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Salinity adjustments in the presence of temperature
data assimilation
Monthly Weather Review, vol. 130, 89-102.
In this paper we evaluate the role of salinity in the
framework of temperature data assimilation in a global ocean model that
is used to initialise seasonal climate forecasts. It is shown that the
univariate assimilation of temperature profiles, without attempting to
correct salinity, can induce first order errors in the subsurface temperature
and salinity fields. A recently developed scheme by Troccoli and Haines
(1999) is used to improve the salinity field. In this scheme, salinity
increments are derived from the observed temperature, by using the model
temperature and salinity profiles, assuming that the T-S relationship
in the model profiles is preserved. In addition the temperature and salinity
fields are matched below the observed temperature profile by vertically
displacing the original model profiles.
Two data assimilation experiments were performed for the 6-year period
1993-1998. These show that the salinity scheme is effective at maintaining
the haline and thermal structures at and below thermocline level, especially
in tropical regions, by avoiding spurious convection. In addition to improvements
in the mean state, the scheme allows more temporal variability than simply
controlling the salinity field by relaxation to climatological data. Some
comparisons with sparse salinity observations are also made which suggest
that the subsurface salinity variability in the western Pacific is better
reproduced in the experiment in which the salinity scheme is used. The
salinity analyses might be improved further by use of altimeter sea level
or sea surface salinity observations from satellite.
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