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首页> 外文期刊>Hydrology and Earth System Sciences >Global catchment modelling using World-Wide HYPE (WWH), open data, and stepwise parameter estimation
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Global catchment modelling using World-Wide HYPE (WWH), open data, and stepwise parameter estimation

机译:全球集水区采用全球炒作(WWH),开放数据和逐步参数估计

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摘要

Recent advancements in catchment hydrology (such as understanding catchment similarity, accessing new data sources, and refining methods for parameter constraints) make it possible to apply catchment models for ungauged basins over large domains. Here we present a cutting-edge case study applying catchment-modelling techniques with evaluation against river flow at the global scale for the first time. The modelling procedure was challenging but doable, and even the first model version showed better performance than traditional gridded global models of river flow. We used the open-source code of the HYPE model and applied it for 130 000 catchments (with an average resolution of 1000 km2), delineated to cover the Earth's landmass (except Antarctica). The catchments were characterized using 20 open databases on physiographical variables, to account for spatial and temporal variability of the global freshwater resources, based on exchange with the atmosphere (e.g. precipitation and evapotranspiration) and related budgets in all compartments of the land (e.g. soil, rivers, lakes, glaciers, and floodplains), including water stocks, residence times, and the pathways between various compartments. Global parameter values were estimated using a stepwise approach for groups of parameters regulating specific processes and catchment characteristics in representative gauged catchments. Daily and monthly time series (10?years) from 5338 gauges of river flow across the globe were used for model evaluation (half for calibration and half for independent validation), resulting in a median monthly KGE of 0.4. However, the World-Wide HYPE (WWH) model shows large variation in model performance, both between geographical domains and between various flow signatures. The model performs best (KGE 0.6) in the eastern USA, Europe, South-East Asia, and Japan, as well as in parts of Russia, Canada, and South America. The model shows overall good potential to capture flow signatures of monthly high flows, spatial variability of high flows, duration of low flows, and constancy of daily flow. Nevertheless, there remains large potential for model improvements, and we suggest both redoing the parameter estimation and reconsidering parts of the model structure for the next WWH version. This first model version clearly indicates challenges in large-scale modelling, usefulness of open data, and current gaps in process understanding. However, we also found that catchment modelling techniques can contribute to advance global hydrological predictions. Setting up a global catchment model has to be a long-term commitment as it demands many iterations; this paper shows a first version, which will be subjected to continuous model refinements in the future. WWH is currently shared with regional/local modellers to appreciate local knowledge.
机译:集水流程的最新进步(例如了解集水区相似性,访问新数据源和用于参数约束的精炼方法)使得可以在大型域上应用用于未凝固的盆地的集水模型。在这里,我们展示了一个尖端的案例研究,应用了集水建模技术,并首次在全球范围内对河流进行评估。建模程序具有挑战性,但可行,即使是第一个型号版本也表现出比传统的网格流动的河流型号的性能更好。我们使用了炒作模型的开源代码,并应用于> 130 000个集水区(平均分辨率为1000平方公),划定覆盖地球的陆地(南极洲除外)。该集水区的特征在于在地理变量上使用20个开放数据库,以考虑全球淡水资源的空间和时间可变性,基于与土地的所有隔间(例如土壤的所有隔间(例如土壤)的汇率(例如降水和蒸发)和相关预算(例如,河流,湖泊,冰川和洪水平均值),包括水股,停留时间和各个隔间之间的途径。使用逐步方法来估计全局参数值,用于调节代表性测量集水区中的特定过程和集水区的参数组。每日和每月时间序列(> 10年)从全球范围内的河流5338张河流进行了用于模型评估(用于校准的一半,为独立验证的一半),导致每月kge为0.4。然而,全球炒作(WWH)模型显示了地理域之间和各种流动签名之间的模型性能的大变化。该模型在美国东部,欧洲,东南亚和日本以及俄罗斯,加拿大和南美的地区进行了最佳(KGE> 0.6)。该模型显示出捕获每月高流量的流量签名,高流量的空间变异,低流量持续时间以及日常流动的持续潜力。尽管如此,仍然存在大量的模型改进潜力,我们建议重写参数估计和重新考虑下一个WWH版本的模型结构的部分。第一个模型版本清楚地表明大规模建模,开放数据的有用性以及流程理解的当前间隙中的挑战。然而,我们还发现集水建模技术可以有助于推进全球水文预测。建立全球集水模型必须是长期承诺,因为它需要许多迭代;本文展示了第一版本,将来将经过连续模型改进。 WWH目前与区域/当地莫德尔斯共享,以欣赏本地知识。

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