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Recent applications of GRACE gravity data for continental hydrology . Andreas Güntner Helmholtz Centre Potsdam GFZ German Research Centre for Geosciences. Water storage variations from time-variable gravity data. Temporal variations of the gravity field of the Earth
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Recent applications of GRACE gravity data for continental hydrology Andreas Güntner Helmholtz Centre PotsdamGFZ German Research CentreforGeosciences
Water storage variations from time-variable gravity data • Temporal variations of the gravity field of the Earth • Water mass variations on the continents after removal of other mass components ΔS = P - Q - E • S: Water storage changeP: Precipitation • E: Evaporation • Q: Runoff Only integrative and large-scale measurement of ΔS for hydrology
11/2011: About200ISI paper on GRACE and continental hydrology Main focus of GRACE hydrology papers
11/2011: About200ISI paper on GRACE and continental hydrology Studies on water storage variations for particular river basins
Water cycle components from GRACE data - Resolving for evapotranspiration ET = P - Q - ΔS Ground and/or satellite-based data GRACE
Water cycle components from GRACE data - Resolving for evapotranspiration ET = P - Q - ΔS Hai River Basin, North China (320 000 km²) ETWH: Model-basedET using remote sensing data ETGP: GRACE-based ET Moiwo et al. (2011), Hydr.Sci.J.
Atmospheric water balance ΔS = P – Q - ET ΔW = C + ET - P Water cycle components from GRACE data - Resolving for continental runoff Terrestrial water balance Combined atmospheric-terrestrial water balance Q = -ΔW + C- ΔS S Land water storage changeP Precipitation ET Evaporation Q Runoff W Atmospheric water storage change C Water vapour convergence
Water cycle components from GRACE data - Resolving for continental runoff Total continental discharge of the Pan-Arctic drainage area + includes ungauged river basins + includes groundwater discharge into oceans Syed et al. (2007), GRL
Water storage variations from time-variable gravity data GRACE-based total water storage variations ΔTWSGRACEare a compositeofvariouscontinentalwaterstoragecompartments ΔTWSGRACE=ΔSgroundwater+ ΔScanopy+ΔSsnow+ΔSsoil+ΔSlakes+ΔSwetlands+ΔSriver
GRACE hydrology studies with focus on lake water balances • 9 studies among 200 ISI papers on GRACE and continental hydrology (11/2011)
GRACE hydrology studies with focus on surface water dynamics(river flow, floodplains, inundation areas) • 15 studies among 200 ISI papers on GRACE and continental hydrology (11/2011)
GRACE hydrology studies with focus on inland glaciers • 13 studies among 200 ISI papers on GRACE and continental hydrology (11/2011)
GRACE hydrology studies with focus on groundwater storage variations • 25 studies among 200 ISI papers on GRACE and continental hydrology (11/2011)
Water storage variations from time-variable gravity data Resolving GRACE-based total water storage variations ΔTWSGRACEforsinglestoragecompartments ΔSgroundwater=ΔTWSGRACE+ ΔScanopy+ΔSsnow+ΔSsoil+ΔSlakes+ΔSwetlands+ΔSriver • Other compartments can usually be estimated based on hydrological / land surface model data only • Other compartments may not be fully accounted for in models • Uncertainties / errors accumulate in the variable of interest
Water storage compartments from hydrological modelsfor GRACE TWS signal separation WaterGAPGlobal Hydrology model (WGHM) ΔTWS = ΔScanopy + ΔSsnow+ΔSsoil+ ΔSgroundwater+ΔSrivers + ΔSlakes/reservoirs + ΔSwetlands Soildepth = rootzone ISBA-TRIP ΔTWS =ΔScanopy +ΔSsnow+ΔSsoil+ ΔSgroundwater+ ΔSrivers Soildepth = rootzone + deepsoillayer Global Land Data Assimilation System (GLDAS) ΔTWS =ΔScanopy + ΔSsnow+ΔSsoil Soildepth GLDAS-CLM = 3.43 m GLDAS-MOSAIC = 3.50 m GLDAS-NOAH = 2.00 m GLDAS-VIC = 1.90 m
Relevance of deep unsaturated zone water storage for GRACE TWS signal separation Snow Local gravity effect of water storage compartments Station Wettzell / Germany Soil 0-30cm Unsaturated zone Soil 30-150cm Saprolith 1.5 – 11m Groundwater > 11m Hydrological gravity effect Superconducting gravimeter residuals Creutzfeldt et al., 2010, WRR; Creutzfeldt et al., GJI, 2010
Example: Water storage variations in Central Asian Mountains Total studyarea:500 000 km²
Example: Water storage variations in Central Asian Mountains Total studyarea:500 000 km² Can we estimate glacier mass changes from GRACE? Source: GGHYDRO (Cogley, 2003)
Isolation of single water storage compartmentsfrom GRACE TWS data • Selection of GRACE product (processing type and centre, filtering) • Compensation for filter effects (smoothing, leakage) • Estimating correction function (e.g. rescaling factor) • Hydrological models • Reduction of unwanted hydrological signal components • Analysis of residuals
Isolation of single water storage compartmentsfrom GRACE TWS data • Selection of GRACE product (processing type and centre, filtering) • Compensation for filter effects (smoothing, leakage) • Estimating correction function (e.g. rescaling factor) • Hydrological models • Reduction of unwanted hydrological signal components • Analysis of residuals and error assessment Ensemble of GRACE products
Compensation for filter effects Multiplicativescalingfactorderivedfrom least-squareadjustment • Mainly sensitive to seasonal dynamics • Leakage effects (e.g. phase shifts) are not compensated • Rescaling functions depend on the hydrological model used • Rescaling functions may not apply for the variable of interest
Compensation for filter effects: example Central Asia Multiplicativescalingfactorderivedfrom least-squareadjustment G300/G500: Gauss filter 300/500 km. DDK: Decorrelation filter by Kusche (2007)
Compensation for filter effects: example Central Asia Multiplicativescalingfactorderivedfrom least-squareadjustment G300/G500: Gauss filter 300/500 km. DDK: Decorrelation filter by Kusche (2007)
Isolation of single water storage compartmentsfrom GRACE TWS data • Selection of GRACE product (processing type and centre, filtering) • Compensation for filter effects (smoothing, leakage) • Estimating correction function (e.g. rescaling factor) • Hydrological models • Reduction of unwanted hydrological signal components • Analysis of residuals and error assessment Carefully consider particular region and model differences´ (e.g., Werth et al. 2009,Longuevergne et al. 2010) Ensemble of GRACE products
Reducing GRACE mass variations in Central Asian Mountainsby water storage from hydrological models • 7 GRACE products • 5 different filters • 6 different rescalingvaluesforeach filter • 6 different LSMs / hydrologicalmodelsforsignalseparation • → bootstrappingapproach
GRACE mass variations in Central Asian Mountains after reducing for model-based TWS Trend-0.2 ± 5.7 mm/a 792 realisationof different plausible GRACE products, rescalingfactorsandhydrologicalreductionmodels
GRACE mass variations in Central Asian Mountains after reducing for model-based TWS Trend+13.9 mm/a Trend-12.8 mm/a 792 realisationof different plausible GRACE products, rescalingfactorsandhydrologicalreductionmodels
Conclusions and perspectives • Caveats in using single GRACE products, filter and correction methods or hydrological model data sets→ use ensemble approach • Multi-sensor applications of GRACE (in conjunction with, e.g., altimetry, satellite-based snow, soil moisture and ET products) for assessing dynamics of continental hydrology and signal decomposition • Extended use of GRACE to inform structure and parameterization of land surface / hydrological models