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Results 11-20 of 25 (Search time: 0.003 seconds).
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PreviewIssue DateTitleAuthor(s)
2008Dryland salinity decision support systems in data-scarce regionsGibbs, M.; Goodman, A.; Partington, D.; Dandy, G.; Maier, H.; Martin Lambert,; Water Down Under 2008 (2008 : Adelaide, South Australia)
2005Selection of genetic algorithm parameters for water distribution system optimizationGibbs, M.; Dandy, G.; Maier, H.; Nixon, J.; World Water & Environmental Resources Congress (2005 : Anchorage, Alaska)
2014An evaluation framework for input variable selection algorithms for environmental data-driven modelsGalelli, S.; Humphrey, G.; Maier, H.; Castelletti, A.; Dandy, G.; Gibbs, M.
2008Calibration of rainfall runoff models in ungauged catchments: Regionalization relationships for a rainfall runoff modelGibbs, M.; Dandy, G.; Maier, H.; World Environmental and Water Resources Congress (2008 : Honolulu, Hawaii)
2006Minimum number of generations required for convergence of genetic algorithmsGibbs, M.; Maier, H.; Dandy, G.; Nixon, J.; Yen, G.; IEEE Congress on Evolutionary Computation (2006 : Vancouver, B.C.)
2014Evolutionary algorithms and other metaheuristics in water resources: Current status, research challenges and future directionsMaier, H.; Kapelan, Z.; Kasprzyk, J.; Kollat, J.; Matott, L.; Cunha, M.; Dandy, G.; Gibbs, M.; Keedwell, E.; Marchi, A.; Ostfeld, A.; Savic, D.; Solomatine, D.; Vrugt, J.; Zecchin, A.; Minsker, B.; Barbour, E.; Kuczera, G.; Pasha, F.; Castelletti, A.; et al.
2015Using characteristics of the optimisation problem to determine the Genetic Algorithm population size when the number of evaluations is limitedGibbs, M.; Maier, H.; Dandy, G.
2014Assessment of the ability to meet environmental water requirements in the Upper South East of South AustraliaGibbs, M.; Dandy, G.; Maier, H.
2012A generic framework for regression regionalization in ungauged catchmentsGibbs, M.; Maier, H.; Dandy, G.
2011Relationship between problem characteristics and the optimal number of genetic algorithm generationsGibbs, M.; Maier, H.; Dandy, G.