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首页> 外文期刊>Hydrology and Earth System Sciences >Assimilating in situ and radar altimetry data into a large-scale hydrologic-hydrodynamic model for streamflow forecast in the Amazon
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Assimilating in situ and radar altimetry data into a large-scale hydrologic-hydrodynamic model for streamflow forecast in the Amazon

机译:将原地和雷达测高数据同化为大型水文-水动力模型,用于亚马逊河中的流量预报

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In this work, we introduce and evaluate a data assimilation framework for gauged and radar altimetry-based discharge and water levels applied to a large scale hydrologic-hydrodynamic model for stream flow forecasts over the Amazon River basin. We used the process-based hydrological model called MGB-IPH coupled with a river hydrodynamic module using a storage model for floodplains. The Ensemble Kalman Filter technique was used to assimilate information from hundreds of gauging and altimetry stations based on ENVISAT satellite data. Model state variables errors were generated by corrupting precipitation forcing, considering log-normally distributed, time and spatially correlated errors. The EnKF performed well when assimilating in situ discharge, by improving model estimates at the assimilation sites (change in root-mean-squared error Δrms Combining double low line-49%) and also transferring information to ungauged rivers reaches (Δrms Combining double low line-16%). Altimetry data assimilation improves results, in terms of water levels (Δrms Combining double low line-44%) and discharges (Δrms Combining double low line-15%) to a minor degree, mostly close to altimetry sites and at a daily basis, even though radar altimetry data has a low temporal resolution. Sensitivity tests highlighted the importance of the magnitude of the precipitation errors and that of their spatial correlation, while temporal correlation showed to be dispensable. The deterioration of model performance at some unmonitored reaches indicates the need for proper characterisation of model errors and spatial localisation techniques for hydrological applications. Finally, we evaluated stream flow forecasts for the Amazon basin based on initial conditions produced by the data assimilation scheme and using the ensemble stream flow prediction approach where the model is forced by past meteorological forcings. The resulting forecasts agreed well with the observations and maintained meaningful skill at large rivers even for long lead times, e.g. >90 days at the Solim?es/Amazon main stem. Results encourage the potential of hydrological forecasts at large rivers and/or poorly monitored regions by combining models and remote-sensing information.
机译:在这项工作中,我们引入并评估了基于量测和雷达测高的流量和水位的数据同化框架,该数据同化框架已应用于大规模水文-水动力模型,用于亚马逊河流域的流量预报。我们使用了称为MGB-IPH的基于过程的水文模型,并结合了使用洪泛区存储模型的河流水动力模块。 Ensemble Kalman滤波技术用于根据ENVISAT卫星数据吸收来自数百个测高站的信息。考虑到对数正态分布,时间和空间相关误差,通过破坏降水强迫会产生模型状态变量误差。通过改善同化点的模型估计值(均方根误差的变化Δrms结合双低线-49%),并且还将信息传输到未堵塞的河段(Δrms结合双低线),EnKF在吸收原位排放时表现良好。 -16%)。高程数据同化在较小程度上改善了水位(Δrms结合双低线44%)和流量(Δrms结合双低线15%)的结果,大部分情况下都接近高测点,甚至每天尽管雷达测高数据的时间分辨率较低。敏感性测试强调了降水误差的大小及其空间相关性的重要性,而时间相关性却是可有可无的。在某些不受监测的河段,模型性能的下降表明需要对水文应用中的模型误差和空间定位技术进行适当的表征。最后,我们根据数据同化方案产生的初始条件并使用整体流预报方法评估了亚马逊河流域的流预报,其中模型是由过去的气象强迫所强迫的。最终的预报与观测结果非常吻合,即使在较长的交货时间(例如在Solim?es / Amazon主干处> 90天。通过结合模型和遥感信息,结果鼓励在大河流和/或监测不佳的地区进行水文预报。

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