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Monthly streamflow forecasting at varying spatial scales in the Rhine basin

机译:莱茵河盆地中不同空间尺度的每月流流预测

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Model output statistics (MOS) methods can be used to empirically relate an environmental variable of interest to predictions from earth system models (ESMs). This variable often belongs to a spatial scale not resolved by the ESM. Here, using the linear model fitted by least squares, we regress monthly mean streamflow of the Rhine River at Lobith and Basel against seasonal predictions of precipitation, surface air temperature, and runoff from the European Centre for Medium-Range Weather Forecasts. To address potential effects of a scale mismatch between the ESM's horizontal grid resolution and the hydrological application, the MOS method is further tested with an experiment conducted at the subcatchment scale. This experiment applies the MOS method to 133 additional gauging stations located within the Rhine basin and combines the forecasts from the subcatchments to predict streamflow at Lobith and Basel. In doing so, the MOS method is tested for catchments areas covering 4 orders of magnitude. Using data from the period 1981-2011, the results show that skill, with respect to climatology, is restricted on average to the first month ahead. This result holds for both the predictor combination that mimics the initial conditions and the predictor combinations that additionally include the dynamical seasonal predictions. The latter, however, reduce the mean absolute error of the former in the range of 5 to 12 %, which is consistently reproduced at the subcatchment scale. An additional experiment conducted for 5-day mean streamflow indicates that the dynamical predictions help to reduce uncertainties up to about 20 days ahead, but it also reveals some shortcomings of the present MOS method.
机译:模型输出统计(MOS)方法可用于凭经验与地球系统模型(ESMS)的预测相关的环境变量。该变量通常属于ESM未解决的空间尺度。在这里,使用至少由最小二乘的线性模型,我们将莱茵河莱茵河莱茵河的月平均流出,并巴塞尔反对欧洲中距离预测中心的降水,表面空气温度和径流的季节性预测。为了解决ESM水平网格分辨率和水文应用之间的尺度不匹配的潜在效果,通过在小划分规模进行的实验进一步测试MOS方法。该实验将MOS方法应用于位于莱茵河盆地内的133个额外的测量站,并将预测与分置的预测相结合来预测Lobith和Basel的流流。在这样做时,测试MOS方法对于覆盖4个数量级的集水区区域。使用来自1981-2011期间的数据,结果表明,关于气候学,平均限制了前部的第一个月。该结果适用于模拟初始条件的预测器组合和另外包括动态季节预测的预测组合。然而,后者降低了前者的平均绝对误差在5至12%的范围内,这在分割规模处始终如一地再现。进行5天平均流流的另外的实验表明,动态预测有助于降低未来大约20天的不确定性,但它也揭示了当前MOS方法的一些缺点。

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