Title: Largescale estimates of changes in terrestrial water storage
1Large-scale estimates of changes in terrestrial
water storage using streamflow measurements and
ERA-40 reanalysis data Sonia Seneviratne GMAO
Seminar, February 5, 2004
2Acknowledgements
- Martin Hirschi, Daniel Lüthi, and Christoph Schär
- Atmospheric and Climate Science ETH, ETHZ,
Zurich, Switzerland - Pedro Viterbo
- European Centre for Medium-Range Weather
Forecasts, Reading, UK
3Outline
- Motivation
- Combined water-balance approach
- Validation study for the Mississippi River basin
- Results for Europe and Asia
- Other applications
- estimation of ET
- possible interactions with projects at NASA/GSFC
- Conclusions
4Motivation (1)
- What is terrestrial water storage?
- Soil moisture
- Groundwater
- Snow cover
- Land ice, surface water,
- biospheric water,
5Motivation (2)
Why is it important?
- Risks of droughts and floods agriculture
freshwater supply
- Importance within climate system
- Critical for NWP, seasonal predictions,
- and long-term climate simulations
- Land-atmosphere feedbacks
- Memory component
6Motivation (3)
- There are however only very few observations of
terrestrial water storage and its components
Global Soil Moisture Data Bank (Robock et al.
2000)
7Motivation (4)
- and the indirect datasets available (reanalysis
data, model-computed values) do often not agree
with one another
Seneviratne, 2003
Validation of GSWP1 simulations, Entin et al. 1999
8Water-Balance Approach (1)
- Terrestrial water balance
- Atmospheric water balance
measured streamflow (RsRg)
9Water-Balance Approach (2)
- The contributions of the liquid and solid phases
of atmospheric water are negligible
- The measured streamflow includes both the
contributions of surface and groundwater runoff
- Atmospheric water balance estimations are
accurate only for domains gt 105-106 km2
(Rasmusson 1968, Yeh et al. 1998)
10Water-Balance Approach (3) Summary
- Changes in terrestrial water storage (dS/dt) in a
given river basin can be estimated as the sum of
three terms
Convergence of the vertically integrated
water vapour flux
Reanalysis data
Change in column storage of water vapour
Observations
Measured streamflow
- The estimates depend only on observed or
assimilated variables (? P,E)
11Employed Data
- ERA-40
- ECMWF reanalysis data
- (completed in 2003)
- USGS (US Geological Survey)
- GRDC (Global Runoff Data Center)
12ERA-40 Reanalysis Project (1)
- reanalysis data from 1957-2002
Satellite period (1989-2001)
Pre-satellite period (1958-1972)
ECMWF
13ERA-40 Reanalysis Project (2)
- Resolution
- horizontal resolution 112 km
- 60 vertical levels
- (high resolution in the lower troposphere)
- Data assimilation
- 3D assimilation system
- 6-hour analysis cycle
Assimilation increment
time (GMT)
14Case Study Mississippi River Basin
- Seneviratne et al. 2004, J.Climate, in press
- Validation against
- observations in Illinois
- (soil moisture,
- groundwater and snow)
1) Arkansas-Red (6.105 km2) 2) Missouri (13.105
km2) 3) Upper Mississippi (5.105 km2) 4)
Ohio-Tennessee (5.105 km2) 5) Lower Mississippi
(4.105 km2) 6) Illinois (2.105 km2)
Adapted from Betts et al. 2003
15Illinois Validation Data (1)
- Soil moisture
- 19 sites, 1-2 measurements per month
- (Illinois State Water Survey)
-
- Groundwater (ISWS)
- 17 sites, 1 measurement per month
- (Illinois State Water Survey)
-
- Snow
- 32 stations (less than 10 missing data), daily
data - (Midwest Climate Center)
-
16Illinois Validation Data (2)
The contributions of the snow cover are
negligible
- The variations in groundwater and soil moisture
are of similar magnitude and clearly correlated
Terrestrial water storage components mm
Monthly variations mm/d
17Validation (1) Monthly Variations
Water-balance Estimates
- Extremes are also well captured
- Excellent agreement in most years
- Only significant discrepancy in year with
highest recycling ratio (Bosilovich and Schubert
2001)
Observations (soil moisture groundwatersnow)
drought years
flood year
18Validation (2) Climatology
19Validation (3) Correlation
corr 0.84 slope 0.82
20Estimates Mississippi Climatologies
10-year Mean Water-Balance Components mm/d
Upper Mississippi
Missouri
Arkansas-Red
Illinois
Whole Mississippi
Ohio-Tennessee
21Estimates Interannual Variability
Monthly Water-Balance Components mm/d
Arkansas-Red
Missouri
Upper Mississippi
Ohio-Tennessee
Illinois
Whole Mississippi
22Estimates Monthly Variations
- Excellent agreement with observations in Illinois
- The mean climatology and the interrannual
variability of the computed monthly variations
dS/dt appear realistic for all subbasins
- Some characteristical regional features are
recognizable (e.g. Ohio-Tennessee)
23Temporal Integration (1)
- Is it possible to integrate the estimates in
order to obtain ? -
- Seasonal changes in terrestrial water storage
-
- Values of absolute terrestrial water storage
-
24Temporal Integration (2)
- Seasonal Changes (4-6 months)
- correlation is in general high
- but decreases for longer time ranges
Computed mean (1987-1996) seasonal change in
terrestrial water storage vs observations
(Illinois)
25Temporal Integration (3)
Observations (Illinois)
Integrated estimates
- Integration over longer time ranges is not
straightforward due to the presence of small
systematic imbalances in the monthly estimates
Comparison with imbalances from other
water-balance studies
G97 Gutowski et al. 1997 Y98 Yeh et al.
1998 BR99 Berbery and Rasmuson 1999
26Temporal Integration (4) Detrending
Absolute terrestrial water storage (observed and
estimated)
- A simple detrending yields good estimates of
absolute terrestrial water storage
Assumptions - mean annual dS/dt 0 - April
value set to climatological value
27Summary of Validation Study
- The tested methodology yields excellent estimates
of monthly changes in terrestrial water storage
- With an appropriate detrending, absolute
terrestrial water storage can also be estimated
possible dataset of changes in terrestrial water
storage for all major river basins for 1958-2002
28Application to Northern River Basins
- Hirschi et al. 2004, in preparation
- - whole ERA-40 period (1958-2002)
- - runoff data Global Runoff Data Center (GRDC)
29Comparisons with soil moisture observations
Neva (1960-91)
Ob (1987-88)
dS/dt (Water-balance estimates)
Hirschi et al. 2004
dSM/dt (Soil moisture observations)
groundwater, snow ?
30Long-term Imbalances (1)
- The accuracy of the computed water balances
depends - both on domain size and on regional
characteristics
?
Rasmusson (1968) threshold for radiosonde data
(2.106 km2)
Imbalances (mm/d)
Illinois (2 .105 km2)
Europe Western Russia Asia North America
Domain size (km2)
Hirschi et al. 2004
31Long-term Imbalances (2)
- The accuracy of the computed water balances
- depends critically on the domain size.
- However, the critical domain size might be lower
- for reanalysis data (Illinois 2.105 km2)
than for - radiosonde data (Rasmusson 1968)
- and might also depend on regional
characteristics - (climate, density of radiosonde data,
topography?).
32Other applications
- Estimation of Large-scale Evapotranspiration
Atmospheric water balance
Mackenzie GEWEX Study (MAGS)
Louie et al. 2002
33(monthly) evaporation in Southern Europe
ERA-40 6 hour forecasts
- Aerological estimate of evaporation has a much
larger interannual variability (and larger values
in summer) than model evaporation
34More applications
- Model assessment and validation
- - Catchment models
- - Offline surface model results
- Terrestrial water storage memory
- - Are there some correspondences with soil
moisture memory computed with GCMs? - - Slope of Evapotranspiration vs Soil Moisture
- Soil moisture data assimilation
- -Assessment of satellite vs model soil moisture
data
- Comparison with GRACE data and gravimetry
measurements at the ground
35Conclusions
- The combined water-balance approach is a
promising tool for estimating large-scale changes
in terrestrial water storage
- Some limitations
- Domain size needs to be at least gt 2.105 km2
- A detrending is needed for the estimation of
absolute water storage - Additional validation data would be needed in
order to test this approach for other regions
- Nonetheless, the possible applications and uses
are numerous given the dearth of observations of
terrestrial water storage and its components