On optimization of calibrations of a distributed hydrological model with spatially distributed information on snow

Dipti Tiwari, Mélanie Trudel, R. Leconte
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引用次数: 1

Abstract

Abstract. In northern cold-temperate countries, a large portion of annual streamflow is produced by spring snowmelt, which often triggers floods. It is important to have spatial information about snow variables such as snow water equivalent (SWE), which can be incorporated into hydrological models, making them more efficient tools for improved decision-making. The present research implements a unique spatial pattern metric in a multi-objective framework for calibration of hydrological models and attempts to determine whether raw SNODAS (SNOw Data Assimilation System) data can be utilized for hydrological model calibration. The spatial efficiency (SPAEF) metric is explored for spatially calibrating SWE. Different calibration experiments are performed combining Nash–Sutcliffe efficiency (NSE) for streamflow and root-mean-square error (RMSE) and SPAEF for SWE, using the Dynamically Dimensioned Search (DDS) and Pareto Archived Dynamically Dimensioned Search multi-objective optimization (PADDS) algorithms. Results of the study demonstrate that multi-objective calibration outperforms sequential calibration in terms of model performance (SWE and discharge simulations). Traditional model calibration involving only streamflow produced slightly higher NSE values; however, the spatial distribution of SWE could not be adequately maintained. This study indicates that utilizing SPAEF for spatial calibration of snow parameters improved streamflow prediction compared to the conventional practice of using RMSE for calibration. SPAEF is further implied to be a more effective metric than RMSE for both sequential and multi-objective calibration. During validation, the calibration experiment incorporating multi-objective SPAEF exhibits enhanced performance in terms of NSE and Kling–Gupta efficiency (KGE) compared to calibration experiment solely based on NSE. This observation supports the notion that incorporating SPAEF computed on raw SNODAS data within the calibration framework results in a more robust hydrological model. The novelty of this study is the implementation of SPAEF with respect to spatially distributed SWE for calibrating a distributed hydrological model.
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论利用空间分布的雪信息优化分布式水文模型的校准
摘要在北方寒温带国家,每年的河水流量有很大一部分是由春季融雪产生的,而融雪往往会引发洪水。掌握雪变量的空间信息非常重要,例如雪水当量(SWE),可以将其纳入水文模型,使其成为改进决策的更有效工具。本研究在校准水文模型的多目标框架中实施了一种独特的空间模式度量,并试图确定 SNODAS(SNOw 数据同化系统)原始数据是否可用于水文模型校准。探讨了校准 SWE 的空间效率 (SPAEF) 指标。利用动态维度搜索(DDS)和帕累托拱形动态维度搜索多目标优化(PADDS)算法,结合纳什-苏特克利夫效率(NSE)(针对河水流量)和均方根误差(RMSE)(针对西南环流)以及 SPAEF,进行了不同的校准实验。研究结果表明,多目标校核在模型性能(SWE 和排水模拟)方面优于顺序校核。传统的模型校准只涉及流体流量,产生的 NSE 值稍高,但不能充分保持 SWE 的空间分布。这项研究表明,与使用 RMSE 进行校准的传统做法相比,利用 SPAEF 对雪参数进行空间校准可改进对溪流的预测。在连续校准和多目标校准中,SPAEF 都是比 RMSE 更有效的指标。在验证过程中,与仅基于 NSE 的校准实验相比,包含多目标 SPAEF 的校准实验在 NSE 和 Kling-Gupta 效率(KGE)方面表现出更高的性能。这一观察结果支持了这样一种观点,即在校准框架中纳入根据 SNODAS 原始数据计算的 SPAEF 会产生更稳健的水文模型。本研究的新颖之处在于针对空间分布的 SWE 实施 SPAEF,以校准分布式水文模型。
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