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Sensitivity of hydrological models to temporal and spatial resolutions of rainfall data

机译:水文模型对降雨数据的时间和空间分辨率的敏感性

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Rainfall is the most important input for rainfall–runoff models. It is usually measured at specific sites on a daily or sub-daily timescale and requires interpolation for further application. This study aims to evaluate whether a higher temporal and spatial resolution of rainfall can lead to improved model performance. Four different gridded hourly and daily rainfall datasets with a spatial resolution of 1 km × 1 km for the state of Baden-Württemberg in Germany were constructed using a combination of data from a dense network of daily rainfall stations and a less dense network of sub-daily stations. Lumped and spatially distributed HBV models were used to investigate the sensitivity of model performance to the spatial resolution of rainfall. The four different rainfall datasets were used to drive both lumped and distributed HBV models to simulate daily discharges in four catchments. The main findings include that (1)?a higher temporal resolution of rainfall improves the model performance if the station density is high; (2)?a combination of observed high temporal resolution observations with disaggregated daily rainfall leads to further improvement in the tested models; and (3)?for the present research, the increase in spatial resolution improves the performance of the model insubstantially or only marginally in most of the study catchments.
机译:降雨是降雨径流模型最重要的投入。它通常在每日或次日时间尺度的特定部位测量,并且需要插值进行进一步应用。本研究旨在评估降雨的更高的时间和空间分辨率是否可以提高模型性能。使用来自日常降雨站的密集网络的数据和较少的子数据,为德国巴登 - 符腾堡州的2个不同的全包分辨率为1 km×1 km的空间分辨率为1公里×1 km×1 km。每日车站。集体和空间分布式的HBV型号用于研究模型性能对降雨的空间分辨率的敏感性。四种不同的降雨数据集用于驱动集总和分布式的HBV型号,以模拟四个集水区的日常放电。主要发现包括(1)?如果站密度高,降雨量的较高的时间分辨率会提高模型性能; (2)?观察到的高颞部分辨率观测的组合,随着日常降雨的分类导致测试模型进一步改善; (3)?对于本研究,空间分辨率的增加提高了模型的性能,或者在大多数研究集水区中略微略微上。

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