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Optimization of Calibration Parameters for an Event Based Watershed Model Using Genetic Algorithm

机译:基于事件的流域模型遗传算法的标定参数优化

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摘要

In this study, an event based rainfall runoff model has been integrated with Single objective Genetic Algorithm (SGA) and Multi-objective Genetic Algorithm (MGA) for optimization of calibration parameters (i.e. saturated hydraulic conductivity (K (s) ), average capillary suction at the wetting front (S (av) ), initial water content (theta (i) ) and saturated water content (theta (s) )). The integrated model has been applied for Harsul watershed located in India, and Walnut Gulch experimental watershed located in Arizona, USA. Nash-Sutcliffe Efficiency (NSE) and correlation coefficient (r) between observed and simulated runoff have been used to test the performance of runoff models. The SGA and MGA integrated runoff model performance is also compared with the performance of the Hydrologic Engineering Center- Hydrologic Modeling System (HEC_HMS) model. Range of NSE values for study watersheds with integrated MGA, integrated SGA, HEC_HMS and for the event based rainfall runoff models are [-0.61 to 0.79], [-0.5 to 0.74], [-3.37 to 0.82] and [-5.78 to 0.53] respectively. Range of correlation coefficient values for study watersheds with integrated MGA, integrated SGA, HEC_HMS and for the event based rainfall runoff models are [0.18 to 0.95], [-0.55 to 0.90], [-0.18 to 0.97] and [-0.12 to 0.86] respectively. From the results, it is evident that the integrated model is giving the best calibrated parameters as compared to manual calibration methods. Genetic Algorithm (GA) integrated runoff models can be used to simulate the flow parameters of data sparse watersheds.
机译:在这项研究中,基于事件的降雨径流模型已与单目标遗传算法(SGA)和多目标遗传算法(MGA)集成在一起,以优化校准参数(即饱和水力传导率(K(s)),平均毛细吸力)在润湿前沿(S(av)),初始水含量(theta(i))和饱和水含量(theta(s))。该集成模型已应用于位于印度的Harsul流域和位于美国亚利桑那州的Walnut Gulch实验流域。纳什-苏特克利夫效率(NSE)和观测到的模拟径流之间的相关系数(r)已用于测试径流模型的性能。 SGA和MGA集成的径流模型性能也与水文工程中心-水文建模系统(HEC_HMS)模型的性能进行了比较。具有集成MGA,集成SGA,HEC_HMS的研究流域和基于事件的降雨径流模型的NSE值范围为[-0.61至0.79],[-0.5至0.74],[-3.37至0.82]和[-5.78至0.53 ] 分别。具有集成MGA,集成SGA,HEC_HMS的研究流域和基于事件的降雨径流模型的相关系数值范围是[0.18至0.95],[-0.55至0.90],[-0.18至0.97]和[-0.12至0.86 ] 分别。从结果可以看出,与手动校准方法相比,集成模型提供了最佳的校准参数。遗传算法(GA)集成的径流模型可用于模拟数据稀疏流域的流量参数。

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