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首页> 外文期刊>Hydrology and Earth System Sciences Discussions >Hydrological real-time modelling in the Zambezi river basin using satellite-based soil moisture and rainfall data
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Hydrological real-time modelling in the Zambezi river basin using satellite-based soil moisture and rainfall data

机译:采用卫星土壤水分和降雨数据的赞同河流域水文实时建模

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Reliable real-time forecasts of the discharge can provide valuable information for the management of a river basin system. For the management of ecological releases even discharge forecasts with moderate accuracy can be beneficial. Sequential data assimilation using the Ensemble Kalman Filter provides a tool that is both efficient and robust for a real-time modelling framework. One key parameter in a hydrological system is the soil moisture, which recently can be characterized by satellite based measurements. A forecasting framework for the prediction of discharges is developed and applied to three different sub-basins of the Zambezi River Basin. The model is solely based on remote sensing data providing soil moisture and rainfall estimates. The soil moisture product used is based on the back-scattering intensity of a radar signal measured by a radar scatterometer. These soil moisture data correlate well with the measured discharge of the corresponding watershed if the data are shifted by a time lag which is dependent on the size and the dominant runoff process in the catchment. This time lag is the basis for the applicability of the soil moisture data for hydrological forecasts. The conceptual model developed is based on two storage compartments. The processes modeled include evaporation losses, infiltration and percolation. The application of this model in a real-time modelling framework yields good results in watersheds where soil storage is an important factor. The lead time of the forecast is dependent on the size and the retention capacity of the watershed. For the largest watershed a forecast over 40 days can be provided. However, the quality of the forecast increases significantly with decreasing prediction time. In a watershed with little soil storage and a quick response to rainfall events, the performance is relatively poor and the lead time is as short as 10 days only.
机译:可靠的卸货预测可以为河流流域系统提供有价值的信息。对于生态释放的管理甚至以中等精度的放电预测可能是有益的。使用Ensemble Kalman滤波器的顺序数据同化提供了一种工具,它对于实时建模框架既有效又鲁棒。水文系统中的一个关键参数是土壤水分,最近可以通过基于卫星的测量来表征。开发了一种预测放电预测的预测框架,并应用于赞同河流河流域的三个不同次池。该模型仅基于提供土壤湿度和降雨估计的遥感数据。使用的土壤水分产品基于雷达散射计测量的雷达信号的背散射强度。这些土壤湿度数据随着数据滞后的时间滞后而测量的相应流域的测量排出良好,这取决于集水区中的大小和主导径流过程。这次滞后是土壤水分数据适用于水文预报的基础。开发的概念模型基于两个存储隔间。建模的方法包括蒸发损失,渗透和渗透。该模型在实时建模框架中的应用在水域储存是一个重要因素的流域中产生了良好的结果。预测的提前期取决于流域的大小和保留能力。对于最大的分水岭,可以提供40多天的预测。然而,预测的质量随着预测时间而显着增加。在一个小型土壤储存的流域和对降雨事件的快速反应时,性能相对较差,交货时间仅限10天。

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