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首页> 外文期刊>Hydrology and Earth System Sciences >A framework for seasonal variations of hydrological model parameters: impact on model results and response to dynamic catchment characteristics
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A framework for seasonal variations of hydrological model parameters: impact on model results and response to dynamic catchment characteristics

机译:水文模型参数的季节变异框架:对模型结果的影响和对动态集水区的响应

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Previous studies have shown that the seasonal dynamics of model parameters can compensate for structural defects of hydrological models and improve the accuracy and robustness of the streamflow forecast to some extent. However, some fundamental issues for improving model performance with seasonal dynamic parameters still need to be addressed. In this regard, this study is dedicated to (1) proposing a novel framework for seasonal variations of hydrological model parameters to improve model performance and (2) expanding the discussion on model results and the response of seasonal dynamic parameters to dynamic characteristics of catchments. The procedure of the framework is developed with (1) extraction of the dynamic catchment characteristics using current data-mining techniques, (2) subperiod calibration operations for seasonal dynamic parameters, considering the effects of the significant correlation between the parameters, the number of multiplying parameters, and the temporal memory in the model states in two adjacent subperiods on calibration operations, and (3) multi-metric assessment of model performance designed for various flow phases. The main finding is that (1) the proposed framework significantly improved the accuracy and robustness of the model; (2) however, there was a generally poor response of the seasonal dynamic parameter set to catchment dynamics. Namely, the dynamic changes in parameters did not follow the dynamics of catchment characteristics. Hence, we deepen the discussion on the poor response in terms of (1) the evolutionary processes of seasonal dynamic parameters optimized by global optimization, considering that the possible failure in finding the global optimum might lead to unreasonable seasonal dynamic parameter values. Moreover, a practical tool for visualizing the evolutionary processes of seasonal dynamic parameters was designed using geometry visualization techniques. (2) We also discuss the strong correlation between parameters considering that dynamic changes in one parameter might be interfered with by other parameters due to their interdependence. Consequently, the poor response of the seasonal dynamic parameter set to dynamic catchment characteristics may be attributed in part to the possible failure in finding the global optimum and strong correlation between parameters. Further analysis also revealed that even though individual parameters cannot respond well to dynamic catchment characteristics, a dynamic parameter set could carry the information extracted from dynamic catchment characteristics and improve the model performance.
机译:以前的研究表明,模型参数的季节性动态可以补偿水文模型的结构缺陷,并在一定程度上提高流流预测的准确性和稳健性。但是,需要解决以提高季节性动态参数的模型性能的一些基本问题仍然需要解决。在这方面,本研究专用于(1)提出了一种新颖的水文模型参数季节变化框架,以改善模型性能和(2)扩展模型结果的讨论和季节性动态参数对集水动态特征的响应。使用当前数据挖掘技术(2)用于季节性动态参数的电流数据挖掘技术的动态集水器特性提取(1)提取的框架的过程,考虑到参数之间的显着相关性,乘法数量的效果参数,以及模型状态中的校准操作中的两个相邻子超过级的时间内存,以及(3)为各种流动阶段设计的模型性能的多度量评估。主要发现是(1)拟议的框架显着提高了模型的准确性和鲁棒性; (2)但是,季节性动态参数的响应普遍较差,设置为集水动态。即,参数的动态变化没有遵循集水区的动态。因此,考虑到发现全局最优的可能失败可能导致不合理的季节性动态参数值,我们深化了对(1)季节性动态参数的进化过程的讨论。此外,使用几何可视化技术设计了用于可视化季节性动态参数进化过程的实用工具。 (2)我们还讨论了参数之间的强关系,考虑到由于它们的相互依存,其他参数可能会受到其他参数的动态变化。因此,季节性动态参数设置为动态集水区特征的较差可以部分地归因于找到参数之间的全局最佳和强相关性的可能性失败。进一步的分析还揭示了即使单独的参数不能响应动态集水区特征,则动态参数集可以携带从动态节省量特征提取的信息并提高模型性能。

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