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Accounting for three sources of uncertainty in ensemble hydrological forecasting

机译:集合水文预报中三种不确定性来源的说明

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Seeking more accuracy and reliability, the hydrometeorological community has developed several tools to decipher the different sources of uncertainty in relevant modeling processes. Among them, the ensemble Kalman filter?(EnKF), multimodel approaches and meteorological ensemble forecasting proved to have the capability to improve upon deterministic hydrological forecast. This study aims to untangle the sources of uncertainty by studying the combination of these tools and assessing their respective contribution to the overall forecast quality. Each of these components is able to capture a certain aspect of the total uncertainty and improve the forecast at different stages in the forecasting process by using different means. Their combination outperforms any of the tools used solely. The EnKF is shown to contribute largely to the ensemble accuracy and dispersion, indicating that the initial conditions uncertainty is dominant. However, it fails to maintain the required dispersion throughout the entire forecast horizon and needs to be supported by a multimodel approach to take into account structural uncertainty. Moreover, the multimodel approach contributes to improving the general forecasting performance and prevents this performance from falling into the model selection pitfall since models differ strongly in their ability. Finally, the use of probabilistic meteorological forcing was found to contribute mostly to long lead time reliability. Particular attention needs to be paid to the combination of the tools, especially in the EnKF tuning to avoid overlapping in error deciphering.
机译:为了获得更高的准确性和可靠性,水文气象界已经开发出了几种工具,可以对相关建模过程中不确定性的不同来源进行解密。其中,集合卡尔曼滤波(EnKF),多模型方法和气象集合预报被证明具有改进确定性水文预报的能力。本研究旨在通过研究这些工具的组合并评估它们各自对整体预测质量的贡献,来消除不确定性的根源。这些组件中的每一个都能够捕获总不确定性的某个方面,并通过使用不同的方法来改进预测过程中不同阶段的预测。它们的组合优于任何单独使用的工具。结果表明,EnKF在很大程度上提高了合奏精度和色散,表明初始条件的不确定性占主导地位。但是,它无法在整个预测范围内保持所需的分散性,需要考虑到结构不确定性的多模型方法支持。此外,多模型方法有助于提高总体预测性能,并防止此性能落入模型选择陷阱,因为模型的能力差异很大。最后,发现使用概率气象强迫主要有助于延长交货时间的可靠性。需要特别注意这些工具的组合,尤其是在EnKF调整中,以避免在解密错误时出现重叠。

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