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The Value of Accurate High-Resolution and Spatially Continuous Snow Information to Streamflow Forecasts

机译:精确的高分辨率和空间连续雪信息的价值来流流量预测

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Previous studies have shown limited success in improving streamflow forecasting for snow-dominated watersheds using physically based models, primarily due to the lack of reliable snow water equivalent (SWE) information. Here we use a hindcasting approach to evaluate the potential benefit that a high-resolution, spatiotemporally continuous, and accurate SWE reanalysis product would have on the seasonal streamflow forecast in the snow-dominated Sierra Nevada mountains of California if such an SWE product were available in real time. We tested the efficacy of a physically based ensemble streamflow prediction (ESP) framework when initialized with the reanalysis SWE. We reinitialized the SWE over the Sierra Nevada at the time when the Sierra Nevada had domain-wide annual maximum SWE for each year in 1985-2015, and on 1 February of the driest years within the same period. The early season forecasts on 1 February provide valuable lead time for mitigating the impact of drought. In both experiments, initializing the ESP with the reanalysis SWE reduced the seasonal streamflow forecast errors; compared with existing operational statistical forecasts, the peak-annual SWE insertion and the 1 February SWE insertion reduced the overall root-mean-square error of the seasonal streamflow forecasts by 13% and 23%, respectively, over the 13 major rivers draining the Sierra Nevada. The benefits of the reanalysis SWE insertion are more pronounced in areas with greater snow accumulation, while the complex snow and runoff-generation processes in low-elevation areas impede the forecasting skill improvement through SWE reinitialization alone.
机译:以前的研究表明,使用物理基础的模型改善了对雪撬流域的流流预测有限,主要是由于缺乏可靠的雪水等效(SWE)信息。在这里,我们使用一种致力传播的方法来评估高分辨率,时尚连续,准确的SWE Reanalysis产品在加利福尼亚州的雪撬塞拉尼亚山脉中的季节性流流预测上的潜在益处即时的。当用重新分析SWE初始化时,我们测试了物理基础集合流预测(ESP)框架的功效。我们在1985 - 2015年塞拉尼亚达每年在塞拉尼亚队的全部年度最高马力队(Sierra Nevada)在1985年至2015年度划分的塞拉尼亚队重组了SWE,并于同期最干燥的几年的2月1日。 2月1日的初期预测提供了减轻干旱影响的有价值的交货时间。在两个实验中,用重新分析SWE初始化ESP减少了季节性流流量预测误差;与现有的运营统计预测相比,峰年度SWE插入和2月1日SWE插入减少了13%和23%的季节流流量预测的整体根均方误差,在排放塞拉的13个主要河流上内华达州。重新分析SWE插入的益处在具有更高积雪的地区更加明显,而低升高区域的复杂雪和径流发电过程妨碍了通过SWE重新初始化的预测技能改进。

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