A note on preconditioning weighted linear least squares, with consequences for weakly-constrained variational data assimilation
classification
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cs.NAmath.OC
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assimilationconsequencesdatalinearmodelpreconditioningweakly-constrainedweighted
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The effect of preconditioning linear weighted least-squares using an approximation of the model matrix is analyzed, showing the interplay of the eigenstructures of both the model and weighting matrices. A small example is given illustrating the resulting potential inefficiency of such preconditioners. Consequences of these results in the context of the weakly-constrained 4D-Var data assimilation problem are finally discussed.
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