Estimating Saturated Hydraulic Conductivity Using Genetic Programming
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @Article{KambanParasuraman09282007,
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author = "Kamban Parasuraman and Amin Elshorbagy and
Bing Cheng Si",
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title = "Estimating Saturated Hydraulic Conductivity Using
Genetic Programming",
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journal = "Soil Science Society of America Journal",
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year = "2007",
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volume = "71",
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number = "6",
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pages = "1676--1684",
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keywords = "genetic algorithms, genetic programming",
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broken = "http://soil.scijournals.org/cgi/content/abstract/soilsci;71/6/1676",
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URL = "http://soil.scijournals.org/cgi/reprint/soilsci;71/6/1676.pdf",
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DOI = "doi:10.2136/sssaj2006.0396",
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abstract = "Saturated hydraulic conductivity (Ks) is one of the
key parameters in modelling solute and water movement
in the vadose zone. Field and laboratory measurement of
Ks is time consuming, and hence is not practical for
characterising the large spatial and temporal
variability of Ks. As an alternative to direct
measurements, pedotransfer functions (PTFs), which
estimate Ks from readily available soil data, are being
widely adopted. This study explores the utility of a
promising data-driven method, namely, genetic
programming (GP), to develop PTFs for estimating Ks
from sand, silt, and clay contents and bulk density
(Db). A data set from the Unsaturated Soil Hydraulic
Database (UNSODA) was considered in this study. The
performance of the GP models were compared with the
neural networks (NNs) model, as it is the most widely
adopted method for developing PTFs. The uncertainty of
the PTFs was evaluated by combining the GP and the NN
models, using the nonparametric bootstrap method.
Results from the study indicate that GP appears to be a
promising tool for developing PTFs for estimating Ks.
The better performance of the GP model may be
attributed to the ability of GP to optimise both the
model structure and its parameters in unison. For the
PTFs developed using GP, the uncertainty due to model
structure is shown to be more than the uncertainty due
to model parameters. Moreover, the results indicate
that it is difficult, if not impossible, to achieve
better prediction and less uncertainty
simultaneously.",
- }
Genetic Programming entries for
Kamban Parasuraman
Amin Elshorbagy
Bing Cheng Si
Citations