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Post-Processing of Stream Flows in Switzerland with an Emphasis on Low Flows and Floods

机译:瑞士河流流量的后处理,重点是低流量和洪水

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Post-processing has received much attention during the last couple of years within the hydrological community, and many different methods have been developed and tested, especially in the field of flood forecasting. Apart from the different meanings of the phrase “post-processing” in meteorology and hydrology, in this paper, it is regarded as a method to correct model outputs (predictions) based on meteorological (1) observed input data, (2) deterministic forecasts (single time series) and (3) ensemble forecasts (multiple time series) and to derive predictive uncertainties. So far, the majority of the research has been related to floods, how to remove bias and improve the forecast accuracy and how to minimize dispersion errors. Given that global changes are driving climatic forces, there is an urgent need to improve the quality of low-flow predictions, as well, even in regions that are normally less prone to drought. For several catchments in Switzerland, different post-processing methods were tested with respect to low stream flow and flooding conditions. The complexity of the applied procedures ranged from simple AR processes to more complex methodologies combining wavelet transformations and Quantile Regression Neural Networks (QRNN) and included the derivation of predictive uncertainties. Furthermore, various verification methods were tested in order to quantify the possible improvements that could be gained by applying these post-processing procedures based on different stream flow conditions. Preliminary results indicate that there is no single best method, but with an increase of complexity, a significant improvement of the quality of the predictions can be achieved.
机译:在过去的几年中,后处理在水文界引起了很多关注,并且已经开发和测试了许多不同的方法,尤其是在洪水预报领域。除了气象和水文学中“后处理”一词的不同含义外,本文还认为它是基于气象(1)观测输入数据,(2)确定性预报来校正模型输出(预测)的方法。 (单个时间序列)和(3)集合预测(多个时间序列),并得出预测不确定性。到目前为止,大多数研究都与洪水,如何消除偏差和提高预报精度以及如何使分散误差最小有关。鉴于全球变化正在推动气候变化,即使在通常不易发生干旱的地区,也迫切需要提高低流量预报的质量。在瑞士的几个流域,针对低水流量和洪水条件测试了不同的后处理方法。应用程序的复杂性从简单的AR过程到结合小波变换和分位数回归神经网络(QRNN)的更复杂的方法,范围包括预测不确定性。此外,测试了各种验证方法,以量化通过基于不同的流量条件应用这些后处理程序可能获得的改进。初步结果表明,没有单一的最佳方法,但是随着复杂度的增加,可以实现预测质量的显着改善。

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