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On the Use of Adaptive Ensemble Kalman Filtering to Mitigate Error Misspecifications in GRACE Data Assimilation

机译:关于使用自适应集合卡尔曼滤波缓解GRACE数据同化中的错误错误指定

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摘要

The ensemble Kalman filter (EnKF) has been proved as a useful algorithm to merge coarse-resolution Gravity Recovery and Climate Experiment (GRACE) data with hydrologic model results. However, in order for the EnKF to perform optimally, a correct forecast error covariance is needed. The EnKF estimates this error covariance through an ensemble of model simulations with perturbed forcing data. Consequently, a correct specification of perturbation magnitude is essential for the EnKF to work optimally. To this end, an adaptive EnKF (AEnKF), a variant of the EnKF with an additional component that dynamically detects and corrects error misspecifications during the filtering process, has been applied. Due to the low spatial and temporal resolutions of GRACE data, the efficiency of this method could be different than for other hydrologic applications. Therefore, instead of spatially or temporally averaging the internal diagnostic (normalized innovations) to detect the misspecifications, spatiotemporal averaging was used. First, sensitivity of the estimation accuracy to the degree of error in forcing perturbations was investigated. Second, efficiency of the AEnKF for GRACE assimilation was explored using two synthetic and one real data experiment. Results show that there is considerable benefit in using this method to estimate the forcing error magnitude and that the AEnKF can efficiently estimate this magnitude.
机译:集成卡尔曼滤波器(EnKF)已被证明是一种有用的算法,可以将粗分辨率的重力恢复和气候实验(GRACE)数据与水文模型结果合并。但是,为了使EnKF最佳执行,需要正确的预测误差协方差。 EnKF通过带有干扰强迫数据的模型仿真的集成来估计此误差协方差。因此,正确确定扰动幅度对于EnKF最佳工作至关重要。为此,已应用了自适应EnKF(AEnKF),它是EnKF的一种变体,具有一个附加组件,可以在过滤过程中动态检测并纠正错误的错误指定。由于GRACE数据的时空分辨率较低,因此该方法的效率可能不同于其他水文应用。因此,代替时空平均内部诊断(标准化的创新)以检测错误指定,而是使用时空平均。首先,研究了估计精度对强迫扰动的误差程度的敏感性。其次,使用两个合成的和一个真实的数据实验探索了AEnKF对GRACE同化的效率。结果表明,使用这种方法估算强迫误差幅度具有很大的好处,并且AEnKF可以有效地估算该幅度。

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