Reducing Aerosol Forcing Uncertainty by Combining Models With Satellite and Within‐The‐Atmosphere Observations: A Three‐Way Street

Author:

Kahn Ralph A.1ORCID,Andrews Elisabeth23ORCID,Brock Charles A.4ORCID,Chin Mian1ORCID,Feingold Graham4ORCID,Gettelman Andrew56ORCID,Levy Robert C.1ORCID,Murphy Daniel M.4ORCID,Nenes Athanasios78ORCID,Pierce Jeffrey R.9ORCID,Popp Thomas10,Redemann Jens11ORCID,Sayer Andrew M.112ORCID,da Silva Arlindo M.1ORCID,Sogacheva Larisa13ORCID,Stier Philip14ORCID

Affiliation:

1. Earth Sciences Division NASA Goddard Space Flight Center MD Greenbelt USA

2. Cooperative Institute for Research in Environmental Sciences (CIRES) University of Colorado, Boulder Boulder CO USA

3. Colorado and Global Monitoring Laboratory NOAA Boulder CO USA

4. Chemical Sciences Laboratory NOAA Boulder CO USA

5. National Center for Atmospheric Research Boulder CO USA

6. Now at Pacific Northwest National Laboratory Richland WA USA

7. Laboratory of Atmospheric Processes and Their Impacts Ecole Polytechnique Fédérale de Lausanne (EPFL) Lausanne Switzerland

8. Center for the Study of Air Quality and Climate Change Foundation for Research and Technology Hellas (FORTH) Thessaloniki Greece

9. Department of Atmospheric Science Colorado State University Fort Collins CO USA

10. German Aerospace Center (DLR) German Remote Sensing Data Center (DFD) Oberpfaffenhofen Germany

11. School of Meteorology University of Oklahoma Norman OK USA

12. University of Maryland, Baltimore County Baltimore MD USA

13. Finnish Meteorological Institute Climate Research Programme Helsinki Finland

14. Department of Physics University of Oxford Oxford UK

Abstract

AbstractAerosol forcing uncertainty represents the largest climate forcing uncertainty overall. Its magnitude has remained virtually undiminished over the past 20 years despite considerable advances in understanding most of the key contributing elements. Recent work has produced modest increases only in the confidence of the uncertainty estimate itself. This review summarizes the contributions toward reducing the uncertainty in the aerosol forcing of climate made by satellite observations, measurements taken within the atmosphere, as well as modeling and data assimilation. We adopt a more measurement‐oriented perspective than most reviews of the subject in assessing the strengths and limitations of each; gaps and possible ways to fill them are considered. Currently planned programs supporting advanced, global‐scale satellite and surface‐based aerosol, cloud, and precursor gas observations, climate modeling, and intensive field campaigns aimed at characterizing the underlying physical and chemical processes involved, are all essential. But in addition, new efforts are needed: (a) to obtain systematic aircraft in situ measurements capturing the multi‐variate probability distribution functions of particle optical, microphysical, and chemical properties (and associated uncertainty estimates), as well as co‐variability with meteorology, for the major aerosol airmass types; (b) to conceive, develop, and implement a suborbital (aircraft plus surface‐based) program aimed at systematically quantifying the cloud‐scale microphysics, cloud optical properties, and cloud‐related vertical velocities associated with aerosol‐cloud interactions; and (c) to focus much more research on integrating the unique contributions of satellite observations, suborbital measurements, and modeling, to reduce the persistent uncertainty in aerosol climate forcing.

Funder

Earth Sciences Division

European Space Agency

National Oceanic and Atmospheric Administration

Publisher

American Geophysical Union (AGU)

Subject

Geophysics

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