水文建模:未统计流域月流量估算经验方法的更好替代方案

S. Marahatta, L. Devkota, D. Aryal
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引用次数: 8

摘要

农业、工业和家庭活动以及环境保护都需要水资源。然而,随着人口的增加和城市化、工业化和商业活动的增长,水资源的规划和管理已成为满足全球各种用水需求的一项具有挑战性的任务。因此,关于径流水文的信息和数据对于这一目的至关重要。然而,在许多情况下,测量流量数据的可用性要么不足,要么根本不可用。当感兴趣的地点没有可用的测量站时,通常使用各种经验方法来估计那里的流量,并选择最佳估计。本研究的重点是通过尼泊尔流行的这种方法估算月平均流量,并评估它们与水文模拟结果的比较情况。这些方法的性能评估是用一个新引入的指标,即全球性能指数(GPI),利用六个常用的拟合优度参数进行的,即确定系数、平均绝对误差、均方根误差、体积偏差百分比、Nash-Sutcliff效率和Kling Gupta效率。这项研究表明,水文建模是考虑过的未蓄水集水区流量估算方法中最好的。
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Hydrological Modeling: A Better Alternative to Empirical Methods for Monthly Flow Estimation in Ungauged Basins
Water resource is required for agricultural, industrial, and domestic activities and for environmental preservation. However, with the increase in population and growth of urbanization, industrialization, and commercial activities, planning and management of water resources have become a challenging task to meet various water demands globally. Information and data on streamflow hydrology are, thus, crucial for this purpose. However, availability of measured flow data in many cases is either inadequate or not available at all. When there is no gauging station available at the site of interest, various empirical methods are generally used to estimate the flow there and the best estimation is chosen. This study is focused on the estimation of monthly average flows by such methods popular in Nepal and assessment of how they compare with the results of hydrological simulation. Performance evaluation of those methods was made with a newly introduced index, Global Performance Index (GPI) utilizing six commonly used goodness-of-fit parameters viz. coefficient of determination, mean absolute error, root mean square error, percentage of volume bias, Nash Sutcliff Efficiency and Kling-Gupta Efficiency. This study showed that hydrological modeling is the best among the considered methods of flow estimation for ungauged catchments.
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