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首页> 外文期刊>Journal of Hydrology >Using precipitation data ensemble for uncertainty analysis in SWAT streamflow simulation
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Using precipitation data ensemble for uncertainty analysis in SWAT streamflow simulation

机译:在SWAT流模拟中使用降水数据集合进行不确定性分析

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Precipitation patterns in the tropics are characterized by extremely high spatial and temporal variability that are difficult to adequately represent with rain gauge networks. Since precipitation is commonly the most important input data in hydrological models, model performance and uncertainty will be negatively impacted in areas with sparse rain gauge networks. To investigate the influence of precipitation uncertainty on both model parameters and predictive uncertainty in a data sparse region, the integrated river basin model SWAT was calibrated against measured streamflow of the Pipiripau River in Central Brazil. Calibration was conducted using an ensemble of different precipitation data sources, including: (1) point data from the only available rain gauge within the watershed, (2) a smoothed version of the gauge data derived using a moving average, (3) spatially distributed data using Thiessen polygons (which includes rain gauges from outside the watershed), and (4) Tropical Rainfall Measuring Mission radar data. For each precipitation input model, the best performing parameter set and their associated uncertainty ranges were determined using the Sequential Uncertainty Fitting Procedure. Although satisfactory streamflow simulations were generated with each precipitation input model, the results of our study indicate that parameter uncertainty varied significantly depending upon the method used for precipitation data-set generation. Additionally, improved deterministic streamflow predictions and more reliable probabilistic forecasts were generated using different ensemble-based methods, such as the arithmetic ensemble mean, and more advanced Bayesian Model Averaging schemes. This study shows that ensemble modeling with multiple precipitation inputs can considerably increase the level of confidence in simulation results, particularly in data-poor regions.
机译:热带地区的降水模式的特征是极高的时空变异性,很难用雨量计网络充分体现。由于降水通常是水文模型中最重要的输入数据,因此在雨量计网络稀疏的地区,模型的性能和不确定性将受到负面影响。为了研究降雨不确定性对数据稀疏区域中的模型参数和预测不确定性的影响,针对巴西中部的Pipiripau河的实测流量对综合流域模型SWAT进行了校准。使用不同的降水量数据源进行校准,包括:(1)流域内唯一可用的雨量计的点数据,(2)使用移动平均值得出的雨量计数据的平滑版本,(3)空间分布使用蒂森多边形的数据(包括流域外部的雨量计),以及(4)热带降雨测量任务雷达数据。对于每个降水输入模型,使用顺序不确定度拟合程序确定最佳性能的参数集及其相关的不确定性范围。尽管每个降水输入模型都生成了令人满意的水流模拟,但我们的研究结果表明,参数不确定性的变化取决于降水数据集生成方法。此外,使用不同的基于集合的方法(例如算术集合平均)和更高级的贝叶斯模型平均方案,可以生成确定性流量预测和更可靠的概率预测。这项研究表明,具有多个降水输入的集成模型可以大大提高模拟结果的可信度,尤其是在数据贫乏地区。

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