Adaptive Blending of Probabilistic Precipitation Forecasts with Emphasis on Calibration and Temporal Forecast Consistency

M. Rempel, P. Schaumann, R. Hess, V. Schmidt, U. Blahak
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Abstract

A wealth of forecasting models is available for operational weather forecasting. Their strengths often depend on the lead time considered, which generates the need for a seamless combination of different forecast methods. The combined and continuous products are made in order to retain or even enhance the forecast quality of the individual forecasts and to extend the lead time to potentially hazardous weather events. In this study, we further improve an artificial neural network based combination model that was recently proposed in a previous paper. This model combines two initial precipitation ensemble forecasts and produces exceedance probabilities for a set of thresholds for hourly precipitation amounts. Both initial forecasts perform differently well for different lead times, whereas the combined forecast is calibrated and outperforms both initial forecasts with respect to various validation scores and for all considered lead times (+1h to +6h). Moreover, the robustness of the combination model is tested by applying it to a new dataset and by evaluating the spatial and temporal consistency of its forecasts. The changes proposed further improve the forecast quality and make it more useful for practical applications. Temporal consistency of the combined product is evaluated using a flip-flop index. It is shown that the combination provides a higher persistence with decreasing lead times compared to both input systems.
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基于校准和时间一致性的概率降水预报自适应混合
有大量的预报模型可用于业务天气预报。它们的优势往往取决于所考虑的提前期,这就需要不同预测方法的无缝结合。这些组合和连续的预报产品是为了保持甚至提高个别预报的预报质量,并延长对潜在危险天气事件的预警时间。在本研究中,我们进一步改进了先前论文中提出的基于人工神经网络的组合模型。该模式结合了两个初始降水集合预报,并产生了一组每小时降水量阈值的超出概率。两种初始预测对于不同的提前期表现不同,而组合预测是经过校准的,并且在各种验证分数和所有考虑的提前期(+1小时到+6小时)方面优于两种初始预测。此外,通过将组合模型应用于新数据集,并通过评估其预测的时空一致性来检验组合模型的稳健性。提出的修改进一步提高了预报质量,使其更适合实际应用。使用触发器指数评估组合产品的时间一致性。结果表明,与两种输入系统相比,这种组合提供了更高的持久性,并且交货时间缩短。
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