2009
DOI: 10.5194/hess-13-1467-2009
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Calibration of a crop model to irrigated water use using a genetic algorithm

Abstract: Abstract. Near-term consumption of groundwater for irrigated agriculture in the High Plains Aquifer supports a dynamic bio-socio-economic system, all parts of which will be impacted by a future transition to sustainable usage that matches natural recharge rates. Plants are the foundation of this system and so generic plant models suitable for coupling to representations of other component processes (hydrologic, economic, etc.) are key elements of needed stakeholder decision support systems. This study explores… Show more

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Cited by 20 publications
(8 citation statements)
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References 78 publications
(65 reference statements)
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“…These methods have been increasingly applied to parameter optimizations in various hydrological models (Bastani et al, 2010;Bulatewicz et al, 2009;Uddameri and Kuchanur, 2007) and to those in numerical weather predictions (Fang et al, 2009;Krishnakumar, 1989;Lee et al, 2006;Yu et al, 2013). Micro-GA applied to this study is an improved version of GA with smaller generation sizes and simplified genetic modifications, hence efficiently reducing the computational resources (Krishnakumar, 1989;Reeves, 1993;Wang et al, 2010).…”
Section: Micro-gamentioning
confidence: 99%
“…These methods have been increasingly applied to parameter optimizations in various hydrological models (Bastani et al, 2010;Bulatewicz et al, 2009;Uddameri and Kuchanur, 2007) and to those in numerical weather predictions (Fang et al, 2009;Krishnakumar, 1989;Lee et al, 2006;Yu et al, 2013). Micro-GA applied to this study is an improved version of GA with smaller generation sizes and simplified genetic modifications, hence efficiently reducing the computational resources (Krishnakumar, 1989;Reeves, 1993;Wang et al, 2010).…”
Section: Micro-gamentioning
confidence: 99%
“…We previously calibrated the model for use in western Kansas (Bulatewicz et al, 2009) and further refined the parameters to support nonirrigated cropping for this study. The model component, developed in an earlier effort (Bulatewicz et al, 2014) and implemented using the simple model wrapper (Castronova and Goodall, 2010), has an embedded set of simulated output data from EPIC collected by executing the model for all combinations of the relevant inputs (soil, crop, management, weather).…”
Section: Crop Production Modelmentioning
confidence: 99%
“…(2) dry matter production and partitioning to plant tissues resulting in growth; and 3 We previously calibrated the model for use in western Kansas (Bulatewicz et al, 2009) and further refined the parameters to support non-irrigated cropping for this study. The model component, developed in an earlier effort (Bulatewicz et al, 2014) and implemented using the Simple Model Wrapper (Castronova and Goodall, 2010), has an embedded set of simulated output data from EPIC collected by executing the model for all combinations of the relevant inputs (soil, crop, management, weather).…”
Section: Crop Production Modelmentioning
confidence: 99%