Putting the Clouds Back in Aerosol-Cloud Interactions

Slides:



Advertisements
Similar presentations
Olivier Geoffroy Parameterization of precipitation in boundary layer clouds at the cloud system scale Pier Siebesma, Roel Neggers RK science lunch, 05/10/2010.
Advertisements

Simulating cloud-microphysical processes in CRCM5 Ping Du, Éric Girard, Jean-Pierre Blanchet.
WMO International Cloud Modeling Workshop, July 2004 A two-moment microphysical scheme for mesoscale and microscale cloud resolving models Axel Seifert.
Parametric representation of the hydrometeor spectra for LES warm bulk microphysical schemes. Olivier Geoffroy, Pier Siebesma (KNMI), Jean-Louis Brenguier,
Geophysical Fluid Dynamics Laboratory Review June 30 - July 2, 2009 Geophysical Fluid Dynamics Laboratory Review June 30 - July 2, 2009.
By : Kerwyn Texeira. Outline Definitions Introduction Model Description Model Evaluation The effect of dust nuclei on cloud coverage Conclusion Questions.
Clouds and Climate: Forced Changes to Clouds SOEE3410 Ken Carslaw Lecture 4 of a series of 5 on clouds and climate Properties and distribution of clouds.
The Centre for Australian Weather and Climate Research A partnership between CSIRO and the Bureau of Meteorology The Effect of Turbulence on Cloud Microstructure,
Clouds and Climate: Forced Changes to Clouds SOEE3410 Ken Carslaw Lecture 4 of a series of 5 on clouds and climate Properties and distribution of clouds.
Derived Properties of Warm Marine Low Clouds over the Southern Ocean: Precipitation Susceptibility and Sensitivity to Environmental Parameters Jay Mace.
Effects of size resolved aerosol microphysics on photochemistry and heterogeneous chemistry Gan Luo and Fangqun Yu ASRC, SUNY-Albany
A cloud scheme including indirect aerosol effects on ice and liquid cloud particles in the MRI Earth System Model SAKAMI, T., T.OSE and S. YUKIMOTO with.
The impact of cloud water schemes on seasonal prediction Introduction Clouds are one of the most uncertain components in climate models. The model results.
Acknowledgments This research was supported by the DOE Atmospheric Radiation Measurements Program (ARM) and by the PNNL Directed Research and Development.
Monthly Precipitation Rate in July 2006 TRMM MMF DIFF RH84 New Scheme 3.3 Evaluate MMF Results with TRMM Data Zonal Mean Hydrometeor Profile TRMM TMI CONTROL.
Comparison of Evaporation and Cold Pool Development between Single- Moment (SM) and Multi-moment (MM) Bulk Microphysics Schemes In Idealized Simulations.
Aerosol-Cloud Interactions and Radiative Forcing: Modeling and Observations Graham Feingold 1, K. S. Schmidt 2, H. Jiang 3, P. Zuidema 4, H. Xue 5, P.
CCN effects on numerically simulated mixed-phase convective storms with Klaus D. Beheng, University Karlsruhe, Germany Alexander Khain, Hebrew University.
AEROSOL & CLIMATE ( IN THE ARCTIC) Pamela Lehr METEO 6030 Spring 2006
Morrison/Gettelman/GhanAMWG January 2007 Two-moment Stratiform Cloud Microphysics & Cloud-aerosol Interactions in CAM H. Morrison, A. Gettelman (NCAR),
Large Eddy Simulation of Low Cloud Feedback to a 2-K SST Increase Anning Cheng 1, and Kuan-Man Xu 2 1. AS&M, Inc., 2. NASA Langley Research Center, Hampton,
April Hansen et al. [1997] proposed that absorbing aerosol may reduce cloudiness by modifying the heating rate profiles of the atmosphere. Absorbing.
Betty Croft, and Randall V. Martin – Dalhousie University, Canada
Boundary Layer Clouds.
Mixed-phase cloud physics and Southern Ocean cloud feedback in climate models. T 5050 Liquid Condensate Fraction (LCF) Correlation between T5050 and ∆LWP.
K.S Carslaw, L. A. Lee, C. L. Reddington, K. J. Pringle, A. Rap, P. M. Forster, G.W. Mann, D. V. Spracklen, M. T. Woodhouse, L. A. Regayre and J. R. Pierce.
Modeling Mesoscale Cellular Structures and Drizzle in Marine Stratocumulus Wang and Feingold, JAS, 2009 Part I,II Wang et al, ACP, 2010 Feingold et al,
LES modeling of precipitation in Boundary Layer Clouds and parameterisation for General Circulation Model O. Geoffroy J.L. Brenguier CNRM/GMEI/MNPCA.
APR CRM simulations of the development of convection – some sensitivities Jon Petch Richard Forbes Met Office Andy Brown ECMWF October 29 th 2003.
Arctic Aerosol Scavenging and Deposition Jo Browse (University of Leeds) Ken Carslaw, Graham Mann, Lindsay Lee, Leighton Regayre (university of Leeds)
Particle Size, Water Path, and Photon Tunneling in Water and Ice Clouds ARM STM Albuquerque Mar Sensitivity of the CAM to Small Ice Crystals.
Modeling. How Do we Address Aerosol-Cloud Interactions? The Scale Problem Process Models ~ 10s km Mesoscale Models Cloud resolving Models Regional Models.
Update on the 2-moment stratiform cloud microphysics scheme in CAM Hugh Morrison and Andrew Gettelman National Center for Atmospheric Research CCSM Atmospheric.
Understanding The Effect Of Anthropogenic Aerosol Weekly Cycles Upon The Climate Using A Global Model Of Aerosol Processes (GLOMAP) Introduction GLOMAP.
Aerosol Indirect Effects in CAM and MIRAGE Steve Ghan Pacific Northwest National Laboratory Jean-Francois Lamarque, Peter Hess, and Francis Vitt, NCAR.
Towards parameterization of cloud drop size distribution for large scale models Wei-Chun Hsieh Athanasios Nenes Image source: NCAR.
Update on progress with the implementation of a new two-moment microphysics scheme: Model description and single-column tests Hugh Morrison, Andrew Gettelman,
Chien Wang Massachusetts Institute of Technology A Close Look at the Aerosol-Cloud Interaction in Tropical Deep Convection.
PAPERSPECIFICS OF STUDYFINDINGS Kohler, 1936 (“The nucleus in and the growth of hygroscopic droplets”) Evaporate 2kg of hoar-frost and determined Cl content;
Page 1© Crown copyright 2006 Precipitating Shallow Cumulus Case Intercomparison For the 9th GCSS Boundary Layer Cloud Workshop, September 2006, GISS.
Parameterization of cloud droplet formation and autoconversion in large-scale models Wei-Chun Hsieh Advisor: Athanasios Nenes 10,Nov 2006 EAS Graduate.
12 th annual CMAS conference Impact of Biomass Burning Aerosols on Regional Climate over Southeast US Peng Liu, Yongtao Hu, Armistead G. Russell, Athanasios.
Aerosol 1 st indirect forcing in the coupled CAM-IMPACT model: effects from primary-emitted particulate sulfate and boundary layer nucleation Minghuai.
Aerosol Indirect Effects in CAM A. Gettelman (NCAR), F. Vitt (NCAR), P. Hess (Cornell) H. Morrison (NCAR), P. R. Field (Met Office), S.J. Ghan (PNNL)
Modal Aerosol Treatment in CAM: Evaluation and Indirect Effect X. Liu, S. J. Ghan, R. Easter (PNNL) J.-F. Lamarque, P. Hess, N. Mahowald, F. Vitt, H. Morrison,
© Crown copyright Met Office Systematic Biases in Microphysics: observations and parametrization Ian Boutle, Steven Abel, Peter Hill, Cyril Morcrette QJ.
Investigations of aerosol-cloud- precipitation processes in observations and models at The University of Arizona Michael A. Brunke 1, Armin Sorooshian.
15th Annual CMAS Conference
Tests with Liu-Penner ice microphysics in Hirlam Karl-Ivar-Ivarsson, Aladin/ Hirlam all staff meeting Krakow April
Ice Microphysics in CAM
Advisors: Fuqing Zhang and Eugene Clothiaux
H. Morrison, A. Gettelman (NCAR) , S. Ghan (PNL)
The representation of ice hydrometeors in ECHAM-HAM
Integration of models and observations of aerosol-cloud interactions
Atmospheric Modeling and Analysis Division,
Microphysical-macrophysical interactions or Why microphysics matters
Sensitivity of WRF microphysics to aerosol concentration
Constraining the aerosol indirect effect
GCM activities in Ulrike Lohmann’s group
A. Gettelman, X. Liu, H. Morrison, S. Ghan
Short Term forecasts along the GCSS Pacific Cross-section: Evaluating new Parameterizations in the Community Atmospheric Model Cécile Hannay, Dave Williamson,
Recent CCSM development simulations: Towards CCSM4
Integration of models and observations of aerosol-cloud interactions
A Bulk Parameterization of Giant CCN
Global Climate Response to Anthropogenic Aerosol Indirect Effects
Kurowski, M .J., K. Suselj, W. W. Grabowski, and J. Teixeira, 2018
Fields of trade wind congestus
Further use and development of the bin-resolved warm phase LEM
Li, Z., P. Zuidema, P. Zhu, and H. Morrison, 2015
Presentation transcript:

Putting the Clouds Back in Aerosol-Cloud Interactions Gettelman (NCAR) with H. Morrison (NCAR), A. Seifert (DWD, MPI-Met) Summary Conclusions Aerosols affect climate through direct effects of absorption or scattering, and Aerosol-Cloud Interactions (ACI). ACI change the number of cloud drops and resulting microphysical interactions. This study uses idealized and global tests of a cloud microphysics scheme used in global climate models to show that cloud microphysical processes are critical to ACI. Uncertainties in cloud microphysical processes cause uncertainties of up to -35% to +50% in ACI, stronger than uncertainties due to natural aerosol emissions (-20 to +30%). Precipitation processes are critical for understanding ACI and uncertain cloud lifetime effects are 1/3 of simulated ACI. ACI are most sensitive to Cloud microphysics: -35% to +50% (Figure 8). ACI are also sensitive to emissions (-18% to +31%). ACI are correlated with LWP (Figure 7). Lifetime effects are about 1/3 of ACI in CAM5.3 (Figure 6) and in idealized tests (Figure 4). Lifetime effects are ‘prescribed’ due to autoconversion (Figure 4). The mechanism is through cloud cover and LWP changes (Figure 5). Results (A) Idealized Cases Albedo terms (Fig 3) are estimated using differentials between pairs of simulations for changes in albedo (dA), drop number (dNc), Liquid Water Path (dLWP) and cloud cover (dC). LWC Rain Rate Motivation Aerosol (CCN Number) RWC a Microphysical Process rates interact with aerosols by Activation, Autoconversion and Accretion (Fig 1). This will strongly affect ACI. qc, Nc Cloud Droplets (Prognostic) Activation Autoconversion Accretion Au Ac Au = f(qc,Nc-2) Ac = f(qr,qc) Activation (CCN) = f(RH,w) W at cloud scale is critical Autoconversion (loss process) is a function of Nc-2 (=ACI) Accretion depends on qr qr, Nr Rain Figure 3: (A) change in albedo with LWP for different fixed drop number cases. This is used to derive terms in (B) for albedo change, colors indicate different pairs of simulations Figure 2: Idealized Warm Rain Case, oscillating updraft (A) LWC, (B) Rain Rate, (C) Rain Water Content, (D) Albedo, (E) Autoconversion Rate, (F) Accretion Rate. Different colors represent different drop numbers Sedimentation Figure 1: Schematic of warm rain formation ‘Lifetime’ effects are due to autoconversion (Fig 4),not sedimentation. Auto-conversion schemes matter. In this case: through cloud cover. Different Cases: LWP matters in weaker/decaying updrafts for lifetime effects (Fig 5). Methods A) Single A) Lifetime a Terms B) Autoconv a Terms A 2-moment bulk microphysics scheme is used to examine ACI in (A) Idealized tests and (B) Global Climate Simulations Figure 5: Albedo terms with cases as in Figure 4A (removing lifetime effects) for other updraft cases: (A) Single, (B) Oscillating decaying and (C) Weak and shallow oscillating updrafts. Idealized Tests Bulk 2-moment microphysics (Gettelman & Morrison 2015) is run in an idealized model (Shipway & Hill 2012) with different prescribed drop numbers (Nc). Look at changes in albedo (A) due to: (1) Nc, (2) LWP, (3) Cloud Coverage (C): B) Oscillating Decaying C) Weak & Shallow Figure 4: Albedo terms for different cases (A) removing lifetime effects (Autoconversion, Sedimentation, Combination) and (B) different autoconversion schemes (Khairoutdinov & Kogan 2000, Seifert & Behang 2001, Kogan 2013) using an oscillating updraft. Using a simplified albedo: Results (B) GCM Sensitivity Experiments (B) Global Sensitivity Tests The Community Atmosphere Model (CAM) version 5.3 includes an aerosol model, the same cloud microphysics and aerosol activation of cloud drops. Sensitivity tests perturb either cloud microphysics or emissions. ACI and DMicrophysics: Changing Cloud Microphysics changes ACI significantly (Fig 6). Lifetime effects (NoLif) are a large impact. ACI are strongly correlated with DLWP (not DNc.), Fig7. Not correlated with cloud fraction(DCLD) and size (DRe) (not shown). Figure 7: ACI (change in cloud radiative effect, DCRE) v. Change in LWP (%) for sensitivity tests. Green range is due to autoconversion ACI Metric: Change in cloud radiative effects (DCRE) between simulations with 2000 and 1850 aerosol emissions. Autoconversion Figure 6: (A) Zonal mean ACI and (B) zonal mean change in LWP from different sensitivity tests in Table 1 Table 1: CAM sensitivity tests. Green are changes in microphysics, yellow changes in emissions ACI Sensitivity Figure 8: ACI sensitivity (% change in radiative effects) with different sensitivity experiments. Categories: Emissions & Microphysics. Then: Mixed Phase, Autoconversion/Lifetime, Regimes, Prognostic Precip, Activation ACI Sensitvity by category (Fig 8). Emissions sensitivity: -18% to +31% (Similar to Carslaw et al., 2013) Cloud microphysics changes = -35% to +50%. Autoconversion schemes, mixed phase and different regimes (shallow cumulus) are key References Carslaw, KS, LA Lee, CL Reddington, KJ Pringle, A Rap, PM Forster, GW Mann, et al. Large Contribution of Natural Aerosols to Uncertainty in Indirect Forcing. Nature 503, no. 7474 (2013): 67–71. doi:10.1038/nature12674. Gettelman, A., and H. Morrison. Advanced Two-Moment Microphysics for Global Models. Part I: Off Line Tests and Comparisons with Other Schemes. J. Clim. 28, 2015: 1268–87. doi:10.1175/JCLI-D-14-00102.1. Khairoutdinov, M. F., and Y. Kogan. A New Cloud Physics Parameterization in a Large-Eddy Simulation Model of Marine Stratocumulus. Mon. Weather Rev. 128 (2000): 229–43. Kogan, Y. A Cumulus Cloud Microphysics Parameterization for Cloud-Resolving Models. J. Atmos. Sci. 70 (2013): 1423–36. doi:10.1175/JAS-D-12-0183.1. Seifert, A., and K. D. Beheng. A Double-Moment Parameterization for Simulating Autoconversion, Accretion and Selfcollection. Atmos. Res. 59–60 (2001): 265–81. Shipway, B. J., and A. A. Hill. Diagnosis of Systematic Differences between Multiple Parametrizations of Warm Rain Microphysics Using a Kinematic Framework. Quart. Journal of the Royal Met. Soc. 138, no. 669 (2012): 2196–2211. doi:10.1002/qj.1913. Regimes