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首页> 外文期刊>Stochastic environmental research and risk assessment >The ensemble particle filter (EnPF) in rainfall-runoff models
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The ensemble particle filter (EnPF) in rainfall-runoff models

机译:降雨径流模型中的集成粒子滤波(EnPF)

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Rainfall-runoff models play a very important role in flood forecasting. However, these models contain large uncertainties caused by errors in both the model itself and the input data. Data assimilation techniques are being used to reduce these uncertainties. The ensemble Kalman filter (EnKF) and the particle filter (PF) both have their own strengths. Research was carried out to a possible combination between both types of filters that will lead to a new type of filters that joins the strengths of both. The so called ensemble particle filter (EnPF) new combination is tested on flood forecasting problems in both the hindcast mode as well as the forecast mode. Several proposed combinations showed considerable improvement when a hindcast comparison on synthetic data was considered. Within the forecast comparison with field data, the suggested EnPF showed remarkable improvements compared to the PF and slight improvements compared to the EnKF.
机译:降雨径流模型在洪水预报中起着非常重要的作用。但是,这些模型包含很大的不确定性,这些不确定性是由模型本身和输入数据中的错误引起的。数据同化技术正在用于减少这些不确定性。集合卡尔曼滤波器(EnKF)和粒子滤波器(PF)都有各自的优势。对两种类型的过滤器之间可能的组合进行了研究,这将导致一种新型的过滤器将两者的优势结合在一起。所谓的集成粒子过滤器(EnPF)新组合在后播模式和预测模式下都针对洪水预报问题进行了测试。当考虑对合成数据进行后验比较时,几种建议的组合显示出相当大的改进。在与现场数据进行的预测比较中,建议的EnPF与PF相比有显着改进,而与EnKF相比则有轻微改进。

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