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On the difficulty to optimally implement the Ensemble Kalman filter: An experiment based on many hydrological models and catchments

机译:关于最佳实现Ensemble Kalman滤波器的困难:基于许多水文模型和流域的实验

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摘要

Forecast reliability and accuracy is a prerequisite for successful hydrological applications. This aim may be attained by using data assimilation techniques such as the popular Ensemble Kalman filter (EnKF). Despite its recognized capacity to enhance forecasting by creating a new set of initial conditions, implementation tests have been mostly carried out with a single model and few catchments leading to case specific conclusions. This paper performs an extensive testing to assess ensemble bias and reliability on 20 conceptual lumped models and 38 catchments in the Province of Quebec with perfect meteorological forecast forcing. The study confirms that EnKF is a powerful tool for short range forecasting but also that it requires a more subtle setting than it is frequently recommended. The success of the updating procedure depends to a great extent on the specification of the hyper-parameters. In the implementation of the EnKF, the identification of the hyper-parameters is very unintuitive if the model error is not explicitly accounted for and best estimates of forcing and observation error lead to overconfident forecasts. It is shown that performance are also related to the choice of updated state variables and that all states variables should not systematically be updated. Additionally, the improvement over the open loop scheme depends on the watershed and hydrological model structure, as some models exhibit a poor compatibility with EnKF updating. Thus, it is not possible to conclude in detail on a single ideal manner to identify an optimal implementation; conclusions drawn from a unique event, catchment, or model are likely to be misleading since transferring hyper-parameters from a case to another may be hazardous. Finally, achieving reliability and bias jointly is a daunting challenge as the optimization of one score is done at the cost of the other. (C) 2015 Elsevier B.V. All rights reserved.
机译:预测的可靠性和准确性是成功进行水文应用的前提。通过使用数据同化技术(例如流行的Ensemble Kalman滤波器(EnKF))可以实现此目标。尽管公认的能力可以通过创建一组新的初始条件来增强预测,但是执行测试主要是使用单个模型和很少的集水区进行的,因此可以得出针对具体案例的结论。本文对魁北克省的20个概念集总模型和38个集水区进行了综合测试,以评估集合偏差和可靠性,并采用了理想的气象预报强迫。这项研究证实了EnKF是进行短距离预测的强大工具,但是它需要比通常建议的设置更精细的设置。更新过程的成功在很大程度上取决于超参数的规范。在EnKF的实现中,如果未明确考虑模型误差并且强迫和观测误差的最佳估计会导致过度自信的预测,则超参数的识别将非常不直观。结果表明,性能还与更新的状态变量的选择有关,并且不应对所有状态变量进行系统地更新。此外,对开环方案的改进取决于分水岭和水文模型结构,因为某些模型与EnKF更新的兼容性较差。因此,不可能以一种理想的方式来详细地总结出最佳的实现方式。从独特事件,集水区或模型得出的结论可能会产生误导,因为将超参数从一个案例转移到另一个案例可能很危险。最后,要同时达到可靠性和偏向性是一项艰巨的挑战,因为一个得分的优化是牺牲另一个得分的代价。 (C)2015 Elsevier B.V.保留所有权利。

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