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首页> 外文期刊>Hydrology: Current Research >Estimation of Missing River Flow Data for Hydrologic Analysis: The Case of Great Ruaha River Catchment
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Estimation of Missing River Flow Data for Hydrologic Analysis: The Case of Great Ruaha River Catchment

机译:缺失流量数据的水文分析估算-以鲁阿哈河大流域为例

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Availability of data on hydrologic variables such as river flow is necessary for planning and management of water resources. Many developing countries Many River basins in developing countries has no complete dataset on river flow due to degradation of gauging stations gauging stations coupled with unsatisfactory data compilation unsatisfactory data compilation and storage procedures. Different methods are available to fill missing data; however, these methods differ in performance depending on the characteristics of initial data points. The purpose of this study was to fill the missing data in the Great Ruaha River by selection of best method. In this study, simple and multiple regression analysis, and recession methods have been employed to fill the gaps of missing river flow data on ten gauging stations of Great Ruaha River catchment. Performances of these methods were assessed using Nash-Sutcliffe efficiency, Root Mean Square Error and Mean Absolute Error. The results showed that, Multiple regressions are suitable over Linear regression method for missing data during the period of high flow, however selection of either method depends on the availability of data availability on independent variable. Recession method was found to be suitable for filling missing data during the period of low flow. Though these methods were useful in filling data, the challenge was that more than one method was required to estimate all the missing data at a gauging station. This is because, missing data at a given gauging station were experienced during dry and rain seasons.
机译:对于水资源的规划和管理,需要获得诸如河流流量等水文变量的数据。许多发展中国家发展中国家的许多流域没有完整的河流流量数据集,这是因为测量站的性能下降,加上测量站的数据汇编不令人满意,数据汇编和存储程序也不令人满意。可以使用不同的方法来填充丢失的数据。但是,这些方法的性能取决于初始数据点的特性。这项研究的目的是通过选择最佳方法来填补大鲁阿哈河缺失的数据。在这项研究中,已使用简单和多元回归分析以及衰退方法来填补大鲁阿哈河流域10个测量站的缺失河流流量数据的空白。这些方法的性能使用Nash-Sutcliffe效率,均方根误差和绝对绝对值进行评估。结果表明,对于高流量期间的数据丢失,多元回归比线性回归方法更适合,但是哪种方法的选择取决于自变量的数据可用性。发现后退方法适合在流量不足时填充丢失的数据。尽管这些方法对填充数据很有用,但挑战在于,需要一种以上的方法来估计测量站中所有丢失的数据。这是因为在干旱和雨季,给定的测量站缺少数据。

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