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首页> 外文期刊>Journal of hydrometeorology >The Schaake Shuffle: A Method for Reconstructing Space–Time Variability in Forecasted Precipitation and Temperature Fields
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The Schaake Shuffle: A Method for Reconstructing Space–Time Variability in Forecasted Precipitation and Temperature Fields

机译:Schaake混洗:一种重构降水和温度场时空变化的方法

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A number of statistical methods that are used to provide local-scale ensemble forecasts of precipitation and temperature do not contain realistic spatial covariability between neighboring stations or realistic temporal persistence for subsequent forecast lead times. To demonstrate this point, output from a global-scale numerical weather prediction model is used in a stepwise multiple linear regression approach to downscale precipitation and temperature to individual stations located in and around four study basins in the United States. Output from the forecast model is downscaled for lead times up to 14 days. Residuals in the regression equation are modeled stochastically to provide 100 ensemble forecasts. The precipitation and temperature ensembles from this approach have a poor representation of the spatial variability and temporal persistence. The spatial correlations for downscaled output are considerably lower than observed spatial correlations at short forecast lead times (e.g., less than 5 days) when there is high accuracy in the forecasts. At longer forecast lead times, the downscaled spatial correlations are close to zero. Similarly, the observed temporal persistence is only partly present at short forecast lead times. A method is presented for reordering the ensemble output in order to recover the space–time variability in precipitation and temperature fields. In this approach, the ensemble members for a given forecast day are ranked and matched with the rank of precipitation and temperature data from days randomly selected from similar dates in the historical record. The ensembles are then reordered to correspond to the original order of the selection of historical data. Using this approach, the observed intersite correlations, intervariable correlations, and the observed temporal persistence are almost entirely recovered. This reordering methodology also has applications for recovering the space–time variability in modeled streamflow.
机译:用于提供降水和温度的局部尺度集合预报的许多统计方法不包含相邻站点之间的实际空间协变性,也不包含后续预报提前期的实际时间持续性。为了证明这一点,将全球规模的数值天气预报模型的输出用于逐步多元线性回归方法,以将降水量和温度降尺度到位于美国四个研究盆地及其周围的各个站点。预测模型的输出缩减了交货时间,最多可缩短14天。对回归方程中的残差进行随机建模,以提供100个总体预测。这种方法产生的降水和温度集合体对空间变异性和时间持续性的描述很差。当预报的准确性很高时,按比例缩小的输出的空间相关性大大低于在较短的预报提前期(例如少于5天)观察到的空间相关性。在更长的预测交付时间下,缩小的空间相关性接近于零。同样,观测到的时间持续性仅在较短的预测提前期中部分存在。提出了一种对集合输出进行重新排序的方法,以恢复降水和温度场的时空变化。用这种方法,对给定预报日的集合成员进行排序,并与从历史记录中相似日期随机选择的日期中的降水和温度数据的等级进行匹配。然后,将乐团重新排序以对应于历史数据选择的原始顺序。使用这种方法,观察到的站点间相关性,变量间的相关性和观察到的时间持久性几乎可以完全恢复。这种重新排序方法还可以用于恢复建模流中的时空变化。

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