Poster's note : 3 yrs old but never posted to list. Open access

http://www.hindawi.com/journals/isrn/2012/142872/

ISRN Geophysics
Volume 2012 (2012), Article ID 142872, 7 pages

http://dx.doi.org/10.5402/2012/142872

The Effects of Marine Cloud Brightening on Seasonal Polar Temperatures and
the Meridional Heat Flux
Ben Parkes,1 Alan Gadian,1 and John Latham2,3

Accepted 19 February 2012

Abstract

Marine cloud brightening (MCB) is one of several proposed solar radiation
management (SRM) geoengineering schemes designed to ameliorate some of the
undesirable effects of climate change, for example polar ice loss and
associated increased sea levels. Satellite measurements over the last 40
years show a general reduction in polar sea ice area and thickness which is
attributed to climate change. In our studies, HadGEM1, a fully coupled
climate model, is used to predict changes in surface temperatures and ice
cover as a result of implementing MCB in a double carbon dioxide
concentration atmosphere. The meridional heat flux (MHF) is the mechanism
within the earth system for the transport of energy from tropical to polar
regions. This poleward transport of heat in a double carbon dioxide
atmosphere amplifies the effects in polar regions, where it has a
significant impact on both temperatures and ice cover. The results from
this work show that MCB is capable of roughly restoring control
temperatures and ice cover (where control is defined as 440 ppm carbon
dioxide, a predicted 2020 level) in a double carbon dioxide atmosphere
scenario. This work presents the first results on the impact of MCB on the
MHF and the ability of the MCB scheme to restore the MHF to a control level.

1. Introduction

Global warming is a major feature of climate change, and many publications
have shown that it is most pronounced at high latitudes with the Arctic and
Antarctic showing considerable heating compared to the rest of the world
[1]. This additional heating of the polar regions is known as polar
amplification and results in temperature changes far above the global
average. Several mechanisms have been proposed to explain polar
amplification. One is a sea ice-albedo feedback proposed by Curry et al. in
1996 [2]. A reduction of sea ice cover exposes the sea surface, which is of
a lower albedo, so that there is more absorption of solar radiation and
concomitant additional warming. This heating of polar waters further
increases the sea ice loss. The Arctic has been shown to be more
susceptible than the Antarctic to changes in temperature; resulting in
larger effects in the northern hemisphere [3]. This result is repeated in
several papers on MCB (e.g., [4–7]). The work in [4, 7] modifies clouds in
tropical regions and finds an associated local cooling to 1.5 m air
temperature, however Figure 3 of [4] and Figure 4(d) of [7] show that MCB
also preferentially cools the Arctic. The aim of this study is to
investigate the preferential cooling of the Arctic and if possible suggest
a mechanism to explain how seeding in the tropics leads to a cooling in the
Arctic. MCB is one of several proposed Solar Radiation Management (SRM)
geoengineering ideas designed to reduce some of the impacts of climate
change. MCB utilises the first and second aerosol indirect effects on
clouds ([8, 9], resp.). Exploitation of the first indirect effect is based
upon increasing the cloud droplet number concentration (CDNC). A higher
number of smaller droplets increase the optical thickness of clouds which
therefore reflect more shortwave radiation. The second indirect effect
prolongs cloud lifetime as smaller droplets take longer to coalesce into
droplets large enough to precipitate out of the clouds.

Several approaches are taken to investigate MCB and its impacts, from
atmosphere only modelling work [11, 12], to coupled atmosphere slab ocean
models [4, 6], to fully coupled global climate models (GCMs) [4, 5, 7, 13].
A GCM is used to compare the effects of seeding three regions of persistent
marine stratocumulus clouds individually or as a group [4, 7, 13]. These
simulations impose a cloud droplet number concentration (CDNC) of
𝑁 = 3 7 5
cm3 and found that MCB is capable of substantially reducing the polar
impact of increasing carbon dioxide. The impacts of MCB on both annual and
seasonal polar ice coverage are investigated in [5–7, 13]. Previous studies
predict an accompanying rainfall reduction in the Amazon region [4, 5, 7,
13], the amount of which varies from model to model. These differences
appear to be related to differences in seeding strategy but are not
relevant for this paper.

Most GCM studies assume a fixed value for the CDNC and do not assess the
technological requirements for attaining this value [4–7, 11, 13]. A
seeding mechanism was proposed by Salter et al. in 2008 [14] whereby
autonomous GPS guided ships would use solar power to create large numbers
of 2 nm seawater droplets which would act as cloud condensation nuclei. The
ships were designed to move perpendicular to trade winds allowing the
seawater particles to spread over a large area.

2. Experiment Description

HadGEM1—used in our computations—is the Hadley centre Global Environment
Model developed by the UK Met Office as version 6.1 of the Unified Model
[15]. HadGEM1 is the combination and coupling of the HadGAM and HadGOM
atmosphere and ocean models. The model atmosphere has a horizontal
resolution of 1.875° longitude by 1.25° latitude and 38 vertical levels of
increasing size to a maximum height of 39 km with 10 levels between 0 km
and 2 km. The dynamics and radiation schemes within the atmospheric model
are described in [16, 17]. The atmosphere is coupled to an ocean which has
a resolution of 1° square between the poles and
3 0
∘
. Between 30° and the equator the meridional resolution of the ocean
increases smoothly to (1/3)°. The ocean has 40 smoothly increasing depths,
10 m near the surface, to 345 m at 5.3 km [18].

The model has been modified to have a fixed CDNC in the three regions of
low-level marine stratocumulus; these regions are of the coasts of
California, Peru and Namibia as shown in Figure 1 of Jones et al. 2009 [4].
The second geoengineering simulation seeds the entire marine atmosphere. In
the unseeded regions, and the CON and 2CO2 experiments, the CDNC is
unmodified and the original model derivation of CDNC is used. In a modified
region the CDNC is set to be 375 cm3 at all model levels between 0 km and 3
km and held static for the duration of the simulation. This bypasses the
normal method used by the model to calculate the CDNC. The model average
CDNC for marine regions at 1 km is roughly 60 cm3 which is much lower than
the 375 cm3 that is used to simulate MCB.

Four cases were run to investigate the effects of MCB on polar
temperatures. The setup of the four simulations is shown in Table 1. A
comparison of CON and 2CO2 shows the effects of increasing carbon dioxide
levels, while comparing MCB3 or MCBA with 2CO2 shows the differences
resulting from seeding. Comparing MCB3 or MCBA with CON shows the combined
impacts of increasing carbon dioxide while using MCB. Each simulation was
run for 70 years with the final 20 years used for analysis. The initial
state for the model was copied from an existing model run that had been
simulated between 1860 and 2020.

tab1
Table 1: Simulations produced using HadGEM1 to investigate the climate
effects of MCB.
3. Calculation of the Meridional Heat Flux

Incoming shortwave solar radiation warms the tropics more than the poles,
while emitted longwave radiation cools the whole planetary surface. In the
absence of a fluid atmosphere or ocean, the only method to balance the
earth’s surface temperature would be by conduction. With an atmosphere or
ocean, transport of energy polewards is possible, and this is defined as
the Meridional Heat Flux (MHF). Large-scale dynamics and eddies transport
energy polewards as shown analytically and numerically in [19], while the
oceanic energy transport is largely driven by the thermohaline circulation
and ocean currents. The total MHF can be calculated from the
top-of-atmosphere radiative balance [10, 20]. MHF can be estimated in total
or in oceanic and atmospheric components [10, 20]. In previous work [20]
the ERBE dataset was used to find the total MHF with the NCEP and ECMWF
models used to find the contribution from the atmosphere and ocean.

The method used to calculate the MHF in this work replicates that used in
both Trenberth and Caron 2001 [20], and Wunsch 2005 [10]. The MHF is
calculated from monthly average radiative flux difference at the top of the
atmosphere. For each latitude band around the globe, the radiative flux
difference is summed to give a total flux difference at each band. These
total flux differences are then multiplied by the area in each band, to
calculate an energy flux out of the atmosphere for each band. The fluxes
are then accumulated from the South pole to the North pole with the final
sum defining the MHF [10].

Figures 1(a) and 1(b) show the annual average radiative balance at the top
of the atmosphere from the ERBE dataset and our computed HadGEM1 results.
These values are multiplied by the area in each latitude band to give the
contribution of each band to the total MHF. To produce Figure 1(d) the data
from Figure 1(b) was regridded, from the HadGEM1 model grid to the 2.5°
square grid used by the ERBE dataset. The regridding enables a direct
comparison between the results in Figures 1(c) and 1(d). If the original
grid spacing were retained the HadGEM results would show a larger number of
smaller fluxes. Figure 1(e) shows the summation of the results in Figure
1(c) from the South pole to the North pole. Figure 1(f) is generated using
the same method as Figure 1(e) with data that has not been regridded to the
lower ERBE resolution. It can be seen that the MHF values derived from
HadGEM1 were compared well with the dataset and show less of an imbalance
when the calculation direction is reversed from the North to the South.

fig1
Figure 1: Calculation of the MHF from radiative balance values in the ERBE
dataset [10] (left) and HadGEM1 (right). (a) and (b) show the annual
average radiative balance. (c) and (d) multiply (a) and (b) by the area in
each latitude band. (e) and (f) sum these values from
9 0
∘
S to
9 0
∘
N to give the MHF. Dotted lines in (e) and (f) show the result from
9 0
∘
N to
9 0
∘
S. (a), (c), and (e) are copied from Figures 2(a), 2(b), and 2(c) of Wunsch
2005 [10].
4. Results

The results in Figure 2 show the change in average summer and winter
surface temperature and in many cases are reflected in the sea ice fraction
plots shown in Figure 3. Figures 3(a) and 3(b) show the effects of doubling
atmospheric carbon dioxide concentration on northern polar sea ice
fraction. The warming values found in Figures 2(a) and 2(b) agree with
those found in Figure 1(a) of [5] and Figure 4(b) of [7] where, again, the
doubling of atmospheric carbon dioxide leads to a disproportionate warming
in the polar regions. This warming of the climate results in a loss of
3 . 6 × 1 0
6
km2 of Arctic sea ice and a further
1 . 0 × 1 0
6
km2 of Antarctic sea ice. The global average temperature change between the
control and double carbon dioxide concentration atmosphere for the work in
[4] is + 0.58 K; in this work the difference is + 0.82 K.

fig2
Figure 2: Comparison of summer (left) and winter (right) polar surface
temperatures (
𝐾
) for four geoengineering simulations. (a) and (b) show the differences
between 2CO2 and CON. (c) and (d) show the differences between MCB3 and
CON. (e) and (f) show the differences between MCBA and CON.
fig3
Figure 3: As Figure 2 except for sea ice fraction. The black contour shows
the limit of sea ice in the CON simulation.
It can be seen in Figures 3(a) and 3(b) that doubling the carbon dioxide
concentration causes a greater increase in temperature difference during
the winter, than in summer. We find that seeding the three regions results
in a global average polar cooling of 0.8 K as can be seen in Figures 3(c)
and 3(d). This cooling acts against the polar amplification and reduces
South polar ice loss to
0 . 7 9 × 1 0
6
km2 while increasing North polar ice cover by
0 . 2 0 × 1 0
6
km2. The results from a comparison between MCBA and CON shown in panels (e)
and (f) of Figures 2 and 3, indicate the extensive cooling brought on by
all-sea seeding. The majority of the northern hemisphere is subject to a
significant reduction in surface temperatures which in turn influences the
sea ice coverage. There is however a warming found in the region South of
Greenland. Despite this warming, the Arctic sea ice is increased by
2 . 3 × 1 0
6
km2 and in the Southern hemisphere the increase in sea ice cover is
7 . 9 × 1 0
6
km2.

We present the first analysis of changes to an MHF as a result of
simulating the deployment of MCB in a double carbon dioxide concentration
atmosphere. The maximum MHF, in the northern hemisphere, is generally found
close to 40 degrees N and the maximum value from the control, CON is found
to be 5.8 PW. The heating from doubling carbon dioxide raises the maximum
to 6.1 PW while three region seeding in MCB3 reduces this to 5.7 PW. In
MCBA the maximum MHF is reduced to 4.0 PW. These results demonstrate how
MCB, even when seeding is applied in three-relatively small maritime
regions, can cause an appreciable change in the global MHF.

5. Discussion

The results from our four climate simulations including two MCB scenarios
show a strong connection between sea ice fraction and sea surface
temperatures. These two quantities are influenced by a sea ice-albedo
feedback loop which in turn is influenced by the MHF, which transports heat
energy polewards [21]. Furthermore our control simulation (CON) is in good
agreement with previous work on the MHF using the ERBE dataset [10, 20].
Polar amplification leads to a polar heating and thus a reduction in sea
ice which then possibly starts the positive feedback resulting in further
heating and sea ice loss. Thus MCB may be able to target polar regions more
effectively than other geoengineering methods [5, 11]. In particular, in
the double carbon dioxide scenario, MCB produces a significant reduction in
sea ice loss.

We can see from the results in Figures 2(c), 2(d), 3(c), and 3(d) that
seeding the selected three regions of stratocumulus clouds returns climate
to close to but not exactly the control situation. This agrees with results
[5] where different areas of cloud were seeded to a much higher value of N.
The ability of MCB to return to close to a control simulation is further
reflected in Figure 4 where the MCB3 MHF flux curve is almost overlaid on
CON.

The results from a double carbon dioxide atmosphere (no seeding) run are
consistent with those of [4–7]. These show that polar regions are warmed
significantly more than tropical regions and that this warming has a
significant impact upon sea ice cover. When an MCBA seeding scenario is
used we see further evidence to support the link between MHF and polar
temperatures and also the impact these temperatures have on sea ice
fraction. With reduced polar temperatures, ice growth is significant.

This work builds upon previous studies [4–7, 11] which show that MCB cannot
reproduce the control climate but can return the polar ice state to that
similar to the control. There is a need for further studies to understand
better the complexities of marine stratocumulus clouds, to assess the
consequences of modifying the patterns of polar temperature and sea ice
cover, and to thoroughly examine the (possibly adverse) consequences of MCB
deployment. The impact of MCB on precipitation patters has been
investigated in several publications [4–7, 13]. Work in Latham et al. (In
press) [13] uses simulations similar to those in Table 1 to assess the
impact of three region MCB on precipitation patterns.

Further work is needed to estimate the relative sizes of the atmospheric
and oceanic contributions to the MHF in a geoengineered atmosphere.

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