Discovery of Predictive Rule Sets for Chlorophyll-a Dynamics in the Nakdong River (Korea) by Means of the Hybrid Evolutionary Algorithm HEA
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @Article{Cao:2006:EI,
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author = "Hongqing Cao and Friedrich Recknagel and
Gea-Jae Joo and Dong-Kyun Kim",
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title = "Discovery of Predictive Rule Sets for Chlorophyll-a
Dynamics in the Nakdong River (Korea) by Means of the
Hybrid Evolutionary Algorithm HEA",
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journal = "Ecological Informatics",
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year = "2006",
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volume = "1",
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number = "1",
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pages = "43--53",
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month = jan,
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keywords = "genetic algorithms, genetic programming, Hybrid
evolutionary algorithm, Rule sets, Chl.a, Sensitivity
analysis, Nakdong River",
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ISSN = "1574-9541",
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DOI = "doi:10.1016/j.ecoinf.2005.08.001",
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size = "11 pages",
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abstract = "We present a hybrid evolutionary algorithm (HEA) to
discover complex rule sets predicting the concentration
of chlorophyll-a (Chl.a) based on the measured
meteorological, hydrological and limnological variables
in the hypertrophic Nakdong River. The HEA is designed:
(1) to evolve the structure of rule sets by using
genetic programming and (2) to optimise the random
parameters in the rule sets by means of a genetic
algorithm. Time-series of input-output data from 1995
to 1998 without and with time lags up to 7 days were
used for training HEA. Independent input output data
for 1994 were used for testing HEA. HEA successfully
discovered rule sets for multiple nonlinear
relationships between physical, chemical variables and
Chl.a, which proved to be predictive for unseen data as
well as explanatory. The comparison of results by HEA
and previously applied recurrent artificial neural
networks to the same data with input--output time lags
of 3 days revealed similar good performances of both
methods. The sensitivity analysis for the best
performing predictive rule set revealed relationships
between seasons, specific input variables and Chl.a
which to some degree correspond with known properties
of the Nakdong River. The statistics of numerous random
runs of the HEA also allowed determining most relevant
input variables without a priori knowledge.",
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notes = "http://www.elsevier.com/wps/find/journaldescription.cws_home/705192/description#description",
- }
Genetic Programming entries for
Hong-Qing Cao
Friedrich Recknagel
Gea-Jae Joo
Dong-Kyun Kim
Citations