2016
DOI: 10.3402/tellusa.v68.29744
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A multiple length scale correlation operator for ocean data assimilation

Abstract: A B S T R A C T Ocean data assimilation systems can take into account time and space scale variations by representing background error covariance functions with more complex shapes than the classical Gaussian function. In particular, the construction of the correlation functions can be improved to give more flexibility. We describe a correlation operator that features high correlations within a short scale and weak correlations within a larger scale. This multiple length scale correlation operator is defined a… Show more

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Cited by 48 publications
(44 citation statements)
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“…A ramping towards the short length-scale at temperatures below 3 • C has also been implemented, as described by Mirouze et al (2016), and can be seen in Figure 1 at high latitudes. This avoids spreading SST increments too far under sea ice, which had been noted as a problem in the OI OSTIA system (Roberts-Jones et al, 2012).…”
Section: Overviewmentioning
confidence: 99%
“…A ramping towards the short length-scale at temperatures below 3 • C has also been implemented, as described by Mirouze et al (2016), and can be seen in Figure 1 at high latitudes. This avoids spreading SST increments too far under sea ice, which had been noted as a problem in the OI OSTIA system (Roberts-Jones et al, 2012).…”
Section: Overviewmentioning
confidence: 99%
“…() give a description of the scheme, as implemented in an earlier FOAM version. The main updates to the scheme since then (of relevance to this work) include the implementation of a multiple length‐scale background error covariance (Mirouze et al, ) and the use of a two‐dimensional implicit diffusion operator for modelling the background error covariances (Weaver et al, ). A variational observation bias correction scheme is also used, as described for SST by While and Martin (), and has been adapted for use in bias correcting satellite SSS observations, as described below.…”
Section: Model Data Assimilation and Bias Correctionmentioning
confidence: 99%
“…) and the use of multiple horizontal length‐scales (Mirouze et al . ). In each analysis window NEMOVAR calculates increments to the model by assimilating observations of temperature, salinity, sea‐ice concentration, and sea‐surface height.…”
Section: Bias Correction In a Full Ocean Reanalysis Systemmentioning
confidence: 97%