首页> 外文期刊>Journal of hydrometeorology >Predicting the US Drought Monitor Using Precipitation, Soil Moisture, and Evapotranspiration Anomalies. Part II: Intraseasonal Drought Intensification Forecasts
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Predicting the US Drought Monitor Using Precipitation, Soil Moisture, and Evapotranspiration Anomalies. Part II: Intraseasonal Drought Intensification Forecasts

机译:使用沉淀,土壤水分和蒸发异常预测美国干旱监测。 第二部分:陷入困境的干旱强化预测

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摘要

Probabilistic forecasts of U.S. Drought Monitor (USDM) intensification over 2-, 4-, and 8-week time periods are developed based on recent anomalies in precipitation, evapotranspiration, and soil moisture. These statistical forecasts are computed using logistic regression with cross validation. While recent precipitation, evapotranspiration, and soil moisture do provide skillful forecasts, it is found that additional information on the current state of the USDM adds significant skill to the forecasts. The USDM state information takes the form of a metric that quantifies the "distance'' from the next-higher drought category using a nondiscrete estimate of the current USDM state. This adds skill because USDM states that are close to the next-higher drought category are more likely to intensify than states that are farther from this threshold. The method shows skill over most of the United States but is most skillful over the north-central United States, where the cross-validated Brier skill score averages 0.20 for both 2- and 4-week forecasts. The 8-week forecasts are less skillful in most locations. The 2-and 4-week probabilities have very good reliability. The 8-week probabilities, on the other hand, are noticeably overconfident. For individual drought events, the method shows the most skill when forecasting high-amplitude flash droughts and when large regions of the United States are experiencing intensifying drought.
机译:基于沉淀,蒸散和土壤水分的最近的异常,开发了美国干旱监测监测(USDM)强化的概率预测。使用具有交叉验证的逻辑回归来计算这些统计预测。虽然最近的降水,蒸散和土壤水分确实提供了熟练的预测,但发现关于当前USDM的附加信息增加了预测的显着技能。 USDM状态信息采用度量标准的形式,该指标的形式使用当前USDM状态的非屏幕估计来计算来自下一个干旱类别的“距离”。这增加了技能,因为靠近下一个干旱类别的USDM状态更有可能比这种阈值更远的状态加强。该方法显示出大部分美国的技能,但在美国北部美国最娴熟,其中交叉验证的Brier技能评分为2-20和4周的预测,该方法显示了预测高幅度闪蒸干旱以及当地大区域正在经历强化干旱时的技能。

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