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Combining Stochastic Weather Generation and Ensemble Weather Forecasts for Short-Term Streamflow Prediction

机译:结合随机天气预报和集合天气预报进行短期流量预报

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Ensemble streamflow predictions (ESPs) offer great potential benefits for water resource management, as they contain key probabilistic information for analyzing prediction uncertainty. Ensemble weather forecasts (EWFs) are usually incorporated into ESPs to provide climate information. However, there is no simple way to combine both of them, since EWFs are generally biased and under-dispersed. This study presents a new short-term (1 to 7 lead days) probabilistic streamflow prediction system combining stochastic weather generation and EWFs. The bias and under-dispersion of EWFs were first corrected using a weather generator-based post-processing approach (GPP). The corrected weather forecasts were then coupled with a hydrological model for streamflow forecasts. The proposed GPP forecast was compared against two other forecasts, one using the raw EWF (GFS), and the other using a stochastic weather generator (WG). The comparison was carried out over two Quebec watersheds, using a set of deterministic and probabilistic verification metrics. The deterministic metrics showed that the GPP forecast is consistently the best at predicting the ensemble mean streamflow for both watersheds and for all the leads ranging between 1 and 7 days, followed by the WG forecast. The probabilistic metrics showed negative or near zero skill retained by the GFS forecast for the first 7 lead days. The WG system was much more skillful than the GFS. The GPP forecast consistently displayed the highest skill and reliability in terms of all the metrics applied. With increasing lead days, the skill and reliability of the GPP forecast tend to converge toward that of the WG forecast, indicating that the short-term GPP forecast could easily be linked to a pure WG forecast to extend the forecast horizon.
机译:集合流量预测(ESP)为水资源管理提供了巨大的潜在好处,因为它们包含用于分析预测不确定性的关键概率信息。集成天气预报(EWF)通常合并到ESP中以提供气候信息。但是,没有简单的方法将两者结合起来,因为EWF通常是有偏见的且分散程度不高。这项研究提出了一个新的短期(1至7个交付日)概率随机流预测系统,结合了随机天气生成和EWF。首先使用基于天气生成器的后处理方法(GPP)纠正EWF的偏差和色散不足。然后将校正后的天气预报与水文模型相结合来进行流量预报。将拟议的GPP预测与其他两个预测进行了比较,一个使用原始EWF(GFS),另一个使用随机天气生成器(WG)。使用一组确定性和概率验证指标,在两个魁北克分水岭上进行了比较。确定性指标表明,GPP预测始终是预测流域和所有范围在1至7天之间的所有线索的集合平均流量的最佳方法,其次是WG预测。概率指标显示GFS预测在前7个工作日内保留的技能为负或接近零。 WG系统比GFS更熟练。 GPP预测在所应用的所有指标方面始终显示出最高的技能和可靠性。随着交付天数的增加,GPP预测的技能和可靠性趋于趋向WG预测,这表明短期GPP预测可以轻松地与纯WG预测关联以扩展预测范围。

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