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首页> 外文期刊>Journal of hydrometeorology >Comparing Large-Scale Hydrological Model Predictions with Observed Streamflow in the Pacific Northwest: Effects of Climate and Groundwater
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Comparing Large-Scale Hydrological Model Predictions with Observed Streamflow in the Pacific Northwest: Effects of Climate and Groundwater

机译:西北太平洋大型水文模型预报与观测流量的比较:气候和地下水的影响

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Assessing uncertainties in hydrologic models can improve accuracy in predicting future streamflow. Here, simulated streamflows using the Variable Infiltration Capacity (VIC) model at coarse (degrees) spatial resolutions were evaluated against observed streamflows from 217 watersheds. In particular, the adequacy of VIC simulations in groundwater- versus runoff-dominated watersheds using a range of flow metrics relevant for water supply and aquatic habitat was examined. These flow metrics were 1) total annual streamflow; 2) total fall, winter, spring, and summer season streamflows; and 3) 5th, 25th, 50th, 75th, and 95th flow percentiles. The effect of climate on model performance was also evaluated by comparing the observed and simulated streamflow sensitivities to temperature and precipitation. Model performance was evaluated using four quantitative statistics: nonparametric rank correlation , normalized Nash-Sutcliffe efficiency NNSE, root-mean-square error RMSE, and percent bias PBIAS. The VIC model captured the sensitivity of streamflow for temperature better than for precipitation and was in poor agreement with the corresponding temperature and precipitation sensitivities derived from observed streamflow. The model was able to capture the hydrologic behavior of the study watersheds with reasonable accuracy. Both total streamflow and flow percentiles, however, are subject to strong systematic model bias. For example, summer streamflows were underpredicted (PBIAS = -13%) in groundwater-dominated watersheds and overpredicted (PBIAS = 48%) in runoff-dominated watersheds. Similarly, the 5th flow percentile was underpredicted (PBIAS = -51%) in groundwater-dominated watersheds and overpredicted (PBIAS = 19%) in runoff-dominated watersheds. These results provide a foundation for improving model parameterization and calibration in ungauged basins.
机译:评估水文模型的不确定性可以提高预测未来水流的准确性。在此,针对从217个集水区观察到的水流,使用可变渗透能力(VIC)模型在粗糙(度)空间分辨率下对模拟水流进行了评估。特别是,研究了使用与供水和水生生境相关的一系列流量指标在地下水与径流为主的流域中进行VIC模拟的充分性。这些流量指标是:1)年度总流量; 2)秋季,冬季,春季和夏季的总流量;和3)第5、25、50、75和95个流量百分位。还通过比较观察到的和模拟的流量对温度和降水的敏感性来评估气候对模型性能的影响。使用四个定量统计数据评估模型性能:非参数等级相关性,归一化Nash-Sutcliffe效率NNSE,均方根误差RMSE和百分比偏差PBIAS。 VIC模型捕获的流量对温度的敏感性要好于降水的敏感性,并且与从观测到的流量中得出的相应温度和降水敏感性之间的一致性差。该模型能够以合理的精度捕获研究流域的水文行为。然而,总流量和流量百分位数都受到强烈的系统模型偏差的影响。例如,在地下水为主的流域,夏季流量被低估(PBIAS = -13%),而在径流为主的流域中,夏季流量被高估(PBIAS = 48%)。同样,在以地下水为主的流域中,第5个流量百分位数被低估(PBIAS = -51%),而在以径流为主的流域中,第五个流量百分位数被高估(PBIAS = 19%)。这些结果为改善非流域盆地的模型参数化和校准提供了基础。

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