基于时间辉度的流量预测后处理

Paolo Reggiani, Daniela Biondi, E. Todini
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引用次数: 0

摘要

对原始流量预报的后处理,一般理解为估计选定未来时间步骤的阶段值或排泄值的单变量预测密度,其条件是单个或多个流量预报和直至预报开始时间的观测值。预测密度以最全面的方式向预报员指出可能会出现的洪水位。为此,提出了多种后处理方法,这些方法各有优缺点。这些方法几乎只关注预测对象在单个设定的未来时间 ti 上的概率预测,而不考虑对时间子域序列(to, t1] 的预测能力。⊂ (to, t2] .⊂......⊂ (to, tk] 嵌套在整个预测范围内。在这里,我们展示了根据时间跨度处理流量预报的优势,即通过考虑预报集合成员之间的时间相关性以及它们与观测数据之间的交叉相关性,评估预报密度在子范围内的演变情况。由此得出的概率预报由滞后预报时间的阶段和/或排水量的多元分布组成。这些多元预测分布的优势在于,在提供预测范围内超过临界阈值的可能性的同时,还能对超过临界阈值的预期时间提供有价值的见解。这种方法不仅支持及时发布洪水预警的决策,还支持减灾行动的规划和推出。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On time-horizons based post-processing of flow forecasts
Post-processing raw stream flow forecasts are generally understood as estimating the univariate predictive density of stage or discharge values at selected future time steps, which is conditional on a single or multiple streamflow forecasts and observations up to the forecast start time to. The predictive density indicates to a forecaster in the most comprehensive way which flood level is likely to be expected. To this end, a variety of post-processing methods were proposed, which have respective strengths and weaknesses. These methods focus near-exclusively on the probabilistic forecast of the predictand at a single set future time ti, without addressing the predictive capability over the sequence of temporal sub-horizons (to, t1] ⊂ (to, t2] ⊂ … ⊂ (to, tk] nested into the overall forecast horizon. Here, we demonstrate the advantages of time-horizon dependent processing of streamflow forecasts, which evaluates the evolution of the predictive density over the sub-horizons by considering the temporal correlation among forecast ensemble members in addition to their cross-correlation with observations. The resulting probabilistic forecast consists of a multivariate distribution of stages and/or discharges at lagged forecasting times. These multivariate predictive distributions have the advantage of providing the likelihood of exceeding a critical threshold during the forecasting horizon while simultaneously offering valuable insights into the expected time of such exceedance. This approach supports not only decisions on issuing timely flood warnings but also the planing and roll-out of mitigating actions.
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