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首页> 外文期刊>Hydrology and Earth System Sciences >Selection of an appropriately simple storm runoff model
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Selection of an appropriately simple storm runoff model

机译:选择适当简单的暴雨径流模型

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An appropriately simple event runoff model for catchment hydrological studies was derived. The model was selected from several variants as having the optimum balance between simplicity and the ability to explain daily observations of streamflow from 260 Australian catchments (23-1902 km~2). Event rainfall and runoff were estimated from the observations through a combination of baseflow separation and storm flow recession analysis, producing a storm flow recession coefficient (k_(QF)). Various model structures with up to six free parameters were investigated, covering most of the equations applied in existing lumped catchment models. The performance of alternative structures and free parameters were expressed in Aikake's Final Prediction Error Criterion (FPEC) and corresponding Nash-Sutcliffe model efficiencies (NSME) for event runoff totals. For each model variant, the number of free parameters was reduced in steps based on calculated parameter sensitivity. The resulting optimal model structure had two or three free parameters; the first describing the non-linear relationship between event rainfall and runoff (S_(max)), the second relating runoff to antecedent groundwater storage (C_(Sg)), and a third that described initial rainfall losses (L_i), but which could be set at 8 mm without affecting model performance too much. The best three parameter model produced a median NSME of 0.64 and outperformed, for example, the Soil Conservation Service Curve Number technique (median NSME 0.30-0.41). Parameter estimation in ungauged catchments is likely to be challenging: 64% of the variance in k_(QF) among stations could be explained by catchment climate indicators and spatial correlation, but corresponding numbers were a modest 45% for C_(Sg), 21% for S_(max) and none for L _i, respectively. In gauged catchments, better estimates of event rainfall depth and intensity are likely prerequisites to further improve model performance.
机译:得出了一个适用于流域水文研究的适当简单的事件径流模型。该模型是从几个变体中选择的,因为它在简单性和能够解释260个澳大利亚流域(23-1902 km〜2)的水流每日观测值之间具有最佳平衡。通过基流分离和暴雨径流后退分析相结合,从观测值中估算出事件的降雨和径流,从而产生了暴雨径后退系数(k_(QF))。研究了多达六个自由参数的各种模型结构,涵盖了现有集总集水模型中应用的大多数方程。替代结构和自由参数的性能在Aikake的最终预报误差标准(FPEC)和事件径流总量的相应Nash-Sutcliffe模型效率(NSME)中进行了表示。对于每个模型变量,根据计算出的参数灵敏度逐步减少自由参数的数量。所得的最佳模型结构具有两个或三个自由参数。第一个描述了事件降雨与径流(S_(max))之间的非线性关系,第二个描述了径流与先前的地下水存储量(C_(Sg)),第三个描述了初始降雨损失(L_i),但是可以设置为8 mm,而不会过多影响模型性能。最佳的三参数模型得出的NSME中位数为0.64,并且优于水土保持服务曲线数技术(中位数NSME为0.30-0.41)。未集水区的参数估计可能具有挑战性:站间k_(QF)方差的64%可以用集水区气候指标和空间相关性来解释,但C_(Sg)的相应数字仅为45%,21%分别针对S_(max)和L_i。在可测量的集水区,对事件降雨深度和强度的更好估计可能是进一步改善模型性能的先决条件。

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