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首页> 外文期刊>Journal of Hydrology >Comparing and combining physically-based and empirically-based approaches for estimating the hydrology of ungauged catchments
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Comparing and combining physically-based and empirically-based approaches for estimating the hydrology of ungauged catchments

机译:比较和结合基于物理的方法和基于经验的方法来估算未吞水集水区的水文状况

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摘要

Predictions of hydrological regimes at ungauged sites are required for various purposes such as setting environmental flows, assessing availability of water resources or predicting the probability of floods or droughts. Four contrasting methods for estimating mean flow, proportion of flow in February, 7-day mean annual low flow, mean annual high flow, the all-time flow duration curve and the February flow duration curve at ungauged sites across New Zealand were compared. The four methods comprised: (1) an uncalibrated national-coverage physically-based rainfall-runoff model (TopNet); (2) data-driven empirical approaches informed by hydrological theory (Hydrology of Ungauged Catchments); (3) a purely empirically-based machine learning regression model (Random Forests); and (4) correction of the TopNet estimates using flow duration curves estimated using Random Forests. Model performance was assessed through comparison with observed data from 485 gauging stations located across New Zealand. Three model performance metrics were calculated: Nash-Sutcliffe Efficiency, a normalised error index statistic (the ratio of the root mean square error to the standard deviation of observed data) and the percentage bias. Results showed that considerable gains in TopNet model performance could be made when TopNet time-series were corrected using flow duration curves estimated from Random Forests. This improvement in TopNet performance occurred regardless of two different parameterisations of the TopNet model. The Random Forests method provided the best estimates of the flow duration curves and all hydrological indices except mean flow. Mean flow was best estimated using the already published Hydrology of Ungauged Catchments method.
机译:出于各种目的,例如设置环境流量,评估水资源的可用性或预测洪水或干旱的可能性,需要对未开垦地点的水文状况进行预测。比较了四种相反的方法来估算平均流量,2月份的流量比例,7天的年平均低流量,年平均高流量,历时流量持续时间曲线和新西兰未开垦地点的2月流量持续时间曲线。这四种方法包括:(1)一种未经校准的基于全国范围的基于物理的降雨径流模型(TopNet); (2)以水文理论为基础的数据驱动的经验方法(疏ga集水区水文); (3)纯粹基于经验的机器学习回归模型(Random Forests); (4)使用随机森林估算的流量持续时间曲线对TopNet估算进行校正。通过与来自新西兰各地的485个计量站的观测数据进行比较,评估了模型的性能。计算了三个模型性能指标:Nash-Sutcliffe效率,归一化的误差指数统计量(均方根误差与观察到的数据的标准偏差之比)和百分比偏差。结果表明,使用随机森林估计的流量持续时间曲线校正TopNet时间序列后,可以在TopNet模型性能中获得可观的收益。不管TopNet模型的两个不同的参数设置如何,TopNet性能的改善都会发生。随机森林法提供了流量持续时间曲线和除平均流量以外的所有水文指数的最佳估计。平均流量最好使用已发布的无堵塞集水区水文方法估算。

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