Evolutionary Multivariate Dynamic Process Model Induction for a Biological Nutrient Removal Process
Created by W.Langdon from
gp-bibliography.bib Revision:1.8194
- @Article{Hong:2007:ASCE,
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author = "Yoon-Seok Timothy Hong and Byeong-Cheon Paik",
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title = "Evolutionary Multivariate Dynamic Process Model
Induction for a Biological Nutrient Removal Process",
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journal = "Journal of Environmental Engineering",
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year = "2007",
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volume = "12",
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month = dec,
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pages = "1126--1135",
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email = "hongt@lsbu.ac.uk",
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publisher = "ASCE",
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keywords = "genetic algorithms, genetic programming, Grammar-based
genetic programming, wastewater treatment process",
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ISSN = "0733-9372",
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DOI = "doi:10.1061/(ASCE)0733-9372(2007)133:12(1126)",
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size = "10 pages",
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abstract = "This paper proposes an automatic process model
induction system using an evolutionary computational
intelligence, called grammar-based genetic programming,
that is specially designed to automatically discover
multivariate dynamic process models that best fit
observed process data. This automatic process model
induction system combines an evolutionary
self-organising system of genetic programming paradigm
with various mathematical functions for a multivariate
nonlinear model evolution using a grammar system via
the mechanism of genetics and natural selection. The
results demonstrate how the automatic process model
induction system based on grammar-based genetic
programming can be used to develop accurate and
relatively cost-effective multivariate dynamic process
models for the full-scale biological nutrient removal
process. Multivariate dynamic process models are
derived automatically in the form of understandable
mathematical formulas that enable engineers to extract
important knowledge hidden in the data and develop
better operation and control strategies.",
- }
Genetic Programming entries for
Yoon-Seok Hong
Byeong-Cheon Paik
Citations