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A comparison of parameter estimation for distributed hydrological modelling using automatic and manual methods

机译:自动和手动方法分布式水文建模参数估计比较

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Distributed hydrological models have become the main tool to study the hydrology natural law and solve the hydrology practice question. However, the definition of model parameter values limits their application. Manual calibration is time consuming and often tedious, and the automatic calibration method could be an innovative way of improving the traditional model fitting procedure. PEST is designed for easy linkage with other models and has been applied to many distributed hydrological model. Therefore, the PEST model is selected in this paper to link with the WATLAC model and calibrate the parameters, and compare the calibration results with manual results. The results show that the difference of two group parameter values is obvious. The PEST model can easily drive the WATLAC model and gain the optimal parameter values efficiently. The WATLAC model produces an overall good fit, the E_(ns) values, except in 2001, are more than 0.83 and with an average of 0.93. But the relative runoff depth errors are larger slightly than manual results. The simulated stream flow hydrographs with PEST demonstrated a closer agreement with the observed hydrographs, while, the model simulation using manual calibration method behaved not very well and there was a tendency for the model to enlarge the peak flows.
机译:分布式水文模型已成为研究水文自然法的主要工具,解决水文实践问题。但是,模型参数值的定义限制了其应用程序。手动校准是耗时且经常乏味,自动校准方法可能是一种改进传统模型拟合程序的创新方法。害虫设计用于与其他型号轻松联系,已应用于许多分布式水文模型。因此,在本文中选择了害虫模型,以与Watlac模型链接并校准参数,并将校准结果与手动结果进行比较。结果表明,两个组参数值的差异是显而易见的。害虫模型可以轻松驱动Watlac模型并有效地获得最佳参数值。 Watlac模型产生整体良好的拟合,E_(ns)值除外,除2001年外,均多为0.83,平均为0.93。但相对径流深度误差略大于手动结果。具有害虫的模拟流流程文化与观察到的文档较近,虽然使用手动校准方法的模型仿真表现得不是很好,并且模型倾向于扩大峰值流动。

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