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A model for the spatial distribution of snow water equivalent parameterized from the spatial variability of precipitation

机译:由降水的空间变异性参数化的雪当量空间分布模型

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pstrongAbstract./strong Snow is an important and complicated element in hydrological modelling. The traditional catchment hydrological model with its many free calibration??parameters, also in snow sub-models, is not a well-suited tool for predicting conditions for which it has not been calibrated. Such conditions include prediction in ungauged basins and assessing hydrological effects of climate change. In this study, a new model for the spatial distribution of snow water equivalent (SWE), parameterized solely from observed spatial variability of precipitation, is compared with the current snow distribution model used in the operational flood forecasting models in Norway. The former model uses a dynamic gamma distribution and is called Snow Distribution_Gamma, (SD_G), whereas the latter model has a fixed, calibrated coefficient of variation, which parameterizes a log-normal model for snow distribution and is called Snow Distribution_Log-Normal (SD_LN). The two models are implemented in the parameter parsimonious rainfalla??runoff model Distance Distribution Dynamics (DDD), and their capability for predicting runoff, SWE and snow-covered area (SCA) is tested and compared for 71 Norwegian catchments. The calibration period is 1985–2000 and validation period is 2000–2014. Results show that SD_G better simulates SCA when compared with MODIS satellite-derived snow cover. In addition, SWE is simulated more realistically in that seasonal snow is melted out and the building up of "snow towers" and giving spurious positive trends in SWE, typical for SD_LN, is prevented. The precision of runoff simulations using SD_G is slightly inferior, with a reduction in Nasha??Sutcliffe and Klinga??Gupta efficiency criterion of 0.01, but it is shown that the high precision in runoff prediction using SD_LN is accompanied with erroneous simulations of SWE./p.
机译:> >摘要。积雪是水文模拟中一个重要且复杂的元素。传统的流域水文模型及其许多免费的标定参数,同样在雪子模型中,也不适合用于预测尚未标定的条件。这些条件包括在未开垦盆地中进行预测以及评估气候变化的水文影响。在这项研究中,仅根据观测到的降水的空间变异性对参数化的雪水当量(SWE)的空间分布模型进行了比较,并将其与挪威的洪水预报模型中使用的当前降雪模型进行了比较。前一个模型使用动态伽玛分布,称为Snow Distribution_Gamma(SD_G),而后一个模型具有固定的,经过校准的变异系数,该参数为对数正态模型参数化了雪分布,并称为Snow Distribution_Log-Normal(SD_LN )。这两个模型在参数简约降雨a –径流模型距离分布动力学(DDD)中实现,并测试了它们对71个挪威流域的径流,SWE和积雪面积(SCA)的预测能力。校准期为1985年至2000年,有效期为2000年至2014年。结果表明,与MODIS卫星产生的积雪相比,SD_G更好地模拟了SCA。此外,更实际地模拟了SWE,因为季节性的雪被融化了,并且防止了“雪塔”的建立以及SWE中典型的SD_LN产生虚假的积极趋势。使用SD_G进行径流模拟的精度稍差,Nasha ?? Sutcliffe和Klinga ?? Gupta效率标准降低了0.01,但结果表明,使用SD_LN进行径流预测的高精度伴随着SWE的错误模拟。

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