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Anthropogenic climate change: what we know and don’t know

Anthropogenic climate change: what we know and don’t know. Steven Sherwood Geology and Geophysics Dept. 04/2004. Where did this “global warming” idea come from?. Early, obscure theoretical predictions (~1900) Geologic evidence of large climate changes in the past--why, how?

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Anthropogenic climate change: what we know and don’t know

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  1. Anthropogenic climate change: what we know and don’t know Steven Sherwood Geology and Geophysics Dept. 04/2004

  2. Where did this “global warming” idea come from? • Early, obscure theoretical predictions (~1900) • Geologic evidence of large climate changes in the past--why, how? • Renewed modeling work (~1960+) • Late 20th-century warming that seems to stand above natural variability. • Really Bad Hollywood Movies

  3. What we know for sure (and don’t…?) • CO2, CH4, N2O, halocarbs are IR absorbers and warm the surface: 2 x CO2 (from preindustrial) adds about 4 W m-2. But how much does T go up per W m-2? • CO2 rose 4%/decade since 1980, other gases rising too. But will this stay the same? • Global mean temperature rose by 0.6o C during 20th century. Many indirect indicators of warming (earlier spring blossomings and lake thaws, glacial retreat, melting permafrost, etc. etc.) But did we cause this? • Stratospheric temperatures are falling by ~ 1 C per decade. Due to GHG’s?

  4. What we know for sure (and don’t…?) • CO2, CH4, N2O, halocarbs are IR absorbers and warm the surface: 2 x CO2 (from preindustrial) adds about 4 W m-2. But how much does T go up per W m-2? • CO2 rose 4%/decade since 1980, other gases rising too. But will this stay the same? • Global mean temperature rose by 0.6o C during 20th century. Many indirect indicators of warming (earlier spring blossomings and lake thaws, glacial retreat, melting permafrost, etc. etc.) But did we cause this? • Stratospheric temperatures are falling by ~ 1 C per decade. Due to GHG’s?

  5. (NASA GISS)

  6. What we know for sure (and don’t…?) • CO2, CH4, N2O, halocarbs are IR absorbers and warm the surface: 2 x CO2 (from preindustrial) adds about 4 W m-2. But how much does T go up per W m-2? • CO2 rose 4%/decade since 1980, other gases rising too. But will this stay the same? • Global mean temperature rose by 0.6o C during 20th century. Many indirect indicators of warming (earlier spring blossomings and lake thaws, glacial retreat, melting permafrost, etc. etc.) But did we cause this?Some, but not sure how much: • Regression analysis of last millennium • “GCM” simulations with/without “GHG’s” etc. • “Fingerprint analysis” of modern record

  7. What we know for sure (and don’t…?) • CO2, CH4, N2O, halocarbs are IR absorbers and warm the surface: 2 x CO2 (from preindustrial) adds about 4 W m-2. But how much does T go up per W m-2? • CO2 rose 4%/decade since 1980, other gases rising too. But will this stay the same? • Global mean temperature rose by 0.6o C during 20th century. Many indirect indicators of warming (earlier spring blossomings and lake thaws, glacial retreat, melting permafrost, etc. etc.) But did we cause this? • Stratospheric temperatures are falling by ~ 1 C per decade. Due to GHG’s? Yes, but O3 and H2O contribute strongly.

  8. Stratospheric cooling by GHG’s 2003 Water vapor changes are a key unknown.

  9. What we want to know • “Global warming” is only a first-order metric: we want regional variations, precipitation changes, glacial melt, extreme weather and other consequences! • Alas, even the amount of future global warming is highly uncertain because of uncertainty in • Future CO2 levels, • “Climate senstivity” dT/dln(CO2)

  10. Y2000 US National Assessment: a tale of two models (neither from the US)

  11. Climate sensitivity varies among GCM’s too.

  12. Climate sensitivity: three approaches • Model Problem: skittish model feedbacks. • Empirical, from anthropocene era Problems: confounding aerosol role, natural variations, thermal inertia of oceans • Empirical, from paleoclimate variations Problems: poor understanding of feedbacks, proxy uncertainties. All approaches yield wide sensitivity range. Consensus: • NAS/Charney et al (1977): 1.5-4.5K per 2xCO2 • IPCC/Houghton et al (2001): 1.5-4.5K per 2xCO2

  13. Earth’s energy balance

  14. Why is climate sensitivity so hard to quantify? The solution, for a step change in forcing, is But   h T/Fforce -- depends on the sensitivity! At equilibrium, for small perturbations we have -1.5 (H2O) -1 (ice) ? (clouds) 3.8 Wm-2K-1 qi are variables (water vapor, cloud, ice) that affect F. With no feedbacks, 2xCO2 +1.2K.

  15. Water vapor feedback • Clausius-Clapeyron relation implies saturation vapor pressure of H2O increases 6-17% per K; H2O strongest GHG! • Actual H2O will presumably do same…? • The largest of the feedbacks, and most consistent among models (roughly doubles sensitivity) • Lingering doubts about the possibility of universal model failure? Microscale processes important? Relative humidity sensitive to T? • Need either (a) full-physics model, or (b) a satisfying explanation for RH conservation.

  16. Water vapor feedback One possible heuristic explanation for RH conservation: • Water vapor near saturation in small moist convective regions; • Water vapor mixing ratio conserved as air leaves; • Dynamics maintains constant (small) difference between temperatures in convective and elsewhere; • Transport and horizontal organization of convective regions don’t change much However, one recent numerical experiment raises doubt about constant-RH (Hartmann and Larson 2002).

  17. Modeling of humidity distributions Microphysical parameter  RH mean RH range Horizontal mixing rate 

  18. Cloud feedback • Clouds reduce F by infrared absorption, but increase F by solar reflection. • Net effect is very sensitive to cloud altitude, water content, time of day, position. • No simple rules for predicting these.

  19. Cloud top altitude • Height of upper-tropospheric clouds most important--produced by deep convective storms • Storm height/intensity not well understood; may be controlled by • Buoyant instability of troposphere • Microphysical controls on cloud freezing/ease of raining • Airflow dynamics at “mesoscales” • Thought to be regulated by position of tropopause

  20. An observational study of the Florida region… Deeper clouds over peninsula compared to surrounding oceans, as yet unexplained.

  21. …And a numerical modeling study

  22. Cloud water content, area • Some GCM’s assume water content proportional to saturation vapor pressure…raises …inconsistent with recent observations? • Water content may be limited by ability of droplets to coalesce into raindrops • If so, cloud water content and/or area should be increased by aerosols, but not T. • Aerosols provide sites for cloud condensation -> ”indirect effect” -> current hot topic.

  23. Polluted environment Detailed microphysical simulations Clean environment

  24. Effect is apparent even in the tallest ice clouds, but tangled up with dynamics

  25. What next? • Models seem to be the only hope for reliable estimate of today’s climate sensitivity, at least for a while, though paleoclimate data may prove decisive in verifying conclusions. Reason for hope. My guess: 3K • Models also needed for regional forecasts and impacts/precipitation etc. Currently not up to it. Steady improvement likely--enough? • Model areas that need addressing: too many to list • Evidence of possible model errors: lapse rate changes, inability of most to simulate MJO/ENSO, equatorial “cold tongue”, stratus clouds

  26. Summary • “Climate sensitivity” is only the beginning, but is already quite difficult. Future GHG concentrations also hard to predict. • GCM’s have many weaknesses and are nearly unfalsifiable, but still our main tool. Most available tests are only indirectly relevant to climate change. • Human influence now widely accepted, based on many indirect analysis strategies. • Yale G&G researchers are working on aerosol-cloud impacts, cloud greenhouse trapping, water vapor feedback, land and ecosystem hydrological interactions, ENSO and paleo-ENSO, all tied to the understanding of processes that determine climate sensitivity (and regional and hydrological behavior).

  27. NCAR-GFDL difference due primarily to low cloud response difference

  28. Coupled AOGCM climate changes Allen and Ingram, 2002

  29. 1) Remote effects of tropical SST Hoerling and Kumar 2003

  30. Reasons for global influence of tropics 1) Isentropic surfaces 2) Diabatic overturning 3) Waves/PNA

  31. 2) Aerosol “direct effect” JJA SSA=0.85 Menon et al. 2002 JJA SSA=1.00

  32. Rosenfeld, 2000

  33. Understanding the competition… Larger (or more hydrophilic) particles are more appealing to water vapor molecules, hence activate sooner. “Wal-Mart” effect: more small               •                   •     more large          

  34. Ocean-atmosphere influences Warm surface -> clouds but surface responds to heat input 1996 (NOAA)

  35. A really simple model of tropical air-sea interaction T = Sea surface temperature anomaly C = Cloud cover anomaly FC, FT = stochastic forcings 0,1, = positive constants (0.15, 0.5, 0.15)

  36. Unpredictable atmosphere, obedient ocean (e.g. West Pacific Warm pool!) Regression slope depends crucially on magnitudes of FT and FC! Obedient atmosphere, unpredictable ocean (e.g. East equatorial Pacific)

  37. Coupled OAGCM (NCAR PCM) simulation Following Lindzen et al. 2001

  38. Can feedbacks be “observed”? • In this case, ocean-atmosphere interactions render the interpretation qualitatively sensitive to the underlying statistical model of the system. • In general, previous attempts to observe feedbacks/sensitivity of poorly understood climate components do not appear to work. • Other options are possible: • fluctuation-dissipation • “fitted meta-parameterizations.”

  39. Summary: what we know about variations of • Global mean P • climate warming , • atmospheric absorbers . • Regional P • SST, absorbing aerosols (nonlocal dynamical)  or , • CCN aerosols (local microphysical)  or . • Humidity • CCN aerosols (local microphysical)  in stratosphere, • Temperature effects? Don’t know yet, but significant magnitude is increasingly doubtful (e.g. Pinatubo experiment, Soden et al 2002). • Clouds, their role in global sensitivity • not much (but low clouds probably more important).

  40. “Global warming” climate sensitivity to CO2 etc. • Original calculation (Ahrrenius 1896) within range of current uncertainty • In GCM’s, main uncertainty is due to model differences in cloud cover response (sea ice also important) • Cess 1989: factor of three uncertainty among models (most crude by today’s standards) • Cess 1996: range narrowed significantly as sophistication increases • 2003: more “improvements”; range broadening again? • Key problem: no theory for cloud cover or cloud properties.

  41. 2003 Model intercomparison

  42. Infrared emission Solar albedo

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