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首页> 外文期刊>International Journal of Climatology: A Journal of the Royal Meteorological Society >Uncertainty in gridded precipitation products: Influence of station density, interpolation method and grid resolution
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Uncertainty in gridded precipitation products: Influence of station density, interpolation method and grid resolution

机译:网格沉淀产品中的不确定性:站密度,插值法和网格分辨率的影响

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摘要

>This work analyses three uncertainty sources affecting the observation‐based gridded data sets: station density, interpolation methodology and spatial resolution. For this purpose, we consider precipitation in two countries, Poland and Spain, three resolutions (0.11, 0.22 and 0.44°), three interpolation methods, both areal‐ and point‐representative implementations, and three different densities of the underlying station network (high/medium/low density). As a result, for each resolution and interpolation approach, nine different grids have been obtained for each country and inter‐compared using a variance decomposition methodology. >Results indicate larger differences among the data sets for Spain than for Poland, mainly due to the larger spatial variability and complex orography of the former region. The variance decomposition points out to station density as the most influential factor, independent of the season, the areal‐ or point‐representative implementation and the country considered, and slightly increasing with the spatial resolution. In contrast, the decomposition is stable when extreme precipitation indices are considered, in particular for the 50‐year return value. >Finally, the uncertainty due to station sub‐sampling inside a particular grid box decreases with the number of stations used in the averaging/interpolation. In the case of spatially homogeneous grid boxes, the interpolation approach obtains similar results for all the parameters, excepting the wet day frequency, independently of the number of stations. When there is a more significant internal variability in the grid box, the interpolation is more sensitive to the number of stations, pointing out to a minimum stations’ density for the target resolution (six to seven stations).
机译: >本工作分析了影响基于观察的网格数据集的三个不确定性来源:站密度,插值方法和空间分辨率。为此目的,我们考虑两个国家,波兰和西班牙的降水,三项分辨率(0.11,0.22和0.44°),三种插值方法,既有指数和点代表的实施,以及底层站网络的三种不同密度(高/中/低密度)。因此,对于每个分辨率和插值方法,已经为每个国家获得了九个不同的网格,并使用方差分解方法进行互比。 >结果表明西班牙的数据集中的较大差异而不是波兰,主要是由于前一个地区的空间变异性和复杂的地形。方差分解指出站密度作为最有影响力的因素,独立于本赛季,所考虑的区域或点代表的实施和所考虑的国家,并随空间决议略微增加。相反,当考虑极端降水指数时,分解是稳定的,特别是对于50年的返回值。 >最终,特定网格箱内部采样引起的不确定性随数字而减小用于平均/插值的站。在空间均匀的网格箱的情况下,插值方法对所有参数获得类似的结果,除湿日频率之外,独立于车站的数量。当网格盒中存在更大的内部变异性时,内插对站数更敏感,指出目标分辨率的最小站密度(六到七个站)。

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