Prediction of weekly nitrate-N fluctuations in a small agricultural watershed in Illinois
Created by W.Langdon from
gp-bibliography.bib Revision:1.8010
- @Article{Markus:2010:JH,
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author = "Momcilo Markus and Mohamad I. Hejazi and
Peter Bajcsy and Orazio Giustolisi and Dragan A. Savic",
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title = "Prediction of weekly {nitrate-N} fluctuations in a
small agricultural watershed in {Illinois}",
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journal = "Journal of Hydroinformatics",
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year = "2010",
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volume = "12",
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number = "3",
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pages = "251--261",
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month = jul,
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keywords = "genetic algorithms, genetic programming, artificial
neural networks, drinking water, forecasting, naive
Bayes model, nitrate-N",
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ISSN = "1464-7141",
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URL = "https://iwaponline.com/jh/article-pdf/12/3/251/386467/251.pdf",
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DOI = "doi:10.2166/hydro.2010.064",
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size = "11 pages",
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publisher = "IWA Publishing",
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abstract = "Agricultural nonpoint source pollution has been
identified as one of the leading causes of surface
water quality impairment in the United States. Such an
impact is important, particularly in predominantly
agricultural areas, where application of agricultural
fertilisers often results in excessive nitrate levels
in streams and rivers. When nitrate concentration in a
public water supply reaches or exceeds drinking water
standards, costly measures such as well closure or
water treatment have to be considered. Thus, having
accurate nitrate-N predictions is critical in making
correct and timely management decisions. This study
applied a set of data mining tools to predict weekly
nitrate-N concentrations at a gauging station on the
Sangamon River near Decatur, Illinois, USA. The data
mining tools used in this study included artificial
neural networks, evolutionary polynomial regression and
the naive Bayes model. The results were compared using
seven forecast measures. In general, all models
performed reasonably well, but not all achieved best
scores in each of the measures, suggesting that a
multi-tool approach is needed. In addition to improving
forecast accuracy compared with previous studies, the
tools described in this study demonstrated potential
for application in error analysis, input selection and
ranking of explanatory variables, thereby designing
cost-effective monitoring networks.",
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notes = "Institute of Natural Resource Sustainability,
University of Illinois at Urbana-Champaign, 2204
Griffith Dr, Champaign, Illinois 61820, USA E-mail:
mmarkus@illinois.edu Ven-Te Chow Hydrosystems
Laboratory, Department of Civil and Environmental
Engineering, University of Illinois at
Urbana-Champaign, 205 North Mathews Ave, Urbana, IL
61801, USA National Center for Supercomputing
Applications, University of Illinois at
Urbana-Champaign, 1205 West Clark Street, Urbana, IL
61801, USA Department of Civil and Environmental
Engineering, Technical University of Bari, II
Engineering Faculty, Taranto via Turismo 8, 74100,
Italy Centre for Water Systems, School of Engineering,
Computing and Mathematics, University of Exeter,
Harrison Building, North Park Road, Exeter EX4 4QF,
UK",
- }
Genetic Programming entries for
Momcilo Markus
Mohamad I Hejazi
Peter Bajcsy
Orazio Giustolisi
Dragan Savic
Citations