By: Gunnar Myhre ( Center for International Climate and Environmental Research Oslo (CICERO), Oslo, Norway ), Cathrine E. Lund Myhre ( NILU Norwegian Institute for Air Research, Kjeller, Norway ), Bjorn H. Samset ( Center for International Climate and Environmental Research Oslo (CICERO), Oslo, Norway ) & Trude Storelvmo ( Department of Geology and Geophysics, Yale University, New Haven, Connecticut, USA ) © 2013 Nature Education
Citation: Myhre, G., Myhre, C. E.L., Samset, B. H. & Storelvmo, T. (2013) Aerosols and their Relation to Global Climate and Climate Sensitivity. Nature Education Knowledge 4( 5 ) :7
Atmospheric aerosols from human activity influence climate. Uncertainties in the understanding of their effects limit our knowledge about climate change.
Atmospheric aerosols are suspensions of liquid, solid, or mixed particles with highly variable chemical composition and size distribution (Putaud et al. 2010). Their variability is due to the numerous sources and varying formation mechanisms (Figure 1). Aerosol particles are either emitted directly to the atmosphere (primary aerosols) or produced in the atmosphere from precursor gases (secondary aerosols).
Primary aerosols consist of both inorganic and organic components. Inorganic primary aerosols are relatively large (often larger than 1 μm) and originate from sea spray, mineral dust, and volcanoes. These coarse aerosols have short atmospheric lifetimes, typically only a few days. Combustion processes, biomass burning, and plant/microbial materials are sources of carbonaceous aerosols, including both organic carbon (OC) and solid black carbon (BC). BC is the main anthropogenic light-absorbing constituent present in aerosols. Its main sources are the combustion of fossil fuels (such as gasoline, oil, and coal), wood, and other biomass. Primary BC and OC containing aerosols are generally smaller than 1 µm.
Top: local and large scale air pollution. Sources include (bottom, counterclockwise) volcanic eruptions (producing volcanic ash and sulphate), sea spray (sea salt and sulphate aerosols), desert storms (mineral dust), savannah biomass burning (BC and OC), coal power plants (fossil fuel BC and OC, sulphate, nitrate), ships (BC, OC, sulphates, nitrate), cooking* (domestic BC and OC), road transport (sulphate, BC, VOCs yielding OC). Center: Electron microscope images of (A) sulphates, (B) soot, (C) fly ash, a product of coal combustion (Posfai et al., 1999).
© 2013 Nature Education Images courtesy of Eyjafjallajökull eruption: courtesy of Árni Friðriksson, Wikimedia commons; Sea spray: NASA/JPL; Desert storm: Wikimedia commons; Savannah biomass burning: Wikimedia Commons ; Coal power plants: Wikimedia Commons; Ship in a Norwegian fjord: Stefan Großmann, Wikimedia commons; Cooking: Fullerton et al.2009; Truck: U. S. EPA, Wikimedia commons. All rights reserved.
Secondary aerosol particles are produced in the atmosphere from precursor gases by condensation of vapours on pre-existing particles or by nucleation of new particles. A considerable fraction of the mass of secondary aerosols is formed through cloud processing (Ervens et al. 2011). Secondary aerosols are small; they range in size from a few nanometres up to 1 µm and have lifetimes of days to weeks. Secondary aerosols consist of mixtures of compounds; the main components are sulphate, nitrate, and OC. The main precursor gases are emitted from fossil fuel combustion, but fires and biogenic emissions of volatile organic compounds (VOCs) are also important. Occasionally volcanic eruptions result in huge amounts of primary and secondary aerosols both at the ground and in the stratosphere (Boulon et al. 2011).
The size and chemical composition of the particles evolve with time through coagulation, condensation, and chemical reactions. Particles may grow by uptake of water, a process that depends on chemical composition, particle size, and ambient relative humidity. The different particles have varying impacts in the atmosphere depending on composition, and the numerous sources and large range in size distributions further complicate a quantification of their effects. Both particle growth and the mixing of different particle types influence the climate effect of aerosols.
Aerosol optical depth (AOD) retrieved by remote sensing from space is highly inhomogeneous, with the largest values in Asia and the tropical regions of Africa (see Figure 2). The estimated contributions from different aerosol types in selected regions are shown in pie charts. In general, there is large spatial and temporal variability in global aerosol composition. Remote sensing from both space and ground together with in situ observations have substantially advanced an understanding of geographical aerosol distribution, but there are still large uncertainties in the chemical composition and the anthropogenic contribution to the AOD (Figure 2).
MODIS aerosol optical depth [AOD (550 nm); dimensionless] averaged over the 10-year period 2001–2010 (Remer et al. 2008). Pie charts show how various aerosol types contribute to the total AOD for different regions, as estimated by a global aerosol model (Myhre et al. 2009). Aerosol types are Sul (sulphate), BC and OC from fossil fuel usage, Bio (OC and BC from biomass burning), Nitrate, Sea (sea salt), and Min (mineral dust). Gray areas indicate lack of MODIS data. Some aerosol types, e.g. sulphate, have enhanced contributions to AOD due to hygroscopic growth. The contribution from OC is likely underestimated as in most of the global aerosol models (Zhang et al. 2007).
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All atmospheric aerosols scatter incoming solar radiation, and a few aerosol types can also absorb solar radiation. BC is the most important of the latter, but mineral dust and some OC components are also sunlight absorbers. Aerosols that mainly scatter solar radiation have a cooling effect, by enhancing the total reflected solar radiation from the Earth. Strongly absorbing aerosols have a warming effect. In the atmosphere, there is a mixture of scattering and absorbing aerosols, and their net effect on Earth's energy budget is dependent on surface and cloud characteristics. Scattering aerosols above a dark surface and absorbing aerosols above a bright surface are most efficient (see Figure 3a). Scattering (absorbing) aerosol above a bright (dark) surface are less efficient because the solar radiation is reflected (absorbed) anyway. Absorbing aerosols are particularly efficient when positioned above clouds, which are a main contributor to the total reflection of solar radiation back to space.
(a) The direct aerosol effect for low and high surface albedo, for scattering and absorbing aerosols. A dark surface (low albedo) will already absorb a large portion of the solar radiation, and absorbing aerosols will thus have a small effect. Scattering aerosols will instead amplify the total reflectance of solar radiation, since the solar radiation would otherwise be absorbed at the surface. Over a bright surface (high albedo) scattering aerosols have a reduced effect. Absorbing aerosols may, however, substantially reduce the outgoing radiation and thus have a warming effect. (b) The cloud albedo effect (first indirect aerosol effect), cloud lifetime effect (second indirect aerosol effect), and semi-direct effect.
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Aerosols are vital for cloud formation because a subset of them may serve as cloud condensation nuclei (CCN) and ice nuclei (IN). An increased amount of aerosols may increase the CCN number concentration and lead to more, but smaller, cloud droplets for fixed liquid water content. This increases the albedo of the cloud, resulting in enhanced reflection and a cooling effect, termed the cloud albedo effect (Twomey 1977; Figure 3b). Smaller drops require longer growth times to reach sizes at which they easily fall as precipitation. This effect, called the cloud lifetime effect, may enhance the cloud cover (see illustration in Figure 3b) and thus impose an additional cooling effect (Albrecht 1989). However, the life cycles of clouds are controlled by an intimate interplay between meteorology and aerosol-and-cloud microphysics, including complex feedback processes, and it has proven difficult to identify the traditional lifetime effect put forth by Albrecht (1989) in observational data sets.
Absorbing aerosols also have the potential to modify clouds properties, without directly acting as CCN and IN, by: (1) heating the air surrounding them while reducing the amount of solar radiation reaching the ground, which stabilizes the atmosphere and diminishes the convection and thus the potential for cloud formation, (2) increasing the atmospheric temperature, which reduces the relative humidity, inhibits cloud formation, and enhances evaporation of existing clouds. This is collectively termed the semi-direct aerosol effect (Hansen et al. 1997). The net effect is uncertain (see Figure 3b) and highly depends on the vertical profile of BC (Koch & Del Genio 2010).
In addition, BC and other absorbing aerosols deposited on snow or ice surfaces may reduce the surface albedo, leading to reduced reflectance of solar radiation, and hence a heating effect (Hansen & Nazarenko 2004).
Radiative forcing (RF) is often used to quantify and compare the potential climate impact of the various aerosol effects. RF is defined as a change in the Earth's radiation balance due to a perturbation of anthropogenic or natural origin.. The total aerosol forcing probability density function (PDF), in addition to individual aerosol components, indicating both the magnitudes and uncertainty of the effects, is shown in Figure 4a. The wider a PDF, the larger is the uncertainty. Combining all aerosol effects (blue dashed curve in Figure 4a) enhances the uncertainty compared to considering only the direct aerosol effect and cloud albedo effect.
(a) Probability density functions of aerosol effects (Isaksen et al. (2009), with small updates of cloud albedo and lifetime effects). The total aerosol radiative forcing (red and blue curves), with and without clouds are estimated by combining the individual effects in a Monte Carlo calculation (Boucher & Haywood 2001). Vertical lines show 90% confidence intervals. (b) Climate sensitivity for a doubling of CO2 as a function of the total aerosol RF. Radiative imbalances of 0.85 (solid line, Hansen et al. 2005), 0.7 and 1.0 Wm -2 (grey band) and 0.0 (radiative equilibrium, dashed line) are shown. Industrial era temperature change is taken as 0.8 Kelvin (K), and RF of non-aerosol components +2.9 Wm -2 .
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The change in global mean surface temperature (ΔT) as a result of RF can be expressed by the following simple heat-balance equation:
c d(ΔT)/dt = RF - ΔT/λ (1)
Here c is the heat capacity of the land-ocean-atmosphere system and λ is the climate sensitivity. At radiative equilibrium (d(ΔT)/dt = 0), Equation 1 reduces to ΔT = λRF. However, the Earth is not in radiative equilibrium, since less thermal radiation is currently emitted to space compared to what is absorbed of solar radiation (Hansen et al. 2005). This radiative imbalance causes the Earth to gradually warm, with global warming as a result (Trenberth & Fasullo 2010). The simple equation above has two key uncertainties. The observed surface temperature change is rather well determined over the industrial era, but the climate sensitivity and the total RF are both highly uncertain. The climate sensitivity is an essential parameter for prediction of future climate change. Quantifying the climate sensitivity for the doubling of CO2 has long been attempted by using global climate models or temperature records, but it still has a wide range of reported values (IPCC 2007, Knutti & Hegerl 2008). The total RF through the industrial era is also uncertain, mainly due to lack of quantification of the aerosol effects discussed above. The implication of this uncertainty in the aerosol RF for the quantification of the climate sensitivity can be illustrated as follows:
If we assume a total aerosol RF and a current energy imbalance, we can compute the resulting climate sensitivity using Equation 1 (Figure 4b). This can then be compared with the PDFs for the current aerosol RF to get an indication of the range in climate sensitivities allowed by the present knowledge (red and blue lines in figure 4b). A similar figure has previously been presented in Andreae et al. (2005). The allowed climate sensitivity ranges from about 2 to 8 Kelvin (K) for a doubling of CO2 using the known industrial age warming of around 0.8 K, the present best knowledge of RF from non-aerosol components, the 90% confidence interval of the total aerosol RF for the most certain effects, and radiative imbalance.
There has been a tremendous improvement in the understanding of atmospheric aerosols and their climate effect over the last decades, with some important observational and modelling breakthroughs. Long-term measurements of aerosols (e.g., Putaud et al. 2010, Andrews et al. 2011), observational campaigns (e.g., Quinn & Bates 2005), and remote sensing from space and ground (Holben et al. 1998, Remer et al. 2008) have remarkably increased knowledge about the composition and characteristics of atmospheric aerosols. However, an understanding of the greater complexity of atmospheric aerosols has at the same time limited more robust quantification of their climate effect. The first estimate of the direct aerosol effect in the early 1990s was limited to sulphate aerosols (Charlson et al. 1991), with estimates for BC coming a few years later (Haywood & Shine 1995). Observations have shown that OC is an important aerosol component (Novakov et al. 1997, Ramanathan et al. 2001), and substantial investigations have later explored the complex composition and optical characteristics of this compound (e.g., Kanakidou et al. 2005, Graber & Rudich 2006). Global aerosol models today provide RF estimates for a large set of aerosol components, such as sulphate, BC (from fossil fuel and biomass burning), OC (primary and secondary from fossil fuel and biomass burning), and nitrate (Jacobson 2001, Liao & Seinfeld 2005, Koch et al. 2009). In addition, multi-model studies are performed to understand and reduce uncertainties due to model differences (Schulz et al. 2006).
An example of recent progress is reduced uncertainty in the estimate of the total direct aerosol effect. This estimate was made possible by advances that have occurred on both the modelling and the observational side, and was based on a combination of global aerosol models and observation based methods (mostly remotely sensed data). Initially, observational estimates of RF were up to three times stronger than model based calculations (Forster et al. 2007). Consistency between these two different approaches has subsequently been reached, and was found to arise from necessary and simplified assumptions of the pre-industrial aerosol composition in the observation-based method (Myhre 2009). Although the uncertainty in the total direct aerosol effect is reduced, it is still substantial compared to uncertainties associated with greenhouse gases. In addition the uncertainty in individual RF for several of the aerosol components, such as BC, OC, and nitrate, is large.
Similar to the early estimates of the direct aerosol effect, many of the first model estimates of the aerosol indirect effect only accounted for the effect of sulphate particles acting as CCN ( Kaufman & Chou 1993, Jones et al. 1994). Furthermore, they only included the influence of sulphate aerosols on cloud albedo, disregarding any effects on cloud lifetime and extent. With the realization that other aerosol species of anthropogenic origin could also form cloud droplets and that effects on cloud lifetime and extent were also possible, global climate models estimated the aerosol indirect effect to be stronger (e.g., Lohmann & Feichter 1997, Menon et al. 2002). Some even predicted this cooling effect to be comparable in magnitude to the warming greenhouse effect. Recent publications have later pointed to oversimplifications in model representation of clouds and how their lifetimes are affected by aerosols (e.g., Stevens & Feingold 2009). It is now acknowledged that aerosol effects on cloud lifetime will vary with the cloud type in question, and that complex feedback processes can sometimes complicate the ultimate cloud response to aerosol perturbations. Recent model studies have found that by forming ice in super-cooled liquid clouds, aerosols may in fact shorten cloud lifetime, because of the more efficient precipitation formation when cloud ice is present (e.g., Lohmann & Hoose 2009, Storelvmo et al. 2011). In summary, whether aerosols are acting as CCN or IN or are simply modifying atmospheric stability by absorbing solar radiation, there is still high uncertainty associated with their effect on cloud lifetime. This uncertainty reflects how challenging it is to represent aerosol-and-cloud processes that occur on microscopic scales in models that have resolutions of tens to hundreds of kilometres. Although much uncertainty remains, model and satellite estimates of the cloud albedo effect seem to converge on a negative RF that has about half the magnitude of the positive RF attributed to increasing CO2 concentrations.
We appreciate useful reviewer comments by Patrick Chuang and one anonymous reviewer. GM and BHS were funded by the Research Council of Norway through the SLAC project.
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