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http://dx.doi.org/10.5389/KSAE.2004.46.5.041

Parameter Optimization of Long and Short Term Runoff Models Using Genetic Algorithm  

Kim, Sun-Joo (건국대학교 생명환경과학대학)
Jee, Yong-Geun (건국대학교 대학원)
Kim, Phil-Shik (건국대학교 대학원)
Publication Information
Journal of The Korean Society of Agricultural Engineers / v.46, no.5, 2004 , pp. 41-52 More about this Journal
Abstract
In this study, parameters of long and short term runoff model were optimized using genetic algorithm as a basic research for integrated water management in a watershed. In case of Korea where drought and flood occurr frequently, the integrated water management is necessary to minimize possible damage of drought and flood. Modified TANK model was optimized as a long term runoff model and storage-function model was optimized as a short term runoff model. Besides distinguished parameters were applied to modified TANK model for supplementing defect that the model estimates less runoff in the storm period. As a result of application, simulated long and short term runoff results showed 7% and 5% improvement compared with before optimized on the average. In case of modified TANK model using distinguished parameters, the simulated runoff after optimized showed more interrelationship than before optimized. Therefore, modified TANK model can be applied for the long term water balance as an integrated water management in a watershed. In case of storage-function model, simulated runoff in the storm period showed high interrelationship with observed one. These optimized models can be applied for the runoff analysis of watershed.
Keywords
genetic algorithm; modified TANK model; storage-function model; parameter optimization;
Citations & Related Records
Times Cited By KSCI : 1  (Citation Analysis)
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