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Development and accuracy assessment of a 12-digit hydrologic unit code based real-time climate database for hydrologic models in the US

机译:基于12位水文单位代码的发展与准确性评估美国水文模型的实时气候数据库

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Accurate daily weather data are critical for hydrologic models simulating and predicting hydrologic processes. Many researchers have focused on the impacts of precipitation on hydrologic simulations, but few studies integrated both temperature and precipitation data for historical and forecast periods in hydrologic models and evaluated the weather data accuracy at national scale. This study evaluated four extracting methods (mean (MN), median (MD), centroid (CT), and area-weighted (AW) approaches) for summarizing weather data for subwatersheds defined in a hydrologic model. Firstly, an optimized extracting method was used to develop a realtime HUC-12 (12-digit Hydrologic Unit Code) level dataset for the Conterminous United States. The hydrologic model with the CT weather data performed the best, followed by MN, AW, and then MD. Secondly, per this method, a real-time dataset including historical and forecast data at HUC-12 level across the conterminous United States was created. Last, continuous daily forecast data at national scale displayed that large forecast overestimations were usually observed in large forecast precipitation events over 20 mm. Simultaneously, there were large underestimations in small forecast precipitation events less than 5 mm. Forecast maximum temperature showed a more substantial bias than that minimum temperature, with the largest underestimation for the lower forecast maximum temperature less than 15 degrees C. With regard to data stability of the historical observed temperature data, provisional and early temperature data from Parameter-elevation Regressions on Independent Slopes Model (PRISM) in the most recent seven months are as reliable as the stable data that is subject to quality control measures before it replaces the provisional and early data. However, forecast data often included bias in the extreme weather conditions, such as heavy precipitation and scorching temperature. Forecast data, which is updated multiple times each day, was frequently subject to an opposite bias (trending toward less extreme values) in the presence of strong frontal systems presumably due to the exact location and speed of the front being difficult to predict. Fully processed weather data from this work will be published online to facilitate hydrologic modeling efforts in the US and inform users about the uncertainty in the forecast data.
机译:准确的每日天气数据对于模拟和预测水文过程的水文模型至关重要。许多研究人员侧重于降水对水文模拟的影响,但很少有研究在水文模型中综合历史和预测期的温度和降水数据,并在国家规模中评估了天气数据准确性。本研究评估了四种提取方法(平均值(Mn),中值(MD),质心(CT)和面积加权(AW)方法),用于总结在水文模型中定义的副过程中的天气数据。首先,优化的提取方法用于开发针刺美国的实时HUC-12(12位水文单位代码)水平数据集。具有CT天气数据的水文模型最佳,其次是Mn,AW,然后是MD。其次,根据本方法,创建了一个实时数据集,包括在孔雀石美国的HUC-12水平上的历史和预测数据。最后,在国家规模的连续日常预测数据显示,通常在大20毫米的大型预测降水事件中观察到大型预测高估。同时,小于5毫米的小预测降水事件中存在大的低估。预测最大温度显示比最小温度更大的偏差,最大值低于预测的最大温度,最高温度小于15摄氏度。关于历史观察到的温度数据的数据稳定性,来自参数高度的临时和早期温度数据的数据稳定性在最近的七个月内独立斜坡模型(棱镜)的回归是作为在替换临时和早期数据之前进行质量控制措施的稳定数据的稳定数据。然而,预测数据通常包括极端天气条件下的偏差,例如重度降水和烧焦温度。在每天多次更新的预测数据经常受到相反的偏置(趋向于极端值的趋势),在存在强的正面系统中可能由于前面的确切位置和速度难以预测。本工作中的完全处理的天气数据将在线发布,促进美国的水文建模工作,并告知用户预测数据的不确定性。

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