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Variational assimilation of streamflow into operational distributed hydrologic models: Effect of spatiotemporal scale of adjustment

机译:流向操作分布式水文模型的变分同化:时空调整规模的影响

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State updating of distributed rainfall-runoff models via streamflow assimilation is subject to overfitting because large dimensionality of the state space of the model may render the assimilation problem seriously under-determined. To examine the issue in the context of operational hydrologic forecasting, we carried out a set of real-world experiments in which streamflow data is assimilated into the gridded Sacramento Soil Moisture Accounting (SAC-SMA) and kinematic-wave routing models of the US National Weather Service (NWS) Research Distributed Hydrologic Model (RDHM) via variational data assimilation (DA). The nine study basins include four in Oklahoma and five in Texas. To assess the sensitivity of the performance of DA to the dimensionality of the control vector, we used nine different spatiotemporal adjustment scales, with which the state variables are adjusted in a lumped, semi-distributed, or distributed fashion and biases in precipitation and PE are adjusted at hourly or 6-hourly scale, or at the scale of the fast response of the basin. For each adjustment scale, three different assimilation scenarios were carried out in which streamflow observations are assumed to be available at basin interior points only, at the basin outlet only, or at all locations. The results for the nine basins show that the optimum spatiotemporal adjustment scale varies from basin to basin and between streamflow analysis and prediction for all three streamflow assimilation scenarios. The most preferred adjustment scale for seven out of the nine basins is found to be distributed and hourly. It was found that basins with highly correlated flows between interior and outlet locations tend to be less sensitive to the adjustment scale and could benefit more from streamflow assimilation. In comparison with outlet flow assimilation, interior flow assimilation produced streamflow predictions whose spatial correlation structure is more consistent with that of observed flow for all adjustment scales. We also describe diagnosing the complexity of the assimilation problem using spatial correlation of streamflow and discuss the effect of timing errors in hydrograph simulation on the performance of the DA procedure.
机译:由于流状态同化的状态空间的维数较大,可能导致同化问题严重不足,因此通过流量同化的分布式降雨-径流模型的状态更新可能会过拟合。为了在运行水文预报的背景下研究该问题,我们进行了一组真实世界的实验,在这些实验中,流量数据被同化了萨克拉曼多土壤湿度核算(SAC-SMA)网格和美国国家海底运动波路径模型气象服务(NWS)通过变异数据同化(DA)研究分布式水文模型(RDHM)。九个研究盆地包括俄克拉荷马州的四个和得克萨斯州的五个。为了评估DA性能对控制向量维数的敏感性,我们使用了九种不同的时空调整量表,通过这些量表以集总,半分布式或分布式方式调整状态变量,并且降水和PE的偏差为每小时或每6个小时调整一次,或者以盆地快速响应的规模进行调整。对于每个调整比例,都进行了三种不同的同化方案,其中假定流量观测仅在流域内部点,仅流域出口或所有位置可用。九个盆地的结果表明,最佳时空调整尺度因盆地而异,并且在三种流量同化情景下的流量分析与预测之间都存在差异。发现九个盆地中有七个的最优选的调整比例是按小时分配。研究发现,内部和出口位置之间流量高度相关的盆地往往对调节规模不那么敏感,并且可以从流量同化中受益更多。与出口流量同化相比,内部流量同化产生的流量预测的空间相关结构与所有调整尺度下观测到的流量的空间相关结构更加一致。我们还描述了使用流的空间相关性诊断同化问题的复杂性,并讨论了水位线图仿真中时序误差对DA程序性能的影响。

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