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Operational river discharge forecasting in poorly gauged basins: the Kavango River basin case study

机译:欠佳流域的运营性河流流量预测:Kavango流域案例研究

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摘要

Operational probabilistic forecasts of river discharge are essential for effective water resources management. Many studies have addressed this topic using different approaches ranging from purely statistical black-box approaches to physically based and distributed modeling schemes employing data assimilation techniques. However, few studies have attempted to develop operational probabilistic forecasting approaches for large and poorly gauged river basins. The objective of this study is to develop open-source software tools to support hydrologic forecasting and integrated water resources management in Africa. We present an operational probabilistic forecasting approach which uses public-domain climate forcing data and a hydrologic-hydrodynamic model which is entirely based on open-source software. Data assimilation techniques are used to inform the forecasts with the latest available observations. Forecasts are produced in real time for lead times of 0-7 days. The operational probabilistic forecasts are evaluated using a selection of performance statistics and indicators and the performance is compared to persistence and climatology benchmarks. The forecasting system delivers useful forecasts for the Kavango River, which are reliable and sharp. Results indicate that the value of the forecasts is greatest for intermediate lead times between 4 and 7 days.
机译:河流流量的运行概率预测对于有效的水资源管理至关重要。许多研究已经使用不同的方法解决了这个问题,从纯粹的统计黑盒方法到采用数据同化技术的基于物理的分布式建模方案。但是,很少有研究尝试为大型且计量不良的流域开发业务概率预报方法。这项研究的目的是开发开源软件工具,以支持非洲的水文预报和水资源综合管理。我们提出了一种操作概率预报方法,该方法使用公共领域的气候强迫数据和完全基于开源软件的水文-水动力模型。数据同化技术用于将最新的可用观测结果告知预报。实时生成预测,交货时间为0-7天。使用一系列性能统计数据和指标评估运营概率预测,并将性能与持久性和气候基准进行比较。预报系统可为Kavango河提供可靠而准确的有用预报。结果表明,对于介于4到7天之间的中间交付时间,预测的价值最大。

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