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Large-scale hydrological modelling by using modified PUB recommendations: the India-HYPE case

机译:使用修改后的PUB建议进行大规模水文模拟:印度-HYPE案例

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摘要

The scientific initiative Prediction in Ungauged Basins (PUB) (2003-2012 by the IAHS) put considerable effort into improving the reliability of hydrological models to predict flow response in ungauged rivers. PUB's collective experience advanced hydrologic science and defined guidelines to make predictions in catchments without observed runoff data. At present, there is a raised interest in applying catchment models to large domains and large data samples in a multi-basin manner, to explore emerging spatial patterns or learn from comparative hydrology. However, such modelling involves additional sources of uncertainties caused by the inconsistency between input data sets, i.e. particularly regional and global databases. This may lead to inaccurate model parameterisation and erroneous process understanding. In order to bridge the gap between the best practices for flow predictions in single catchments and multi-basins at the large scale, we present a further developed and slightly modified version of the recommended best practices for PUB by Takeuchi et al. (2013). By using examples from a recent HYPE (Hydrological Predictions for the Environment) hydrological model set-up across 6000 subbasins for the Indian subcontinent, named India-HYPE v1.0, we explore the PUB recommendations, identify challenges and recommend ways to overcome them. We describe the work process related to (a) errors and inconsistencies in global databases, unknown human impacts, and poor data quality; (b) robust approaches to identify model parameters using a stepwise calibration approach, remote sensing data, expert knowledge, and catchment similarities; and (c) evaluation based on flow signatures and performance metrics, using both multiple criteria and multiple variables, and independent gauges for "blind tests". The results show that despite the strong physiographical gradient over the subcontinent, a single model can describe the spatial variability in dominant hydrological processes at the catchment scale. In addition, spatial model deficiencies are used to identify potential improvements of the model concept. Eventually, through simultaneous calibration using numerous gauges, the median Kling-Gupta efficiency for river flow increased from 0.14 to 0.64. We finally demonstrate the potential of multi-basin modelling for comparative hydrology using PUB, by grouping the 6000 subbasins based on similarities in flow signatures to gain insights into the spatial patterns of flow generating processes at the large scale.
机译:IAHS于2003年至2012年通过科学倡议“无塞盆地预报”(PUB),为提高水文模型的可靠性做出了巨大努力,以预测未塞满河流的水流响应。 PUB的集体经验使高级水文科学和确定的指导方针得以在没有观测到的径流数据的情况下对流域进行预测。当前,人们越来越关注以多流域方式将流域模型应用于大域和大数据样本,以探索新兴的空间格局或向比较水文学学习。但是,这种建模涉及由输入数据集,特别是区域和全球数据库之间的不一致引起的不确定性的其他来源。这可能会导致模型参数设置不正确和过程理解错误。为了弥合单个流域和大型流域的最佳流量预测最佳实践之间的差距,我们介绍了Takeuchi等人为PUB推荐的最佳实践的进一步开发和稍作修改的版本。 (2013)。通过使用最近在印度次大陆的6000个子流域建立的名为HYPE v1.0的HYPE(环境水文预测)水文模型的示例,我们探索了PUB建议,确定了挑战并提出了克服这些建议的方法。我们描述与(a)全球数据库中的错误和不一致,未知的人为影响以及不良的数据质量有关的工作过程; (b)使用逐步校准方法,遥感数据,专家知识和流域相似性来确定模型参数的可靠方法; (c)基于流量特征和性能指标的评估,同时使用多个标准和多个变量,以及针对“盲测”的独立指标。结果表明,尽管次大陆上的生理梯度很强,但单个模型仍可以描述集水区尺度上主要水文过程的空间变异性。另外,空间模型的缺陷被用来识别模型概念的潜在改进。最终,通过同时使用多个量规进行标定,河流的中位数Kling-Gupta效率从0.14提高到0.64。最后,通过基于流量特征的相似性将6000个子流域分组,以深入了解大规模流产生过程的空间模式,我们最终证明了使用PUB进行多流域水文模拟的潜力。

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