LSSVR to produce the GA-LSSVR
algorithm with which to achieve improved accuracy in
modeling water-quality parameters. The GA-LSSVR
algorithm and the GP method were employed in modeling
Na+, K+, Mg2+, SO2-4, Cl-, pH, electric conductivity
(EC), and total dissolved solids (TDS) in the Sefidrood
River, Iran. The results indicate that the GA-LSSVR
algorithm has better accuracy for modeling
water-quality parameters than GP judged by the
coefficient of determination (R2) and the NS criterion.
The NS static established, however, that the GA-LSSVR
and GP methods have the capacity to model water-quality
parameters accurately.",
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notes = "Faculty of Agricultural Engineering and Technology,
College of Agriculture and Natural Resources, Univ. of
Tehran, Karaj, 31587-77871 Tehran, Iran",
- }
Genetic Programming entries for
Omid Bozorg Haddad
Shima Soleimani
Hugo A Loaiciga
Citations