Downscaling methods are used to derive stream flow at a high temporal resolution from a data series that has a coarser time resolution. These algorithms are useful for many applications, such as water management and statistical analysis, because in many cases stream flow time series are available with coarse temporal steps (monthly), especially when considering historical data; however, in many cases, data that have a finer temporal resolution are needed (daily).\ud\udIn this study, we considered a simple but efficient stochastic auto-regressive model that is able to downscale the available stream flow data from monthly to daily time resolution and applied it to a large dataset that covered the entire North and Central American continent. Basins with different drainage areas and different hydro-climatic characteristics were considered, and the results show the general good ability of the analysed model to downscale monthly stream flows to daily stream flows, especially regarding the reproduction of the annual maxima. If the performance in terms of the reproduction of hydrographs and duration curves is considered, better results are obtained for those cases in which the hydrologic regime is such that the annual maxima stream flow show low or medium variability, which means that they have a low or medium coefficient of variation; however, when the variability increases, the performance of the model decreases.
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机译:缩减方法用于从具有较粗时间分辨率的数据序列中以高时间分辨率导出流。这些算法对于许多应用(例如水管理和统计分析)很有用,因为在许多情况下,流量时间序列可以使用粗略的时间步长(每月一次)获得,尤其是在考虑历史数据时;但是,在许多情况下,(每日)需要时间分辨率更高的数据。\ ud \ ud在本研究中,我们考虑了一个简单但有效的随机自回归模型,该模型能够将可用流数据从每月缩减为每日时间分辨率,并将其应用于覆盖整个北美洲和中美洲大陆的大型数据集。考虑了具有不同流域和不同水文气候特征的流域,结果表明,所分析的模型具有将月流降级为日流的总体良好能力,尤其是在年度最大值的再现方面。如果考虑水文图的再现和持续时间曲线的性能,则对于那些水文状况使得年度最大流量显示出低或中等变化性的情况,可以获得更好的结果,这意味着它们具有低或中等的变化。中等变异系数;但是,当变异性增加时,模型的性能会下降。
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