首页> 外文期刊>Hydrology and Earth System Sciences >On the uncertainties associated with using gridded rainfall data as a proxy for observed
【24h】

On the uncertainties associated with using gridded rainfall data as a proxy for observed

机译:关于使用栅格化降雨数据代替观测数据的不确定性

获取原文
获取原文并翻译 | 示例
       

摘要

Gridded rainfall datasets are used in many hydrological and climatological studies, in Australia and elsewhere, including for hydroclimatic forecasting, climate attribution studies and climate model performance assessments. The attraction of the spatial coverage provided by gridded data is clear, particularly in Australia where the spatial and temporal resolution of the rainfall gauge network is sparse. However, the question that must be asked is whether it is suitable to use gridded data as a proxy for observed point data, given that gridded data is inherently "smoothed" and may not necessarily capture the temporal and spatial variability of Australian rainfall which leads to hydroclimatic extremes (i.e. droughts, floods). This study investigates this question through a statistical analysis of three monthly gridded Australian rainfall datasets-the Bureau of Meteorology (BOM) dataset, the Australian Water Availability Project (AWAP) and the SILO dataset. The results of the monthly, seasonal and annual comparisons show that not only are the three gridded datasets different relative to each other, there are also marked differences between the gridded rainfall data and the rainfall observed at gauges within the corresponding grids-particularly for extremely wet or extremely dry conditions. Also important is that the differences observed appear to be non-systematic. To demonstrate the hydrological implications of using gridded data as a proxy for gauged data, a rainfall-runoff model is applied to one catchment in South Australia initially using gauged data as the source of rainfall input and then gridded rainfall data. The results indicate a markedly different runoff response associated with each of the different sources of rainfall data. It should be noted that this study does not seek to identify which gridded dataset is the "best" for Australia, as each gridded data source has its pros and cons, as does gauged data. Rather, the intention is to quantify differences between various gridded data sources and how they compare with gauged data so that these differences can be considered and accounted for in studies that utilise these gridded datasets. Ultimately, if key decisions are going to be based on the outputs of models that use gridded data, an estimate (or at least an understanding) of the uncertainties relating to the assumptions made in the development of gridded data and how that gridded data compares with reality should be made.
机译:网格化降雨数据集在澳大利亚和其他地区的许多水文和气候研究中均得到使用,包括水文气候预测,气候归因研究和气候模型性能评估。网格数据提供的空间覆盖很明显,尤其是在澳大利亚,那里的雨量计网络的空间和时间分辨率都很稀疏。但是,必须问的问题是,鉴于网格数据固有地“平滑”并且不一定捕获澳大利亚降雨在时间和空间上的变化,因此网格数据是否适合用作观测点数据的代理。极端水文气候(即干旱,洪水)。本研究通过对三个月度栅格化的澳大利亚降雨数据集(气象局(BOM)数据集,澳大利亚水资源利用项目(AWAP)和SILO数据集)进行统计分析来调查此问题。月度,季节和年度比较的结果表明,不仅三个栅格数据集彼此相对不同,而且栅格降雨数据与相应栅格内的标尺处观测到的降雨之间也存在明显差异,尤其是对于极端潮湿的情况或极端干燥的条件。同样重要的是,观察到的差异似乎是非系统性的。为了证明使用网格数据代替已测量数据的水文含义,首先在南澳大利亚的一个流域应用降雨径流模型,首先使用已测量数据作为降雨输入源,然后再使用网格降雨数据。结果表明与降雨数据的每个不同来源相关的径流响应明显不同。应当指出的是,这项研究并未试图确定哪个网格数据集是澳大利亚的“最佳”数据,因为每个网格数据源都有其优缺点,而测量数据也是如此。相反,其目的是量化各种网格化数据源之间的差异以及它们如何与测量数据进行比较,以便在利用这些网格化数据集的研究中可以考虑和解释这些差异。最终,如果关键决策将基于使用网格数据的模型的输出,则将估算(或至少是理解)与开发网格数据中的假设有关的不确定性以及该网格数据与应该做到现实。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号