Title of article :
A Bayesian tutorial for data assimilation
Author/Authors :
Wikle، نويسنده , , Christopher K. and Berliner، نويسنده , , L. Mark، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2007
Pages :
16
From page :
1
To page :
16
Abstract :
Data assimilation is the process by which observational data are fused with scientific information. The Bayesian paradigm provides a coherent probabilistic approach for combining information, and thus is an appropriate framework for data assimilation. Viewing data assimilation as a problem in Bayesian statistics is not new. However, the field of Bayesian statistics is rapidly evolving and new approaches for model construction and sampling have been utilized recently in a wide variety of disciplines to combine information. This article includes a brief introduction to Bayesian methods. Paying particular attention to data assimilation, we review linkages to optimal interpolation, kriging, Kalman filtering, smoothing, and variational analysis. Discussion is provided concerning Monte Carlo methods for implementing Bayesian analysis, including importance sampling, particle filtering, ensemble Kalman filtering, and Markov chain Monte Carlo sampling. Finally, hierarchical Bayesian modeling is reviewed. We indicate how this approach can be used to incorporate significant physically based prior information into statistical models, thereby accounting for uncertainty. The approach is illustrated in a simplified advection–diffusion model.
Keywords :
importance sampling , Markov chain Monte Carlo , Bayes , particle filter , KRIGING , Ensemble Kalman filter
Journal title :
Physica D Nonlinear Phenomena
Serial Year :
2007
Journal title :
Physica D Nonlinear Phenomena
Record number :
1726425
Link To Document :
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