| Literature DB >> 33204244 |
Edward Gryspeerdt1, Johannes Mülmenstädt2, Andrew Gettelman3, Florent F Malavelle4,5, Hugh Morrison3, David Neubauer6, Daniel G Partridge4, Philip Stier7, Toshihiko Takemura8, Hailong Wang9, Minghuai Wang10,11,12, Kai Zhang9.
Abstract
The radiative forcing from aerosols (particularly through their interaction with clouds) remains one of the most uncertain components of the human forcing of the climate. Observation-based studies have typically found a smaller aerosol effective radiative forcing than in model simulations and were given preferential weighting in the Intergovernmental Panel on Climate Change (IPCC) Fifth Assessment Report (AR5). With their own sources of uncertainty, it is not clear that observation-based estimates are more reliable. Understanding the source of the model and observational differences is thus vital to reduce uncertainty in the impact of aerosols on the climate. These reported discrepancies arise from the different methods of separating the components of aerosol forcing used in model and observational studies. Applying the observational decomposition to global climate model (GCM) output, the two different lines of evidence are surprisingly similar, with a much better agreement on the magnitude of aerosol impacts on cloud properties. Cloud adjustments remain a significant source of uncertainty, particularly for ice clouds. However, they are consistent with the uncertainty from observation-based methods, with the liquid water path adjustment usually enhancing the Twomey effect by less than 50%. Depending on different sets of assumptions, this work suggests that model and observation-based estimates could be more equally weighted in future synthesis studies.Entities:
Year: 2020 PMID: 33204244 PMCID: PMC7668122 DOI: 10.5194/acp-20-613-2020
Source DB: PubMed Journal: Atmos Chem Phys ISSN: 1680-7316 Impact factor: 6.133
The ERFaer (global mean differences between the PI and PD TOA radiation) from the AeroCom (top section) and CMIP5 (bottom section) models in watts per square metre (Wm−2). CMIP5 physics ensemble members are shown with the “-p” suffix. The third column identifies the nature of the aerosol parameterisation in the model, (0 - direct effect only; 1 - RFaci in liquid clouds, no adjustments; 2 - with liquid cloud adjustments; 3 - parameterised aerosol impacts on ice cloud) following Heyn et al. (2017). Models in italics are sensitivity studies and not included in averages. The icons are used in scatter plots and models of the same family have the same colour. UKESM is not an AeroCom model but has been run in a similar configuration.
| Model | Net | Total | Total | ||
|---|---|---|---|---|---|
| AeroCom indirect effect experiment | |||||
| ECHAM6-HAM2.2 | 3 | −1.06 | −1.89 | 0.83 | |
| – | 3 | −0.41 | −0.94 | 0.53 | |
| – | 3 | −1.49 | −2.33 | 0.85 | |
| – | 3 | −1.80 | −2.80 | 1.00 | |
| – | 3 | −2.80 | −4.24 | 1.43 | |
| CAM5.3 | 3 | −1.41 | −2.10 | 0.69 | |
| CAM5.3-MG2 | 3 | −1.30 | −1.55 | 0.25 | |
| CAM5.3-CLUBB | 3 | −1.73 | −2.44 | 0.70 | |
| CAM5.3-CLUBB-MG2 | 3 | −1.65 | −2.47 | 0.82 | |
| SPRINTARS | 3 | −0.99 | −1.18 | 0.19 | |
| SPRINTARS-KK | 3 | −1.23 | −1.46 | 0.23 | |
| HadGEM3-UKCA | 2 | −2.30 | −2.74 | 0.44 | |
| UKESM1-A | 2 | −1.13 | −1.35 | 0.22 | |
| CMIP5 | |||||
| CanESM2 | 1 | −0.88 | −0.95 | 0.07 | |
| HadGEM2-A | 2 | −1.23 | −1.33 | 0.09 | |
| IPSL-CM5A-LR | 1 | −0.74 | −0.53 | −0.21 | |
| MIROC5 | 3 | −1.30 | −1.78 | 0.49 | |
| MRI-CGCM3-p1 | 3 | −1.11 | −2.06 | 0.96 | |
| MRI-CGCM3-p3[ | 3 | −1.48 | −2.63 | 1.15 | |
| MPI-ESM-LR-p1 | 0 | −0.36 | −0.24 | −0.12 | |
| MPI-ESM-LR-p2[ | 1 | −0.63 | −0.43 | −0.20 | |
| Mean | −1.21 | −1.59 | 0.39 | ||
Ensemble key:
constant climatological Nd in autoconversion.
scaled anthropogenic emissions.
updated cloud scheme.
different aerosol forcing data.
The impact of ice water path thresholds on the RFaci estimate, the forcing from and fl adjustments and the and fl enhancements of the RFaci. The row in bold represents the threshold value used throughout the rest of this work. The bottom rows show the liquid forcing estimates from a simulation with no parameterised cloud adjustment and determined from the standard simulation using the PRP method (Mülmenstädt et al., 2019). Values are in watts per square metre (Wm−2) unless otherwise specified.
| IWPmin(gm−2) | RFaci | ||||
|---|---|---|---|---|---|
| None | −0.29 | −0.37 | −0.29 | 127 | 153 |
| 1 | −0.43 | −0.50 | −0.29 | 116 | 67 |
| 5 | −0.43 | −0.51 | −0.29 | 119 | 67 |
| 10 | −0.43 | −0.51 | −0.29 | 119 | 67 |
| 25 | −0.44 | −0.52 | −0.29 | 118 | 66 |
| 100 | −0.53 | −0.60 | −0.29 | 113 | 55 |
| CND | −0.42 | −0.03 | 0.07 | 7 | −16 |
| PRP | −0.51 | −0.53 | −0.31 | 104 | 61 |
Figure 1.(a) The RFaci related to the fractional change in aerosol optical depth (AOD) and Nd. Colours and symbols are given in Table 1; vertical lines link the RFaci estimates to the “intrinsic” (RFaci+LWP adjustment) forcing. The black points are the observation-based estimates from A - Gryspeerdt et al. (2017), B - Fiedler et al. (2017), C - McCoy et al. (2017), D - Bellouin et al. (2013), E - Stevens (2015), and F - Hasekamp et al. (2019). (b) Forcing from adjustments in and liquid fc. Other estimates from G - Andersen et al. (2017), H - Gryspeerdt et al. (2016), I - Christensen et al. (2017), J - Gryspeerdt et al. (2019), K - Sato et al. (2018), and L - Toll et al. (2019) are shown. Not all studies provide a central estimate (black point). (c) The percentage enhancement of the RFaci by and liquid fc changes. Diagonal lines are contours of constant total RFaci enhancement.
Figure 2.(a) The ensemble mean shortwave RFaci. (b) ERFaci contribution from fl changes. (c) ERFaci contribution from changes.
Figure 3.The relationship (in-cloud) and the adjustment in each of the models.
Figure 4.(a) The total ERFaer in the longwave as a function of the shortwave ERFaer. The grey range is the estimate from Cherian et al. (2014) and the black circle the expert assessment from Boucher et al. (2013). (b) The ERFaci due to changes in ice-cloud properties. Shortwave changes from the cloud albedo (ΔSWci) and ice fc (fi) (ΔSWcfi) are shown in blue, including the impact of ice-cloud changes masking lower-level clouds. Longwave changes from changes in intrinsic cloud properties (ΔLWc) and cloud fraction (ΔLWcf) are in yellow and red, respectively. The cross is the total ERFaci from changes in ice clouds.