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arxiv: 1801.08474 · v4 · pith:JNQF7KMKnew · submitted 2018-01-25 · ⚛️ physics.data-an · nlin.CD· stat.AP

Adaptive covariance inflation in the ensemble Kalman filter by Gaussian scale mixtures

classification ⚛️ physics.data-an nlin.CDstat.AP
keywords inflationadaptiveenkf-nerrorcovarianceenkfensembleexisting
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This paper studies multiplicative inflation: the complementary scaling of the state covariance in the ensemble Kalman filter (EnKF). Firstly, error sources in the EnKF are catalogued and discussed in relation to inflation; nonlinearity is given particular attention as a source of sampling error. In response, the "finite-size" refinement known as the EnKF-N is re-derived via a Gaussian scale mixture, again demonstrating how it yields adaptive inflation. Existing methods for adaptive inflation estimation are reviewed, and several insights are gained from a comparative analysis. One such adaptive inflation method is selected to complement the EnKF-N to make a hybrid that is suitable for contexts where model error is present and imperfectly parameterized. Benchmarks are obtained from experiments with the two-scale Lorenz model and its slow-scale truncation. The proposed hybrid EnKF-N method of adaptive inflation is found to yield systematic accuracy improvements in comparison with the existing methods, albeit to a moderate degree.

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