The conditioning of least-squares problems in variational data assimilation
In variational data assimilation a least-squares objective function is minimised to obtain the most likely state of a dynamical system. This objective function combines observation and prior (or background) data weighted by their respective error statistics. In numerical weather prediction, data ass...
Main Authors: | Tabeart, J, Dance, S, Haben, S, Lawless, A, Nichols, N, Waller, J |
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Format: | Journal article |
Published: |
Wiley
2018
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