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首页> 外文期刊>Hydrology and Earth System Sciences >Evaluation of snow data assimilation using the ensemble Kalman filter for seasonal streamflow prediction in the western United States
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Evaluation of snow data assimilation using the ensemble Kalman filter for seasonal streamflow prediction in the western United States

机译:使用集合卡尔曼滤波器评估雪数据同化,以预测美国西部的季节性水流

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摘要

In this study, we examine the potential of snow water equivalent data assimilation (DA) using the ensemble Kalman filter (EnKF) to improve seasonal streamflow predictions. There are several goals of this study. First, we aim to examine some empirical aspects of the EnKF, namely the observational uncertainty estimates and the observation transformation operator. Second, we use a newly created ensemble forcing dataset to develop ensemble model states that provide an estimate of model state uncertainty. Third, we examine the impact of varying the observation and model state uncertainty on forecast skill. We use basins from the Pacific Northwest, Rocky Mountains, and California in the western United States with the coupled Snow-17 and Sacramento Soil Moisture Accounting (SAC-SMA) models. We find that most EnKF implementation variations result in improved streamflow prediction, but the methodological choices in the examined components impact predictive performance in a non-uniform way across the basins. Finally, basins with relatively higher calibrated model performance (&?0.80?NSE) without DA generally have lesser improvement with DA, while basins with poorer historical model performance show greater improvements.
机译:在这项研究中,我们使用集合卡尔曼滤波器(EnKF)来研究雪水当量数据同化(DA)的潜力,以改善季节性流量预测。这项研究有几个目标。首先,我们旨在考察EnKF的一些经验方面,即观测不确定性估计和观测变换算子。其次,我们使用新创建的集成强迫数据集来开发集成模型状态,以提供模型状态不确定性的估计。第三,我们研究了改变观测值和模型状态不确定性对预测技能的影响。我们使用来自美国西北太平洋,落基山脉和加利福尼亚的盆地,以及耦合的Snow-17和Sacramento土壤湿度会计(SAC-SMA)模型。我们发现,大多数EnKF实施方案的变化都会改善流量预测,但是所研究组件中方法的选择会影响整个盆地的预测性能。最后,没有DA的具有较高校准模型性能(>0.80≤NSE)的盆地通常对DA的改进较小,而具有较差的历史模型性能的盆地则显示较大的改进。

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