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首页> 外文期刊>Hydrological sciences journal >Advancing understanding in data-limited conditions: estimating contributions to streamflow across Tanzania's rapidly developing Kilombero Valley
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Advancing understanding in data-limited conditions: estimating contributions to streamflow across Tanzania's rapidly developing Kilombero Valley

机译:在数据有限的情况下增进了解:估算坦桑尼亚快速发展的基洛贝洛河谷对河流流量的贡献

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摘要

Large seasonal variability in precipitation patterns may help overcome data limitations and difficult conditions when characterizing hydrological flow pathways. We used a limited amount of weekly water chemistry as well as stable water isotope data to perform end-member mixing analysis (EMMA) in a generalized likelihood uncertainty estimation (GLUE) framework in a sub-catchment of the Kilombero Valley, Tanzania. While there were considerable uncertainties related to the characterization and mixing of end-members, some robust estimates could be made on contributions to seasonal streamflow variability. For example, there is a low connectivity between the deep groundwater and the stream system throughout the year. Also, a considerable wetting-up period is required before overland flow occurs. Thus, in spite of large uncertainties, our results highlight how improved system understanding of hydrological flows can be obtained even when working in difficult environments.
机译:表征水文流动路径时,降水模式的季节性大变化可能有助于克服数据局限性和困难条件。我们使用了少量的每周水化学数据以及稳定的水同位素数据,在坦桑尼亚基洛贝罗河谷子流域的广义似然不确定性估计(GLUE)框架中执行了末端成员混合分析(EMMA)。尽管存在与末端成员的特征和混合有关的大量不确定性,但可以对季节性流量变化的影响做出一些可靠的估计。例如,全年深层地下水与河流系统之间的连通性较低。而且,在发生陆上流动之前需要相当长的润湿时间。因此,尽管存在很大的不确定性,但我们的结果强调了即使在艰难的环境中工作时,如何也可以更好地了解水文流量。

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