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An integrated uncertainty and ensemble-based data assimilation approach for improved operational streamflow predictions

机译:一种综合的不确定性和基于集合的数据同化方法,用于改进的操作流流程预测

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The current study proposes an integrated uncertainty and ensemble-based data assimilation framework (ICEA) and evaluates its viability in providing operational streamflow predictions via assimilating snow water equivalent (SWE) data. This step-wise framework applies a parameter uncertainty analysis algorithm (ISURF) to identify the uncertainty structure of sensitive model parameters, which is subsequently formulated into an Ensemble Kalman Filter (EnKF) to generate updated snow states for streamflow prediction. The framework is coupled to the US National Weather Service (NWS) snow and rainfall-runoff models. Its applicability is demonstrated for an operational basin of a western River Forecast Center (RFC) of the NWS. Performance of the framework is evaluated against existing operational baseline (RFC predictions), the stand-alone ISURF and the stand-alone EnKF. Results indicate that the ensemble-mean prediction of ICEA considerably outperforms predictions from the other three scenarios investigated, particularly in the context of predicting high flows (top 5th percentile). The ICEA streamflow ensemble predictions capture the variability of the observed streamflow well, however the ensemble is not wide enough to consistently contain the range of streamflow observations in the study basin. Our findings indicate that the ICEA has the potential to supplement the current operational (deterministic) forecasting method in terms of providing improved single-valued (e.g., ensemble mean) streamflow predictions as well as meaningful ensemble predictions.
机译:目前的研究提出了综合的不确定性和基于集合的数据同化框架(ICEA),并通过同化雪水等效(SWE)数据来评估其在提供操作流出预测方面的可行性。该逐步框架应用参数不确定性分析算法(ISURF)来识别敏感模型参数的不确定性结构,随后将其配制到Ensemble Kalman滤波器(ENKF)中以生成更新的雪态以进行流流预测。该框架耦合到美国国家天气服务(NWS)雪地和降雨径流模型。它的适用性被证明了NWS的西部河流预测中心(RFC)的运营盆地。框架的性能是针对现有的运营基线(RFC预测),独立的isurf和独立enkf进行评估。结果表明,ICEA的集合平均预测从研究的其他三种情况的预测相当优于预测,特别是在预测高流量的背景下(第5位百分位数)。 ICEA StreamFlow集合预测捕获了观察到的流流的可变性,但是该集合不够宽,以一致地包含研究盆中的流流程观测范围。我们的调查结果表明,ICEA有可能在提供改进的单值(例如,集成均值)流式流出预测以及有意义的集合预测方面补充当前的运营(确定性)预测方法。

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