2021
DOI: 10.48550/arxiv.2111.06447
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Observation Error Covariance Specification in Dynamical Systems for Data assimilation using Recurrent Neural Networks

Abstract: Data assimilation techniques are widely used to predict complex dynamical systems with uncertainties, based on time-series observation data. Error covariance matrices modelling is an important element in data assimilation algorithms which can considerably impact the forecasting accuracy. The estimation of these covariances, which usually relies on empirical assumptions and physical constraints, is often imprecise and computationally expensive especially for systems of large dimension. In this work, we propose … Show more

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