Authors
Andreas S Stordal, Hans A Karlsen, Geir Nævdal, Hans J Skaug, Brice Vallès
Publication date
2011/3
Journal
Computational Geosciences
Volume
15
Pages
293-305
Publisher
Springer Netherlands
Description
The nonlinear filtering problem occurs in many scientific areas. Sequential Monte Carlo solutions with the correct asymptotic behavior such as particle filters exist, but they are computationally too expensive when working with high-dimensional systems. The ensemble Kalman filter (EnKF) is a more robust method that has shown promising results with a small sample size, but the samples are not guaranteed to come from the true posterior distribution. By approximating the model error with a Gaussian distribution, one may represent the posterior distribution as a sum of Gaussian kernels. The resulting Gaussian mixture filter has the advantage of both a local Kalman type correction and the weighting/resampling step of a particle filter. The Gaussian mixture approximation relies on a bandwidth parameter which often has to be kept quite large in order to avoid a weight collapse in high dimensions. As a result …
Total citations
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Scholar articles
AS Stordal, HA Karlsen, G Nævdal, HJ Skaug, B Vallès - Computational Geosciences, 2011