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Geostatistical interpolation of daily rainfall at catchment scale: The use of several variogram models in the Ourthe and Ambleve catchments, Belgium

机译:集水区日降水量的地统计插值:比利时Ourthe和Ambleve集水区的几种变异函数模型的使用

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Spatial interpolation of precipitation data is of great importance for hydrological modelling. Geostatistical methods (kriging) are widely applied in spatial interpolation from point measurement to continuous surfaces. The first step in kriging computation is the semi-variogram modelling which usually used only one variogram model for all-moment data. The objective of this paper was to develop different algorithms of spatial interpolation for daily rainfall on 1 km~2 regular grids in the catchment area and to compare the results of geostatistical and deterministic approaches. This study leaned on 30-yr daily rainfall data of 70 raingages in the hilly landscape of the Ourthe and Ambleve catchments in Belgium (2908 km~2). This area lies between 35 and 693 m in elevation and consists of river networks, which are tributaries of the Meuse River. For geostatistical algorithms, seven semi-variogram models (logarithmic, power, exponential, Gaussian, rational quadratic, spherical and penta-spherical) were fitted to daily sample semi-variogram on a daily basis. These seven variogram models were also adopted to avoid negative interpolated rainfall. The elevation, extracted from a digital elevation model, was incorporated into multivariate geostatistics. Seven validation raingages and cross validation were used to compare the interpolation performance of these algorithms applied to different densities of raingages. We found that between the seven variogram models used, the Gaussian model was the most frequently best fit. Using seven variogram models can avoid negative daily rainfall in ordinary kriging. The negative estimates of kriging were observed for convective more than stratiform rain. The performance of the different methods varied slightly according to the density of raingages, particularly between 8 and 70 raingages but it was much different for interpolation using 4 raingages. Spatial interpolation with the geostatistical and Inverse Distance Weighting (IDW) algorithms outperformed considerably the interpolation with the Thiessen polygon, commonly used in various hydrological models. Integrating elevation into Kriging with an External Drift (KED) and Ordinary Cokriging (OCK) did not improve the interpolation accuracy for daily rainfall. Ordinary Kriging (ORK) and IDW were considered to be the best methods, as they provided smallest RMSE value for nearly all cases. Care should be taken in applying UNK and KED when interpolating daily rainfall with very few neighbourhood sample points. These recommendations complement the results reported in the literature. ORK, UNK and KED using only spherical model offered a slightly better result whereas OCK using seven variogram models achieved better result.
机译:降水数据的空间插值对于水文建模非常重要。地统计方法(克里金法)广泛应用于从点测量到连续曲面的空间插值。克里金法计算的第一步是半变异函数建模,该模型通常仅将一个变异函数模型用于全时数据。本文的目的是针对集水区1 km〜2规则网格上的日降雨开发不同的空间插值算法,并比较地统计和确定性方法的结果。这项研究基于比利时Ourthe和Ambleve流域丘陵景观(2908 km〜2)的30年日降雨30年数据。该地区海拔在35至693 m之间,由河网组成,这些河网是默兹河的支流。对于地统计学算法,每天将七个半变异函数模型(对数,幂,指数,高斯,有理二次,球形和五球形)拟合到每日样本半变异函数。还采用了这七个变异函数模型来避免负插值降雨。从数字高程模型中提取的高程已合并到多变量地统计中。使用七个验证raingage和交叉验证来比较这些算法应用于不同密度raingage的插值性能。我们发现,在使用的七个变异函数模型之间,高斯模型是最经常拟合的。使用七个变异函数模型可以避免普通克里金法中的每日负降雨。与对流雨相比,对流对克里金法的负面估计更大。不同方法的性能会根据Raingage的密度而略有不同,特别是在8至70 Raingage之间,但使用4 Raingage进行插值却有很大不同。使用地统计和反距离权重(IDW)算法进行空间插值的效果明显优于通常在各种水文模型中使用的蒂森多边形插值。将高程与外部漂移(KED)和普通协同克里格(OCK)集成到克里格法中并不能提高每日降雨的插值精度。普通克里格(ORK)和IDW被认为是最好的方法,因为它们在几乎所有情况下都提供最小的RMSE值。在用很少的邻域采样点对每日降雨量进行插值时,应谨慎使用UNK和KED。这些建议补充了文献报道的结果。仅使用球形模型的ORK,UNK和KED提供了更好的结果,而使用七个变异函数模型的OCK获得了更好的结果。

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