Prediction
of NINO3 SST anomaly in a hybrid coupled model with a piggy-back data assimilation
initialization
Joyce E. Meyerson, Hui Su and J. David Neelin
Department of Atmospheric Science
University of California, Los Angeles, California
A
hybrid coupled model (HCM), similar to the one used in Syu et al. (1995), Waliser
et el. (1994) and Blanke et al. (1997), is used to predict the NINO3 SST
anomaly (SSTA). The atmospheric model is estimated from observations using a
singular value decomposition (SVD) technique. The model contains the first seven
SVD modes of the covariance matrix calculated from the time series of pairs of
observed monthly mean Reynolds SST anomalies and Florida State University (FSU)
subjective pseudo-stress anomalies over a 19-year period from January, 1970
through December, 1988. Atmospheric adjustment is parameterized by a simple
60-day spin-up time scale (Syu and Neelin 2000a). Heat flux is parameterized
according to Oberhuber's (1988) formulation using climatological data, with the
negative feedback on SST estimated following Seager et al. (1988). The OGCM is
a version of the GFDL Modular Ocean Model (Pacanowski, Dixon and Rosati, 1991,
personal communication) for the Pacific basin. The vertical resolution is 27
levels , with 10 levels in the upper 100 meters. A Richardson-number-dependent
vertical mixing scheme is combined with a surface mixed layer parameterization
(see Syu and Neelin 2000a for model details).
The
HCM has a reasonable simulation of ENSO in spatial and temporal features, with
ENSO periods of 3 to 4 years. Model performance in "retroactive real-time forecasts"
(hindcasts hereafter) from 1980-1992 has been shown in the September 1997 issue
of the Experimental Long-Lead Forecast Bulletin, with further analysis in Syu
and Neelin (2000b).The ocean climatology used in all hindcast/forecast
experiments is specified to be the averaged model SST, forced by the FSU
subjective wind stress product over 1978 to 1993 without modification by the
data assimilation scheme. The climatological wind stress used in the hindcast/forecast
experiments is also specified to be the average of the FSU subjective wind
stress over the same period (1978-1993). The forecast results from 1991 to
present been verified against the observations from the Reynolds optimal
interpoloation (OI) SST data set (Reynolds et at., 2002; Reynolds 1988; Reynolds
and Smith 1994), now referred to as Reynolds OI SST version 1. Recently this
version 1 product was discontinued and replaced with a version 2 SST product
(Smith and Reynolds 1998). Verification observed SST anomalies are now shown
against the version 2 product.
The
initialization scheme makes use of wind information (FSU pseudo-stress converted
to wind stress), the ocean model data assimilation product from the Climate
Prediction Center (CPC) (Ji et al., 1995) and SST anomalies to initialize the
atmospheric model. In addition to specifying FSU wind stress forcing, the CPC
reanalyzed anomalous ocean temperature field is "injected" into the
ocean model (27 layers) every month since 1980 up to the start of the hindcast
(injection scheme hereafter). Because our ocean model (GFDL MOM) is in a
version reasonably close to that used by CPC, approximate consistency is assumed
in injecting the CPC reanalyzed data. To make distinction between this procedure
and raw-data injection, we refer to it as a "piggy-back" data assimilation
scheme, because it makes use of the effort from an CPC data assimilation
product. The "piggy-back" data assimilation scheme gives a substantial
improvement in hindcast skill (see the Sep. 1997 issue and Syu and Neelin
2000b), and thus appears to be a viable, economical forecast method.
In
March 2002, Florida State University (FSU) changed to an objectively analyzed pseudo-stress
product (Bourassa et al., 2001). Description of the impacts of this objective
wind stress product on our forecast scheme are given in the June 2002 issue of
ELLFB for runs over the period 1993 to June 2002. The change to Reynolds OI SST
version 2 was made as of our June 2003 forecast. In neither case was the
forecast system itself altered, aside from the change in data set. While
changes in each data set are not large, they do have noticable impacts upon
forecasts. We have therefore re-run model initialization runs and hindcasts
over the baseline period 1982-93, using the two new data sets, and recomputed
the model drift and error bars as the mean and root-mean-square error in SST
anomaly, respectively, as a function of forecast lead time over all hindcasts
in that period. To minimize the alteration in the forecast scheme, both the FSU
objective wind stress and the Reynolds OI version 2 SST product are used as
anomalies with respect to their 1978-1993 mean. Figures 1
and 2 present the NINO3 index for forecasts and initialization
from 1993 to present overlaid onto previously published forecasts through
September 2003. The previously published forecasts utilized the subjective FSU
wind product until March 2002 and Reynolds OI version 1 SST until July 2003. We
note that the previously published initialization contains a substantial jump
in SST anomaly at the time of the switch to FSU objective winds.
Figure 1 shows NINO3 SSTAs for observations (3-month
running average, thick black curves) and past and current forecasts (gray curves) at 0-, 3-, 6- and
9-month lead (previously published results dashed gray curves). Averages of
each lead month based on forecast verification over the 1982-1993 time span are
removed before plotting the curves. Vertical bars represent plus and minus one
RMS error, over the same forecast verification time span. NINO3 SST anomaly
forecasts for 3- and 6-month leads have been consistently showing cooling toward
normal conditions by summer 2004. The 9-month lead forecast has been for near
normal conditions for the latter part of 2004.
Figure 2 shows the latest two forecast results (starting
from January and February, 2004, respectively, for 12 months, dark dotted
line), with the mean over the forecast verification time span (1982-1993)
removed. The observations (solid line), model initialization run (dark dashed
line) and the previously published results (light dashed line) since 1993 are
also displayed. Forecasts initiated with January and February observations both
show overall cooling through summer 2004 but not sufficiently cold to classify
as La Nina conditions. A moderate temperature increase follows through the end
of the year.
References:
Blanke,
B., J. D. Neelin, and D. Gutzler, 1997: Estimating the effect of stochastic
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H.-H., and J. D. Neelin, 2000a: ENSO in a hybrid coupled model. Part I: sensitivity
to physical parameterizations. Climate Dynamics, 16, 19-34.
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H.-H., and J. D. Neelin, 2000b: ENSO in
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Figure Captions:
Fig. 1. The forecasts of NINO3 SST anomalies from 1993 to
present using the new FSU objective wind product and Reynolds OI version 2 SST
data (solid gray/pink curve), and previously published forecasts (dashed gray
curve; see text for details). All initializations include CPC assimilated ocean
temperature data. The latest forecast starts from February 2004. The mean for each
lead month over the forecast verification time span (1982-93) is removed before
plotting. Vertical bars represent plus and minus one RMS error over the same forecast
verification time span. Shown for (a) 0-month, (b) 3-month, (c) 6-month and (d)
9-month lead.
Fig. 2. The latest two forecasts (dotted lines) of NINO3
SST anomalies up to 12 lead months starting from January and February 2004. Observations
(black solid line) and model initialization run (black/red dashed line) from
1993 to present are also shown. The mean for each lead month is removed as in Fig. 1. Vertical bars indicate the same plus and minus one
RMS error used in Fig. 1. The previously published model
initialization run from 1993 to February 2002 which employed the older data
sets is shown for comparison (gray dashed line).