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arxiv: 1703.06663 · v5 · pith:CDSYTS7Anew · submitted 2017-03-20 · ⚛️ physics.data-an

The Onsager--Machlup functional for data assimilation

classification ⚛️ physics.data-an
keywords assimilationdatadistributiondivergencefunctionalonsager--machluppriorterm
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When taking the model error into account in data assimilation, one needs to evaluate the prior distribution represented by the Onsager--Machlup functional. Through numerical experiments, this study clarifies how the prior distribution should be incorporated into cost functions for discrete-time estimation problems. Consistent with previous theoretical studies, the divergence of the drift term is essential in weak-constraint 4D-Var (w4D-Var), but it is not nec essary in Markov chain Monte Carlo with the Euler scheme. Although the former property may cause difficulties when implementing w4D-Var in large systems, this paper proposes a new technique for estimating the divergence term and its derivative.

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