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FGOALS-g3 has four component models: the Grid-Point Atmospheric Model of LASG–IAP, version 3 (GAMIL3) for the atmosphere (Li et al., 2013), the LASG–IAP Climate System Ocean Model, version 3 (LICOM3) for the ocean (Lin et al., 2016; Yu et al., 2018; Lin et al., 2020), the Los Alamos sea ice model, version 4 (CICE4) for the sea ice, and the CAS Land Surface Model (CAS-LSM) for the land (Xie et al., 2018). All the components are coupled with version 7 of the flux coupler developed at the National Center for Atmospheric Research (Craig et al., 2005).GAMIL3 uses a finite difference dynamical core, which conserves mass and effective energy under the standard stratification approximation. The horizontal resolution of GAMIL3 is ~2° (180×80) and the number of vertical layers used in GAMIL3 is 26. The land component is CAS-LSM with the same grid as GAMIL3. With regard to the physical processes of GAMIL3 and CAS-LSM, the details can be found in Li et al. (2020).
The ocean component, LICOM3, has also been extensively improved (Liu et al., 2012; Lin et al., 2016, 2020; Yu et al., 2018; Lin et al., 2020). Its dynamic core with a latitude–longitude grid structure is replaced by arbitrary orthogonal curvilinear coordinates (Yu et al., 2018). Therefore, the tripolar grid from Murray (1996) can be applied in LICOM3 with two North Poles on the Eurasian (65°N, 65°E) and North American (65°N, 115°W) continents. The introduction of the tripolar grid can directly improve the effectiveness of the dynamic core by both enlarging the time steps and removing the zonal filter for momentum and tracers. An Arakawa B-grid is used for the horizontal grid with 360×218 grid points. The eta coordinates with 30 or 80 layers are used in the vertical direction, but only 30 layers are used for the DECK and FAFMIP experiments of CMIP6. With regard to the physical processes, the St. Laurent et al. (2002) internal tidal mixing is introduced into LICOM3 (Yu et al., 2017), and the buoyancy frequency-related thickness diffusivity of Ferreira et al. (2005) is applied in the eddy-induced advection of Gent and McWilliams (1990). In addition, the chlorophyll-a-dependent solar penetration of the Ohlmann (2003) scheme and vertical mixing of Canuto et al. (2002) are inherited from LICOM2. CICE4 is the sea ice component of FGOALS-g3, with the same horizontal resolution as the ocean component.
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2.2. Experimental design
Five experiments are carried out in FAFMIP: faf-water, faf-stress, faf-heat, faf-all and faf-passiveheat (Table 1). In the first three experiments, the surface momentum, freshwater and heat flux perturbations are applied, while in faf-all, all three perturbations are applied together. All the forcing data are from Gregory et al. (2016), which are monthly flux anomalies of the ensemble mean of the 61st–80th years 1pctCO2 experiments from 13 CMIP5 models. For comparison between the perturbation and preindustrial control (piControl) experiments, all other conditions of the experiments are the same as those of the setup of the piControl run, including the point to branch the experiment, the concentration of CO2 (280 ppm), etc. The experiments are all 70 years long, and the scale of the CO2 concentration is doubling. The control experiment used in this paper is the faf-passiveheat experiment, which is equivalent to the piControl run but with an extra diagnostic tracer. The details of the five FAFMIP experiments are described as follows:Name | Ocean surface flux perturbation | Integration/Year |
faf-stress | Zonal and meridional momentum | 70 |
faf-water | Freshwater | 70 |
faf-heat | Heat | 70 |
faf-all | Zonal and meridional momentum, heat and freshwater | 70 |
faf-passiveheat | Heat as in faf-heat, but added as a passive tracer | 70 |
Table1. Descriptions of the FAFMIP experiments.
In the faf-stress experiment, the perturbations of surface downward fluxes of eastward and northward momentum derived from CMIP5 are applied in the surface zonal and meridional momentum flux. The stress perturbations are directly added to the momentum balance of the seawater but not to the ocean subgrid processes and the momentum balance of the sea ice. Figure 1a shows the annual mean surface momentum flux perturbations for FAFMIP. Its dominant feature is the increase in westerly wind stress in the Southern Ocean, which indicates that large changes in faf-stress will occur in the Southern Ocean.
Figure1. Surface flux perturbations of (a) momentum (10?3 Pa, color indicates the magnitude of the vector, arrow indicates direction), (b) water (10?6 kg m?2 s?1) and (c) heat (W m?2) from FAFMIP.
In the faf-water experiment, a perturbation of freshwater anomalies is applied to the freshwater flux into the sea surface. The anomalies are the sum of all possible sources in the CMIP5 AOGCM, including precipitation, evaporation, river inflow and water fluxes between floating ice (sea ice and icebergs) and seawater. Figure 1b shows the annual mean surface water flux perturbations for FAFMIP. We find that its pattern is dominated by that of precipitation changes, which are positive near the equator and at mid to high latitudes and negative in the subtropics.
In the faf-heat experiment, a perturbation of the surface downward heat flux in seawater is applied to the heat flux into the sea surface. The anomalies are the sum of all possible sources in the CMIP5 AOGCM, including the net downward radiative fluxes, sensible and latent heat fluxes to the atmosphere, and heat fluxes between sea ice and seawater. In previous studies, we found that there is a negative feedback due to the air–sea interaction at the surface, which will reduce the increase in temperature by approximately 50%. To avoid this effect, a passive tracer, which cannot feel heat perturbation, has been introduced to compute the surface heat flux instead of the sea surface temperature (SST), as proposed by Bouttes et al. (2014). The passive tracer is initialized to the ocean temperature at the start of the experiment and subsequently transported by all the same processes as ocean temperature, except for the heat anomalies. Figure 1c shows the annual mean surface heat flux perturbations for FAFMIP. Large positive anomalies occur in the North Atlantic Ocean and the Southern Ocean.
In the faf-all experiment, the surface flux perturbations of momentum, heat and freshwater are all applied simultaneously into the seawater. The method of computing surface flux uses the same method as that in the faf-heat experiment. The purpose of the faf-all experiment is to quantify the nonlinearities of the effects of the three perturbations. If the ocean response to CO2 forcing may be interpreted as the sum of the effects, the effects of the three perturbations are linear.
In faf-passiveheat, the heat flux perturbation is applied instead to a passive tracer to diagnose the effect of added heat on the ocean temperature through processes other than heat transport due to circulation. The tracer here is initialized to zero and does not affect the processes. Therefore, the faf-passiveheat experiment is the same as the standard piControl but with an additional passive tracer for diagnosis. The results of this experiment are used as a reference in the present paper.
Three additional experiments, faf-heat-NA50pct, faf-heat-NA0pct and faf-antwater-stress for FAFMIP, which were further proposed by the FAFMIP meeting in April 2019, have not been conducted so far. Therefore, they are not included and discussed in the present paper. The former two experiments reduce the double-counted surface heat flux in the North Atlantic due to the change in SST. The latter experiment is to investigate the effects of both wind stress and freshwater in the Southern Ocean. Further details of the implementation of each of the experiments can be found at the following website: http://www.fafmip.org.
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3.1. Time series of changes
33.1.1. Global mean SST
The global mean SST change with respect to piControl reaches approximately 0.9 K after the 70th year in the faf-all experiments (Fig. 2a, black line). The change in faf-all is mainly dominated by faf-heat but with a slightly smaller magnitude (approximately 0.8 K after the 70th year, Fig. 2a, red line), while the changes in global mean SST are almost negligible in both faf-stress (Fig. 2a, orange line) and faf-water (Fig. 2a, blue line). Under faf-stress, the changes in global mean SST slow down gradually and decrease by 0.07 K after the 70th year. In faf-water, the global mean SST levels off within approximately 30 years, showing a decrease of almost the same magnitude as that of faf-stress (?0.06 K) after the 70th year.Figure2. Global annual time series for faf-stress (orange), faf-water (blue), faf-heat (red) and faf-all (black) experiments: (a) SST change (K); (b) ocean heat content change (YJ); (c) the spatial standard deviation of dynamic sea level change; and (d) maximum of the Atlantic meridional overturning streamfunction (Sv). The changes in (a–d) are with respect to the 70-year mean of piControl (or faf-passiveheat), while (b) is with respect to the corresponding year of the piControl run.
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3.1.2. Global OHC
The OHC is defined as the vertical integration of ocean temperature from the sea surface to the bottom, multiplied by the reference density (1026 kg m?3) and the specific heat capacity (3992 J kg?1°C?1). Changes in globally integrated OHC are crucial for the GMSLR induced by thermal expansion. The time series of globally integrated OHC change in faf-all (Fig. 2b, black line) is still dominated by faf-heat (Fig. 2b, red line), reaching approximately 0.9 YJ (1 YJ = 1024 J) after the 70th year for both experiments. Changes in globally integrated OHC are also negligible in faf-stress (Fig. 2b, orange line) and faf-water (Fig. 2b, blue line), in which they both increase only approximately 0.1 YJ at the end of the experiments.The globally integrated OHC change is proportional to the global mean ocean temperature change, which is also shown in Gregory et al. (2016, second row of their Fig. 5). Their values have a range of 0.2–0.3 K in faf-heat for five CMIP5 models in the last year of integration, while the value in our experiment is relatively small at approximately 0.16 K. This might be due to the larger negative changes in the sea ice cover or SST of FGOALS-g3 than that of other models.
Figure5. Changes in ocean heat content (GJ m?2) averaged duing the last 10years (61–70) of (a) faf-stress, (b) faf-water, (c) faf-heat and (d) faf-all relative to the piControl run.
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3.1.3. DSL
In the present study, DSL (3
3.1.4. AMOC
The evaluations of the maximum transport of AMOC change for FAFMIP experiments are shown in Fig. 2d, which is crucial to determine the changes in OHC and sea level in the North Atlantic. The weakened AMOC can be seen in both faf-heat (Fig. 2d, red line) and faf-all (Fig. 2d, black line), in which the maximum AMOC weakens nearly 14 Sv at the end of the experiments. The change in faf-heat is also within the range of 5–15 Sv in Gregory et al. (2016, third row of their Fig. 5). In faf-stress (Fig. 2d, orange line) and faf-water (Fig. 2d, blue line), the changes in the maximum AMOC relative to the control are less than 1 Sv at the 70th year, indicating that the perturbations to the surface momentum and water fluxes do not cause significant changes in the AMOC.The weakened AMOC in faf-heat is larger than the expected response for the 1pctCO2 experiments. This is due to the positive feedback between the surface heat flux and the weakening of the AMOC. When the AMOC declines, the associated heat transport decreases, and the SST cools in the North Atlantic. The cooling SST inhibits the heat flux from being released into the atmosphere, and the ocean absorbs more heat flux, which will further decrease the AMOC. Another reason for a larger response than that in 1pctCO2 is that the heat flux perturbation consistent with double CO2 concentration is applied at the beginning of the faf-heat experiment, while the CO2 concentration in 1pctCO2 is gradually increased to double.
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3.2. Spatial patterns of changes
33.2.1. Zonal mean ocean temperature
Figure 3 shows the change in zonal mean ocean temperature in the time mean of the 61st–70th year relative to the piControl run. The warming occurs in faf-all in the upper 1000 m at most latitudes (Fig. 3d), with the maximum magnitude of changes over 1 K at the surface at approximately 60°N. The warming of faf-all is mainly dominated by faf-heat (Fig. 3c), and faf-water contributes 0.2 K between 10° and 60°N at depths of approximately 200–600 m (Fig. 3b). It is unusual that the significant warming induced by the surface heat perturbation penetrates 4000 m in the Arctic Ocean, which cannot be found in the results of Gregory et al. (2016). We presume that this might be due to the large vertical mixing in this region, and it is worth investigating further.Figure3. Changes in zonal mean ocean temperature (K) as a function of depth and latitudes of the time mean during the last 10 years (61–70) of (a) faf-stress, (b) faf-water, (c) faf-heat and (d) faf-all relative to the piControl run.
The cooling occurs in faf-all in three regions: south of 60°S from the surface to 4000 m, approximately 70°N in the subsurface from 1000 m to 3500 m, and at the bottom (Fig. 3d). Three kinds of perturbations at the surface all possibly contribute to the negative changes. The cooling south of 60°S is attributed to both faf-stress and faf-water, while the cooling in the high latitudes of the Northern Hemisphere is dominated by both faf-stress and faf-heat. The small negative temperature changes at the bottom are due to faf-heat. The cooling in the high latitudes might be related to the weakened circulation. Most of the cooling patterns are also consistent with the multimodel mean results from Gregory et al. (2016), while cooling below 1000 m in the Northern Hemisphere high latitudes in faf-heat does not appear in FGOALS-g3, and cooling south of 60°S in faf-water does not appear in the multimodel mean.
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3.2.2. DSL and OHC
Change patterns of the DSL and OHC in the time mean of the 61st–70th year of the FAFMIP experiments relative to the piControl run are shown in Fig. 4 and Fig. 5, respectively. The heat flux perturbation produces the most changes in the spatial pattern of the DSL (Figs. 4c and d), while the wind stress and freshwater perturbations dominate the positive anomaly in the Southern Ocean and in the Arctic, respectively. Previous studies point out that the simulated common DSL features are the dipole in the North Atlantic, the enhanced sea level rise in the Arctic and the increase in the gradient across the Antarctic Circumpolar Current (ACC) (Church et al., 2013; Bouttes and Gregory, 2014). The pattern of DSL changes and the contribution of three flux perturbations are also the same as the results from Gregory et al. (2016).Figure4. Changes in dynamic sea level (m) averaged duing the last 10 years (61–70) of (a) faf-stress, (b) faf-water, (c) faf-heat and (d) faf-all relative to the piControl run.
There is a strong correlation between the patterns of OHC and DSL change in both faf-heat (Fig. 4c and Fig. 5c) and faf-all (Fig. 4d and Fig. 5d). This is consistent with previous studies, suggesting that the patterns of OHC change and corresponding DSL change are largely driven by surface heat flux perturbations (Gregory et al., 2016). As discussed in section 3.1.4, there is also a similarity of the AMOC response between faf-heat and faf-all. The regional OHC changes are relatively small in faf-stress (Fig. 5a) and faf-water (Fig. 5b) in comparison to those of faf-heat (Fig. 5c) and faf-all (Fig. 5d).
The differences between FGOALS-g3 and the multimodel mean of Gregory et al. (2016) appear in the faf-water experiment. First, the water flux perturbation makes an opposite contribution to the dipole in the multimodel mean of Gregory et al. (2016), while it makes no significant contribution in FGOALS-g3. Second, the increase in the gradient across the ACC in the Southern Ocean is mainly caused by momentum flux perturbation and somewhat by the water flux perturbation in FGOALS-g3. The results of Gregory et al. (2016) show that freshwater perturbations reduce the gradient in the Southern Ocean. Combining these differences with the deviation in the zonal mean ocean temperature from the multimodel mean results discussed in section 3.2.1, we can find that the North Atlantic and the Southern Ocean are the two regions with large uncertainties in sea level projections.
Name | Description |
zos | Sea surface height above geoid |
zostoga | Global average thermosteric sea level |
thetao | Sea water potential temperature |
thetaoga | Global average sea water potential temperature |
so | Sea water salinity |
msftmz | Ocean meridional overturning mass streamfunction |
hfds | Downward heat flux at sea water surface |
wfo | Water flux into sea water |
pathetao | Sea water additional potential temperature |
prthetao | Sea water redistributed potential temperature |
opottempdiff | Tendency of sea water potential temperature expressed as heat content due to parameterized dianeutral mixing |
opottemppadvect | Tendency of sea water potential temperature expressed as heat content due to parameterized eddy advection |
opottemppmdiff | Tendency of sea water potential temperature expressed as heat content due to parameterized mesoscale diffusion |
opottemprmadvect | Tendency of sea water potential temperature expressed as heat content due to residual mean advection |
opottemptend | Tendency of sea water potential temperature expressed as heat content |
osaltdiff | Tendency of sea water salinity expressed as salt content due to parameterized dianeutral mixing |
osaltpadvect | Tendency of sea water salinity expressed as salt content due to parameterized eddy advection |
osaltpmdiff | Tendency of sea water salinity expressed as salt content due to parameterized mesoscale diffusion |
osaltrmadvect | Tendency of sea water salinity expressed as salt content due to residual mean advection |
osalttend | Tendency of sea water salinity expressed as salt content |
rsdoabsorb | Net rate of absorption of shortwave energy in ocean layer |
Table2. Descriptions of output variables of Priority 1 for FAFMIP.
Acknowledgments. This study was supported by National Key R&D Program for Developing Basic Sciences (2018YFA0605703), the Strategic Priority Research Program of Chinese Academy of Sciences (Grant No. XDB42010404) and the National Natural Science Foundation of China (Grants 41976026, 41776030 and 41931183, 41931182). The authors acknowledge the technical support from the National Key Scientific and Technological Infrastructure project "Earth System Science Numerical Simulator Facility" (EarthLab).