Title: Earth system model limitations
 1Earth system model limitations
Graeme L Stephens Dept Atmospheric Sciences 
Colorado State University Ft Collins, CO USA 
 2- Climate system models seek to represent a range 
of complex processes.  - Models are an important tool in developing our 
understanding of the Earth climate system.  - Observations are essential for testing and 
building this understanding  - What has emerged are four levels of model 
evaluation  -  comparison to observed climate change (global 
and regional)  -  comparison to observed modes of variability on 
many scales  -  evaluation of critical climate processes 
 -  evaluation of abrupt system changes (such as 
shifts in weather regimes,)  
Examples from IPCC FAR 
 3Atmosphere-ocean general circulation climate 
models (AOGCMs)
Resolved scale O(100-200km)
Intrinsic scale - Few kms ? mircoscale
Unresolved, parameterized processes largely 
determine model sensitivities through feedbacks 
and even determine the amount, distribution and 
change in essential climate parameters - notably 
precipitation.  
 4Simulating observed global climate change
On the global scale agreement is impressive but 
suspicions about the degree of tuning of 
feedbacks linger 
 5Water vapor feedback (process)
Two (related) modes to this feedback 
 6Observed Elements Water vapor feedback
Clear-sky ocean obs
SST
W
Clear-sky OLR
 A measure of feedback  0.0027/0.0012 
 2.3 ? 1.0 
i.e. we have observed a strengthening of the 
clear-sky Greenhouse effect -  1/3 of it is 
due to CO2 increases, and 2/3 is due to water 
vapor increase (a positive feedback) 
 7Water vapor feedback in the FAR models
- From observation, f2.3?1.0 - model feedback 
strength is similar so it appears on the global 
scale the feedback in models is credible 
AR4-1pctto2x
- Stronger feedback exists in models with amplified 
UT moistening (UT warming) 
f
- The warmest models are those that exhibit greater 
UT moistening 
  8The good
On the global-mean scale - model projected 
changes of selected climate parameters 
(temperature, water vapor) and feedbacks between 
them appear to be consistent with observed 
changes over the past 20-100 yrs 
Global warming 
sign 
 9Regional patterns of climate
FAR
Agreement on this scale is less convincing - 
credible for some parameters (like surface air 
temperature) but not for others (like 
precipitation)  
 10Projected precipitation changes by FAR Models
-  Increasing levels of greenhouse gaseswarm the 
climate and lead to increasesin very heavy 
precipitation events in a global mean sense 
Why Global increases to precipitation are 
determined by changes to the energetics of the 
atmosphere (and less so by increased water vapor 
in the air). Why this change occurs as an 
increase in the heavier events is not understood. 
 11Observed changes
-  From 1908-2002 
 -  Total annual precipitation across the contiguous 
U.S. increased 7  -  Precipitation falling in very heavy daily events 
increased by 20  -  Warmer climates get more rainfall in extreme 
events compared to colder climates - this is 
consistent with model projections 
10
Confidence Index
0
Courtesy T Karl 
 12Not so good FAR Projected regional changes
Difference maps - years 60-70 minus years 1-10
These projections suggest that the haves get more 
and the have-nots get less - these patterns are 
largely determined by the patterns of changing 
atmospheric circulation 
Change in precip (mm/day) 
 13The bad FAR Projected regional changes
Agreement on the regional scale is approching a 
credible level for some parameters (like surface 
air temperature). For others (like precipitation) 
 there is still much to be understood (why more 
intense, how much does large-scale circulation 
control regional precip changes, etc) before 
confidence can be assigned 
Global Precip increases
Global intensity 
 14How well is the link between dynamics and 
precipitation understood  modeled?
The MJO is a mode of variability on the timescale 
of 30-60 days and dramatically effects global 
weather The MJO encapsulates many of the 
couplings between the physics (convection, 
radiation, etc) and large-scale dynamics thought 
important to key climate feedbacks.  
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 16850 hPa zonal wind anomaly derived from weather 
analysis 
 17After March 1st the model is run in free mode - 
ie this is the model predicted state  the MJO 
disappears 
 18The nature of tropical convection in AOGCMs 
AOGCMs indiscriminately produce deep convection 
everywhere all the time - the precipitation of 
models is also heavily biased to deep convection 
whereas the new observations tell us 
otherwise As a consequence convection cannot 
become organized by the large-scale flows of the 
MJO, does not add heat to the atmosphere in the 
correct way, and cannot feedback on the MJO to 
sustain it. 
 19 The ugly
New observations are beginning to reveal the 
unrealistic nature of convection in models and 
hint at why fundamental modes of variability are 
not predicted. The representation of the 
hydrological cycle, and precipitation (and cloud) 
physics specifically, is disturbingly simple 
being defined by empirical, conceptual 
parameterizations that do not resolve the basic 
physical processes of importance. 
 20 Model evolution in the coming decade
In an attempt to put the important 
hydrological-related processes on firmer ground, 
the evolution of atmospheric models is moving 
from coarse-scale (O(200km)) to global cloud 
resolving models of O(few kms).
NICAM example 3.5 km on the Earth Simulator 
 21Backups 
 22Dynamics and the bulk transport of heat poleward 
 23For the most part, AOGCMs well represent these 
transports  there is a significant improvement 
between TAR  FAR 
 24Soden and Fu, 1995
UTH correlates with frequency of deep convection 
(tropics) Therefore the feedback amplifier 
presumably relates to convection in some way 
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