Parameter Optimization Algorithms for Evolving Rule Models Applied to Freshwater Ecosystems
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- @Article{Cao:2014:ieeeEC,
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author = "Hongqing Cao and Friedrich Recknagel and
Philip T. Orr",
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title = "Parameter Optimization Algorithms for Evolving Rule
Models Applied to Freshwater Ecosystems",
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journal = "IEEE Transactions on Evolutionary Computation",
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year = "2014",
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month = dec,
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volume = "18",
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number = "6",
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pages = "793--806",
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keywords = "genetic algorithms, genetic programming, Evolutionary
algorithm, cyanobacterial blooms, population-based
algorithms",
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DOI = "doi:10.1109/TEVC.2013.2286404",
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ISSN = "1089-778X",
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size = "20 pages",
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abstract = "Predictive rule models for early warning of
cyanobacterial blooms in freshwater ecosystems were
developed using a hybrid evolutionary algorithm (HEA).
The HEA has been designed to evolve IF-THEN-ELSE model
structures using genetic programming and to optimise
the stochastical constants contained in the model using
population-based algorithms. This paper intensively
investigated the performances of the following six
alternative population-based algorithms for parameter
optimisation (PO) of rule models within this hybrid
methodology: (1) Hill Climbing (HC), (2) Simulated
Annealing (SA), (3) Genetic Algorithm (GA), (4)
Differential Evolution (DE), (5) Covariance Matrix
Adaptation Evolution Strategy (CMA-ES), and (6)
Estimation of Distribution Algorithm (EDA). The
comparative study was carried out by predictive
modelling of chlorophyll-a concentrations and the
potentially toxic cyanobacterium Cylindrospermopsis
raciborskii cell concentrations based on water quality
time-series data in Lake Wivenhoe in Queensland
(Australia) from 1998 to 2009. The experimental results
demonstrate that with these PO methods, the rule models
discovered by the HEA proved to be both predictive and
explanatory whose IF condition indicates threshold
values for some crucial water quality parameters. When
Comparing different PO algorithms, HC always performed
best followed by DE, GA and EDA. Whilst CMA-ES
performed worst and the performance of SA varied with
different data sets.",
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notes = "Also known as \cite{6637056}",
- }
Genetic Programming entries for
Hong-Qing Cao
Friedrich Recknagel
Philip T Orr
Citations