Accurate estimation of error covariances (both background and observation) is crucial for efficient observation compression approaches in data assimilation of large-scale dynamical problems. We propose a new combination of a covariance tuning algorithm with existing PCA-type data compression approaches, either observation- or information-based, with the aim of reducing the computational cost of real-time updating at each assimilation step. Relying on a local assumption of flow-independent error covariances, dynamical assimilation residuals are used to adjust the covariance in each assimilation window. The estimated covariances then contribute to better specify the principal components of either the observation dynamics or the state-observation sensitivity. The proposed approaches are first validated on a shallow water twin experiment with correlated and non-homogeneous observation error. Proper selection of flow-independent assimilation windows, together with sampling density for background error estimation, and sensitivity of the approaches to the observations error covariance knowledge, are also discussed and illustrated with various numerical tests and results. The method is then applied to a more challenging industrial hydrological model with real-world data and a non-linear transformation operator provided by an operational precipitation-flow simulation software.
翻译:精确估计误差共差(背景和观察)对于数据吸收大规模动态问题的数据中高效观测压缩方法至关重要。我们提议将共差调算法与现有的五氯苯甲醚型数据压缩方法(无论是观测还是基于信息)进行新的组合,目的是降低每个同化步骤实时更新的计算成本。根据对自流误差共差的当地假设,利用动态同化残余来调整每个同化窗口的共差。然后,估计的共差有助于更好地说明观测动态或状态观测敏感度的主要组成部分。提议的方法首先在与相关和非异性观测错误的浅水双实验中得到验证。适当选择离流同化窗口,加上背景误差估计的采样密度,以及观察误差知识的敏感度,也用各种数字测试和结果加以讨论和说明。然后,该方法应用到一个更具挑战性的工业水文模型,由实际世界数据和非线性变操作性降压软件提供。