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Estimating parameters of the variable infiltration capacity model using ant colony optimization

机译:利用蚁群优化估计变量入渗能力模型的参数

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Because hydrological models are so important for addressing environmental problems, parameter calibration is a fundamental task for applying them. A broadly used method for obtaining model parameters for the past 20 years is the evolutionary algorithm. This approach can estimate a set of unknown model parameters by simulating the evolution process. The ant colony optimization (ACO) algorithm is a type of evolutionary algorithm that has shown a strong ability in tackling combinatorial problems and is suitable for hydrological model calibration. In this study, an ACO based on the grid partitioning strategy was applied to the parameter calibration of the variable infiltration capacity (VIC) model for the Upper Heihe River basin and Xitiaoxi River basin, China. The shuffled complex evolution (SCE-UA) algorithm was used to test the applicability of the ACO. The results show that ACO is capable of model calibration of the VIC model; the Nash-Sutcliffe coefficient of efficiency is 0.62 and 0.81 in calibration and 0.65 and 0.86 in validation for the Upper Heihe River basin and Xitiaoxi River basin respectively, which are similar to the SCE-UA results. Despite the encouraging results obtained thus far, further studies could still be performed on the parameter optimization of an ACO to enlarge its applicability to more distributed hydrological models.
机译:由于水文模型对于解决环境问题非常重要,因此参数校准是应用它们的基本任务。在过去20年中,获取模型参数的一种广泛使用的方法是进化算法。这种方法可以通过模拟演化过程来估计一组未知模型参数。蚁群优化(ACO)算法是一种进化算法,在解决组合问题方面显示出强大的能力,适用于水文模型校准。本研究将基于网格划分策略的ACO应用于中国黑河上游流域和西条溪流域的可变渗透能力(VIC)模型的参数标定。改组的复杂进化算法(SCE-UA)用于测试ACO的适用性。结果表明,ACO具有对VIC模型进行模型校准的能力。黑河上游流域和西条溪流域的纳什—苏特克利夫效率系数分别为0.62和0.81,有效值分别为0.65和0.86,与SCE-UA结果相似。尽管到目前为止获得了令人鼓舞的结果,但仍可以对ACO的参数优化进行进一步的研究,以扩大其对更多分布式水文模型的适用性。

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