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Department of Civil, Surveying and Environmental Engineering The University of Newcastle AUSTRALIA Supervisor:Co-Supervisor: Supervisor:Co-Supervisor: Garry WillgooseJetse Kalma Garry WillgooseJetse Kalma Estimating Soil Moisture Profile Dynamics From Near-Surface Soil Moisture Measurements and Standard Meteorological Data Jeffrey Walker
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Importance of Soil Moisture Meteorology Evapotranspiration - partitioning of available energy into sensible and latent heat exchange Hydrology Rainfall Runoff - infiltration rate; water supply Agriculture Crop Yield - pre-planting moisture; irrigation scheduling; insects & diseases; de-nitrification Sediment Transport - runoff producing zones Climate Studies
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Background to Soil Moisture Remote Sensing Satellite Surface Soil Moisture Soil Moisture Sensors Logger Soil Moisture Model [q, D ( ), ( )] f s (z)
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Research Objective Develop a methodology for making improved estimates of the soil moisture profile dynamics Efforts focussed on: Identification of an appropriate soil moisture profile estimation algorithm Remote Sensing for surface soil moisture - volume scattering Observation depth = f (frequency, moisture, look angle, polarisation) Assessment of assimilation techniques Importance of increased observation depth Effect of satellite repeat time Computational efficiency - moisture model/assimilation Collection of an appropriate data set for algorithm evaluation Proving the usefulness of near-surface soil moisture data
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Seminar Outline Identification of an appropriate methodology for estimation soil moisture profile dynamics Near-surface soil moisture measurement One-dimensional desktop study Model development Simplified soil moisture model Simplified covariance estimation Field applications One-dimensional Three-dimensional Conclusions and Future direction
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Literature Review Regression Approach Uses typical data and land use - location specific Knowledge Based Approach Uses a-priori knowledge on the hydrological behaviour of soils Inversion Approach Mainly applied to passive microwave Water Balance Approach Uses a water balance model with surface observations as input
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Water Balance Approach Updated 2-layer model by direct insertion of observations - Jackson et al. (1981), Ottle and Vidal-Madjar (1994) Fixed head boundary condition on 1D Richards eq. - Bernard et al. (1981), Prevot et al. (1984), Bruckler and Witono (1989) Updated 1D Richards equation with Kalman filter - Entekhabi et al. (1994) Updated 2-layer basin average model with Kalman filter - Georgakakos and Baumer (1996) Updated 3-layer TOPLATS model with: direct insertion; statistical correction; Newtonian nudging (Kalman filter); and statistical interpolation - Houser et al. (1998)
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Soil Moisture Profile Estimation Algorithm Initialisation Phase Use a knowledge-based approach â Lapse rate; Hydraulic equilibrium; Root density; Field capacity; Residual soil moisture Dynamic Phase (Water Balance Model) Forecast soil moisture with meteorological data Update soil moisture forecast with observations â Direct insertion approach â Dirichlet boundary condition â Kalman filter approach
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Data Assimilation Direct-Insertion Kalman-Filtering Observation Depth
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The (Extended) Kalman-Filter Forecasting Equations States: X n+1 = A n X n + U n Covariances: n+1 = A n n A n T + Q Observation equation Z = H X + V
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Active or Passive? Passive Measures the naturally emitted radiation from the earth - Brightness Temperature Resolution - 10’s km 100 km (applicable to GCM’s) Active Sends out a signal and measures the return - Backscattering Coefficient More confused by roughness, topography and vegetation Resolution - 10’s m (applicable to partial area hydrology and agriculture)
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The Modified IEM Modified reflectivities Dielectric profile m = 12 gives varying profile to depth 3mm Radar observation depth 1/10 1/4 of the wavelength
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Radar Observation Depth
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E vol /E sur = ? Addressed through error analysis of backscattering equation 2% change in mc 0.15 - 1 dB, wet dry Radar calibration 1 - 2 dB 1.5 dB 0.17
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Application of the Models vv polarisation hh polarisation rms = 25 mm correlation length = 60 mm incidence angle = 23 o moisture content 9% v/v
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1D Desktop Study 1D soil moisture and heat transfer Moisture Equation Matric Head form of Richard’s eq. Assumes: â Isothermal conditions (decoupled from temperature) â Vapour flux is negligible Temperature Equation Function of soil moisture Assumes: â Effect from differential heat of wetting is negligible â Effect from vapour flux is negligible
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Temperature Dependence Low Soil Moisture (5%) Microwave remote sensing is a function of dielectric constant High Soil Moisture (40%)
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Synthetic Data Initial conditions Boundary conditions
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Direct-Insertion Every Hour
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Kalman-Filter Update Every Hour
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Kalman-Filter Update Every 5 Days
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Quasi Profile Observations
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Kalman-Filter Update Every 5 Days
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Volumetric Moisture Transformation
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Summary of Results Continuous Dirichlet boundary condition Moisture 5 - 8 daysTemperature >20 days 10 cm update depth Required Dirichlet boundary condition for 1 hour Required Dirichlet boundary condition for 24 hours ] Moisture Transformation
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A Simplified Moisture Model Computationally efficient -based model Capillary rise during drying events Gravity drainage during wetting events Lateral redistribution No assumption of water table Amenable to the Kalman-filter Buckingham Darcy Equation q = K +K Approximate Buckingham Darcy Equation q = K VDF+K where VDF = Vertical Distribution Factor
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Vertical Distribution Factor Special cases Uniform Infiltration Exfiltration Proposed VDF
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Model Comparison Exfiltration (0.5 cm/day) Infiltration (10 mm/hr)
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Kalman-Filter Update Every 5 Days
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KF Modification for 3D Modelling Implicit Scheme 1 n+1 X n+1 + 1 n+1 = 2 n X n + 2 n State Forecasting X n+1 = A n X n + U n where A n = [ 1 n+1 ] -1 [ 2 n ] U n = [ 1 n+1 ] -1 [ 2 n – 1 n+1 ] Covariance Forecasting n+1 = A n n A n T + Q
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KF Modification for 3D Modelling Covariance Forecast Auto-regressive smooth of 1 and 2 1 n+1 = 1 n + (1 – ) 1 n+1 Estimate correlations from: = A A T where A = [ 1 ] -1 [ 2 ] Reduce to correlation matrix i,j = e where
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Correlation Estimate
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Modified Kalman-Filter Application
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Field Application
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Meteorological Station
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1D Model Calibration/Evaluation
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1D Profile Retrieval - 1/5 Days
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3D Model Calibration 3D Model Evaluation
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3D Profile Retrieval All observations Single Observation
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Summary of Results
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Conclusions Radar observation depth model has been developed which gives results comparable to those suggested in literature Modified IEM backscattering model has been developed to infer the soil moisture profile over the observation depth Computationally efficient spatially distributed soil moisture forecasting model has been developed Computationally efficient method for forecasting of the model covariances has been developed
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Conclusions Require an assimilation scheme with the characteristics of the Kalman-filter (ie. a scheme which can potentially alter the entire profile) Require as linear forecasting model as possible to ensure stable updating with the Kalman-filter (ie. -based model rather than a -based model) Updating of model is only as good as the models representation of the soil physics Usefulness of near-surface soil moisture observations for improving the soil moisture estimation has been verified
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Future Direction Addition of a root sink term to the simplified soil moisture forecasting model Improved specification of the forecast system state variances Application of the soil moisture profile estimation algorithm with remote sensing observations, published soils and elevation data, and routinely collected met data Use point measurements to interpret the near- surface soil moisture observations for applying observations to the entire profile - may alleviate the decoupling problem
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