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Performance and robustness of probabilistic river forecasts computed with quantile regression based on multiple independent variables

机译:基于多个自变量的分位数回归计算概率河预报的性能和鲁棒性

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This study applies quantile regression (QR) to predict exceedance probabilities of various water levels, including flood stages, with combinations of deterministic forecasts, past forecast errors and rates of water level rise as independent variables. A computationally cheap technique to estimate forecast uncertainty is valuable, because many national flood forecasting services, such as the National Weather Service (NWS), only publish deterministic single-valued forecasts. The study uses data from the 82 river gauges, for which the NWS' North Central River Forecast Center issues forecasts daily. Archived forecasts for lead times of up to 6 days from 2001 to 2013 were analyzed. Besides the forecast itself, this study uses the rate of rise of the river stage in the last 24 and 48 h and the forecast error 24 and 48 h ago as predictors in QR configurations. When compared to just using the forecast as an independent variable, adding the latter four predictors significantly improved the forecasts, as measured by the Brier skill score and the continuous ranked probability score. Mainly, the resolution increases, as the forecast-only QR configuration already delivered high reliability. Combining the forecast with the other four predictors results in a much less favorable performance. Lastly, the forecast performance does not strongly depend on the size of the training data set but on the year, the river gauge, lead time and event threshold that are being forecast. We find that each event threshold requires a separate configuration or at least calibration.
机译:这项研究应用分位数回归(QR)来预测各种水位(包括洪水阶段)的超标概率,并将确定性预测,过去的预测误差和水位上升速度作为独立变量。一种计算上便宜的技术来估计预报不确定性非常有价值,因为许多国家洪水预报服务(例如国家气象局(NWS))仅发布确定性单值预报。这项研究使用了来自82个河流水位的数据,NWS的北部中央河流预报中心每天都会发布这些数据。分析了从2001年到2013年长达6天的交付周期的存档预测。除了预报本身外,本研究还使用最近24和48小时内河段的上升速度以及24和48小时前的预报误差作为QR配置中的预报器。与仅将预测用作独立变量进行比较时,通过Brier技能得分和连续排名概率得分来衡量,添加后四个预测变量显着改善了预测。主要是,分辨率提高了,因为仅预测的QR配置已经提供了高可靠性。将预测与其他四个预测器组合会导致效果不佳。最后,预报的表现并不完全取决于训练数据集的大小,而取决于所预报的年份,河流水位,提前期和事件阈值。我们发现每个事件阈值都需要单独的配置或至少需要校准。

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