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On noise specification in data assimilation schemes for improved flood forecasting using distributed hydrological models

机译:基于分布式水文模型的数据同化方案中用于改进洪水预报的噪声规范

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We investigate the effects of noise specification on the quality of hydrological forecasts via an advanced data assimilation (DA) procedure using a distributed hydrological model driven by numerical weather predictions. The sequential DA procedure is based on (1) a multivariate rainfall ensemble generator, which provides spatial and temporal correlation error structures of input forcing, and (2) lagged particle filtering to update past and current state variables simultaneously in a lag-time window to consider the response times of internal hydrologic processes. The procedure is evaluated for streamflow forecasting of three flood events in two fast-responding catchments in Japan (Maruyama and Katsura). The rainfall ensembles are derived from ground-based rain gauge observations for the analysis step and numerical weather predictions for the forecast step. The ensemble simulation performs multi-site updating using information from the streamflow gauging network and considers the artificial effects of reservoir release. Sensitivity analysis is performed to assess the impacts of noise specification in DA, comparing a different setup of random state noise and input forcing with/without multivariate conditional simulation (MCS) of rainfall ensembles. The results show that lagged particle filtering (LPF) forced with MCS provides good performance with small and consistent random state noise, whereas LPF forced with Thiessen rainfall interpolation requires larger random state noise to yield performance comparable to that of LPF + MCS for short lead times. (C) 2014 Elsevier B.V. All rights reserved.
机译:我们使用由数值天气预报驱动的分布式水文模型,通过高级数据同化(DA)程序研究噪声规范对水文预报质量的影响。顺序DA程序基于(1)多元降雨集合发生器,该发生器提供输入强迫的时空相关误差结构,以及(2)滞后粒子滤波以在滞后时间窗中同时更新过去和当前状态变量考虑内部水文过程的响应时间。对程序进行了评估,以预测日本(丸山和桂)两个快速响应流域中三个洪水事件的流量。降雨集合来自用于分析步骤的地面雨量计观测值和用于预测步骤的数值天气预报。集成模拟使用来自流量测量网络的信息执行多站点更新,并考虑了储层释放的人为影响。进行敏感性分析以评估DA中噪声规范的影响,比较随机状态噪声的不同设置和有/无降雨集合的多条件模拟(MCS)的输入强迫。结果表明,采用MCS强制执行的滞后粒子滤波(LPF)在较小且一致的随机状态噪声下提供了良好的性能,而采用Thiessen降雨插值方法进行的LPF需要较大的随机状态噪声才能在短交货时间内产生与LPF + MCS相当的性能。 (C)2014 Elsevier B.V.保留所有权利。

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