2010
DOI: 10.1007/s11269-010-9668-y
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Selecting Model Parameter Sets from a Trade-off Surface Generated from the Non-Dominated Sorting Genetic Algorithm-II

Abstract: There is increasing trend in the use of multi-objective genetic algorithms (GAs) to estimate parameter sets in the calibration of hydrological models. Multiobjective GAs facilitate the evaluation of several model evaluation objectives, and the examination of massive combinations of parameter sets. Typically, the outcome is a set of several equally-accurate parameter sets which make-up a trade-off surface between the objective functions, usually referred to as Pareto set. The Pareto set is a set of incomparable… Show more

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Cited by 50 publications
(19 citation statements)
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References 44 publications
(60 reference statements)
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“…Traditional optimization methods to calibrate hydrological models include genetic algorithms (Dumedah et al 2010;Kaini et al 2012;Wang 1991Wang , 1997, shuffled complex evolution method (Chu et al 2010;Duan et al 1992Duan et al , 1994Guo et al 2013;Joseph and Guillaume 2013;Vrugt et al 2003a, b), and particle swarm optimization (PSO) (Gill et al 2006;Jiang et al 2010Jiang et al , 2013Shi et al 2013;. Recent research has shown that the PSO approach has many computational advantages over traditional evolutionary computing (Chau 2007).…”
Section: Methods Of Model Calibration and Validationmentioning
confidence: 99%
“…Traditional optimization methods to calibrate hydrological models include genetic algorithms (Dumedah et al 2010;Kaini et al 2012;Wang 1991Wang , 1997, shuffled complex evolution method (Chu et al 2010;Duan et al 1992Duan et al , 1994Guo et al 2013;Joseph and Guillaume 2013;Vrugt et al 2003a, b), and particle swarm optimization (PSO) (Gill et al 2006;Jiang et al 2010Jiang et al , 2013Shi et al 2013;. Recent research has shown that the PSO approach has many computational advantages over traditional evolutionary computing (Chau 2007).…”
Section: Methods Of Model Calibration and Validationmentioning
confidence: 99%
“…The multi-objective evolutionary method used is based on the Non-dominated Sorting Genetic Algorithm -II (NSGA-II) which has been developed by Deb et al (2002). The NSGA-II is an innovative stochastic search tool that is capable of finding diverse solutions to a problem, and has been applied in several hydrological studies (Dumedah et al, 2012a,;Dumedah et al, 2011;Dumedah et al, 2010;Wohling et al, 2008;Bekele and Nicklow, 2007;Confesor and Whittaker, 2007;Tang et al, 2006). A flowchart outlining computational procedure of the ParetoParticleEnKF method is shown in Fig.…”
Section: Integration Of Pareto-optimality Into Particle and Ensemble mentioning
confidence: 99%
“…One such tool is the NSGA-II. NSGA-II was developed by Deb et al (2002) and is a widely applied algorithm (Dumedah et al 2010;Wö hling et al 2008;Confesor and Whittaker 2007;Tang et al 2006;Khu and Madsen 2005;Madsen 2003) with advanced and standard concepts capable of providing diverse solutions to a problem. Typically, the outcome to multiobjective problems is a set of solution(s) usually referred to as Pareto set (or Pareto frontier), which forms a trade-off between objective functions under evaluation (Deb et al 2002;Deb and Goel 2001;Deb et al 2000).…”
Section: B Data Assimilation Approachmentioning
confidence: 99%