Title: NCAS-Climate Talk
1Current Changes in the Global Water Cycle
- Richard P. Allan
- Diffusing slowly to Met Department/NCAS-Climate
from ESSC - Thanks to Brian Soden, Viju John, William Ingram,
Peter Good, Igor Zveryaev, Mark Ringer and Tony
Slingo
2Introduction
Observational records and climate projections
provide abundant evidence that freshwater
resources are vulnerable and have the potential
to be strongly impacted by climate change, with
wide-ranging consequences for human societies and
ecosystems. IPCC (2008) Climate Change and Water
3How should the water cycle respond to climate
change?
Precipitation Change () relative to 1961-1990 2
scenarios, multi model (IPCC, 2001)
See discussion in Allen Ingram (2002) Nature
Trenberth et al. (2003) BAMS
4Climate model projections (IPCC 2007)
- Increased Precipitation
- More Intense Rainfall
- More droughts
- Wet regions get wetter, dry regions get drier?
- Regional projections??
Precipitation Intensity
Dry Days
Precipitation Change ()
5Physical basis energy balance
Trenberth et al. (2009) BAMS
6Models simulate robust response of clear-sky
radiation to warming (2-3 Wm-2K-1) and a
resulting increase in precipitation to balance
(3 K-1) e.g. Allen and Ingram (2002)
Nature, Stephens Ellis (2008) J. Clim, Lambert
and Webb (2008) GRL
Allan (2009) J Clim
Radiative cooling, clear (Wm-2K-1)
7Physical basis water vapour
- Clausius-Clapeyron
- Low-level water vapour (7/K)
- Intensification of rainfall
- Moisture transport
- Enhanced P-E patterns
- See Held and Soden (2006) J Clim
1979-2002
8Evaporation
Richter and Xie (2008) JGR
CC Wind Ts-To RHo
Muted Evaporation changes in models are explained
by small changes in Boundary Layer1) declining
wind stress2) reduced surface temperature lapse
rate (Ts-To)3) increased surface relative
humidity (RHo)
9Current changes in the water cycle As observed
by satellite datasets and simulated by models
10Current changes in tropical ocean column water
vapour
John et al. (2009)
Water Vapour (mm)
models
AMIP3 CMIP3 CMIP3 volc
Allan (2009)
despite inaccurate mean state, Pierce et al.
John and Soden (both GRL, 2006) - see also
Trenberth et al. (2005) Clim. Dyn., Soden et al.
(2005) Science
ERA40 NCEP ERAINT SSM/I
11Tropical ocean precipitation
- dP/dSST
- GPCP 10/K (1988-2008)
- AMIP 3-11 /K (1979-2001)
- dP/dt trend
- GPCP 1/dec
- (1988-2008)
- AMIP 0.4-0.7/dec
- (1979-2001)
- (landocean)
SSM/I GPCP
12Wet (ascent) and Dry (descent) regimes
GPCP Ascent Region Precipitation (mm/day)
- Robust response wet regions become wetter at
the expense of dry regions - Large uncertainty in magnitude of change
satellite datasets and models time period
TRMM
John et al. (2009) GRL
13Contrasting precipitation response in wet and dry
regions of the tropical circulation
ascent
Models
Observations
Precipitation change ()
descent
Sensitivity to reanalysis dataset used to define
wet/dry regions
Updated from Allan and Soden (2007) GRL
14Avoid reanalyses in defining wet/dry regions
- Sample grid boxes
- 30 wettest
- 70 driest
- Do wet/dry trends remain?
15Current trends in wet/dry regions of tropical
oceans
- Wet/dry trends remain
- 1979-1987 GPCP record may be suspect for dry
region - SSM/I dry region record inhomogeneity 2000/01?
- GPCP trends 1988-2008
- Wet 1.8/decade
- Dry -2.6/decade
- Upper range of model trend magnitudes
DRY WET
Models
16Precipitation Extremes
- Trends in tropical wet region precipitation
appear robust. - What about extreme precipitation events?
- Analyse daily rainfall over tropical oceans
- SSM/I satellite data, 1988-2008
- Climate model data (AMIP experiments)
- Create monthly PDFs of rainfall intensity
- Calculate changes in the frequency of events in
each intensity bin - Does frequency of most intense rainfall rise with
atmospheric warming?
METHOD
17Increases in the frequency of the heaviest
rainfall with warming daily data from models and
microwave satellite data (SSM/I)
Reduced frequency Increased frequency
Updated from Allan and Soden (2008) Science
18- Increase in intense rainfall with tropical ocean
warming (close to Clausius Clapeyron) - SSM/I satellite observations at upper range of
model range
No apparent link to convection scheme? What about
CMIP experiments? e.g. Turner and Slingo (2009)
ASL
19One of the largest challenges remains improving
predictability of regional changes in the water
cycle
Changes in circulation systems are crucial to
regional changes in water resources and risk yet
predictability is poor.
How will catchment-scale runoff and crucial local
impacts and risk respond to warming?
20Precipitation in the Europe-Atlantic region
(summer) Dependence on NAO
21Current changes in the water cycle over
Europe-Atlantic region
Water vapour Precipitation
22Outstanding issues
- Are satellite estimates of precipitation,
evaporation and surface flux variation reliable? - Are regional changes in the water cycle, down to
catchment scale, predictable? - How well do models represent land surface
feedbacks. Can SMOS mission help? - How is the water cycle responding to aerosols?
- Linking water cycle and cloud feedback issues
23Extra Slides
24Conclusions
- Robust Responses
- Low level moisture clear-sky radiation
- Mean and Intense rainfall Observed
- precipitation response at upper end of model
range? - Contrasting wet/dry region responses
- Less Robust/Discrepancies
- Moisture at upper levels/over land and mean state
- Inaccurate precipitation PDFs
- Magnitude of change in precipitation in satellite
datasets/models - Further work
- Decadal changes in global energy budget, aerosol
forcing effects and cloud feedbacks links to
water cycle - Precipitation and radiation balance datasets
forward modelling - Surface feedbacks ocean salinity, soil moisture
(SMOS?) - Boundary layer changes and surface fluxes
25Wet
Dry
DISCUSSION
dPw/dT7/K
dPd/dT
Assume wet region follows Clausius Clapeyron
(7/K) and mean precip follows radiation
constraint (3/K)
Pw6 mm/day
Pd1 mm/day
A0.4
(1-A)0.7
P3 mm/day
dP/dT3/K
A is the wet region fractional area P is
precipitation T is temperature
26Wet
Dry
dPw/dT7/K
dPd/dT
Assume wet region follows Clausius Clapeyron
(7/K) and mean precip follows radiation
constraint (3/K) dP/dT A(dPw/dT)(1-A)(dPd/dT)
? dPd (dP-AdPw)/(1-A)
Pw6 mm/day
Pd1 mm/day
A0.4
(1-A)0.7
P3 mm/day
dP/dT3/K
A Pw Pd dPd/dTs (mm/day/K) (/K)
0.4 0.2 6 9 1 1.5 -0.1 -0.05 -10 -4.5
0.1 10.5 2.2 0.02 0.9
A is the wet region fractional area P is
precipitation T is temperature
27SMOS ESAs SMOS (Soil Moisture and Ocean
Salinity) launched November 2009
Evaporation changes over land are not globally
measured. New data on soil moisture could be
vital in understanding changes in evaporation and
regional water cycle feedbacks over land. The
addition of ocean salinity measurements are also
of potential value in understanding P-E changes
and ocean circulating response
Courtesy of Ian Davenport
28Cloud Feedback
- Can HadIR provide any information on cloud
feedback - For example, the FAT hypothesis (fixed anvil
temperature) - Anvil outflow determined by position of zero
radiative cooling - which is determined by the rapid decline in
water vapour with altitude - which is determined by Clausius Clapeyron
- Hypothesis As temperature rises, outflow rises
in altitude but not temperature which remains
fixed - e.g. Hartmann and Larson (2003) Zelinka and
Hartmann in press
29Are the issues of cloud feedback and the water
cycle linked?
2008
30Response of the hydrological cycle is sensitive
to the type of forcing
Andrews et al. (2009) J Climate
Partitioning of energy between atmosphere and
surface is crucial to the hydrological response
this is being assessed in the PREPARE project
31How does UTH respond to warming?
Minschwaner et al. (2006) J Clim
Lindzen (1990) BAMS
Mitchell et al. (1987) QJRMS
32Precipitation projections (IPCC)
Radiation budget, hydrological cycle and climate
feedbacks
Decadal changes in water vapour, precipitation
and its extremes are beginning to be detected
Precip. ()
Allan and Soden (2008) Science