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Aerosol indirect effectsQuaas, Johannes, Ming, Yi, Menon, Surabi, Takemura, Toshihiko, Wang, M., Penner, Joyce E., Gettelman, Andrew, Lohmann, Ulrike, Bellouin, Nicolas, Boucher, Olivier, Sayer, Andrew M., Thomas, G. E., McComiskey, Allison, Feingold, Graham, Hoose, Corinna, Kristjansson, Jon Egill, Liu, Xiaohong, Balkanski, Yves, Donner, Leo J., Ginoux, Paul A., Stier, Philip, Grandey, Benjamin, Feichter, Johann, Sednev, Igor, Bauer, Susanne E., Koch, Dorothy, Grainger, Roy Gordon, Kirkevag, Alf, Iversen, Trond, Seland, Ø., Easter, Richard, Ghan, Steven J., Rasch, Philip J., Morrison, Hugh, Lamarque, Jean-Francois, Iacono, Michael J., Kinne, Sebastian, Schulz, M. January 2009 (has links)
Aerosol indirect effects continue to constitute one of the most important uncertainties for anthropogenic climate perturbations. Within the international AEROCOM initiative, the representation of aerosol-cloud-radiation interactions in ten different general circulation models (GCMs)
is evaluated using three satellite datasets. The focus is on stratiform liquid water clouds since most GCMs do not include ice nucleation effects, and none of the model explicitly parameterises aerosol effects on convective clouds. We compute statistical relationships between aerosol optical depth (tau a) and various cloud and radiation quantities in a manner that is consistent between the models and the satellite data. cloud droplet number concentration (N d) compares relatively well to the satellite data at least over the ocean. The relationship between (tau a) and liquid water path is simulated much too strongly by the models. This suggests that the implementation of the second aerosol indirect effect mainly in terms of an autoconversion parameterisation has to be revisited in the GCMs. A positive relationship between total cloud fraction (fcld) and tau a as found in the satellite data is simulated by the majority of the models, albeit less strongly than that in the satellite data in most of them. In a discussion of the hypotheses proposed in the literature to explain the satellite-derived strong fcld–tau a relationship, our results indicate that none can be identified as a unique explanation. Relationships similar
to the ones found in satellite data between tau a and cloud top
temperature or outgoing long-wave radiation (OLR) are simulated
by only a few GCMs. The GCMs that simulate a negative OLR - tau a relationship show a strong positive correlation between tau a and fcld. The short-wave total aerosol radiative forcing as simulated by the GCMs is strongly influenced by the simulated anthropogenic fraction of tau a, and parameterisation assumptions such as a lower bound on Nd. Nevertheless, the strengths of the statistical relationships are good
predictors for the aerosol forcings in the models. An estimate of the total short-wave aerosol forcing inferred from the combination of these predictors for the modelled forcings with the satellite-derived statistical relationships yields a global annual mean value of −1.5±0.5Wm−2. In an alternative approach, the radiative flux perturbation due to anthropogenic
aerosols can be broken down into a component over the cloud-free portion of the globe (approximately the aerosol direct effect) and a component over the cloudy portion of the globe (approximately the aerosol indirect effect). An estimate obtained by scaling these simulated clearand cloudy-sky forcings with estimates of anthropogenic tau a
and satellite-retrieved Nd–tau a regression slopes, respectively, yields a global, annual-mean aerosol direct effect estimate of −0.4±0.2Wm−2 and a cloudy-sky (aerosol indirect effect) estimate of −0.7±0.5Wm−2, with a total estimate of −1.2±0.4Wm−2.
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Different approaches for constraining global climate models of the anthropogenic indirect aerosol effect: Different approaches for constraining global climate models of theanthropogenic indirect aerosol effectLohmann, Ulrike, Quaas, Johannes, Kinne, Stefan, Feichter, Johann January 2007 (has links)
Strategies to detect and attribute aerosol global impacts on clouds and climate from synergetic approaches involving modeling and observational evidence at different spatial and temporal scales.
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