Title of article
Sampling-free linear Bayesian updating of model state and parameters using a square root approach
Author/Authors
Pajonk، نويسنده , , Oliver and Rosi?، نويسنده , , Bojana V. and Matthies، نويسنده , , Hermann G.، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2013
Pages
14
From page
70
To page
83
Abstract
We present a sampling-free implementation of a linear Bayesian filter based on a square root formulation. It employs spectral series expansions of the involved random variables, one such example being Wienerʹs polynomial chaos. The method is compared to several related methods, as well as a full Bayesian update, on a simple scalar example. Additionally it is applied to a combined state and parameter estimation problem for a chaotic system, the well-known Lorenz-63 model. There, we compare it to the ensemble square root filter (EnSRF), which is essentially a probabilistic implementation of the same underlying estimator. The spectral method is found to be more robust than the probabilistic one, especially for variance estimation. This is to be expected due to the sampling-free implementation.
Keywords
Inverse problem , Bayesian estimation , Kalman filter , Polynomial chaos expansion , White noise analysis , Lorenz-63
Journal title
Computers & Geosciences
Serial Year
2013
Journal title
Computers & Geosciences
Record number
2289445
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