Assessment of Evapotranspiration and Soil Moisture Content Across Different Scales of Observation
Abstract
:- (i)
- a summary of the generally accepted cohesion theory of plant water uptake and transport including a shortlist of meteorological and plant factors influencing plant transpiration;
- (ii)
- a summary on evapotranspiration assessment at different scales of observation (sap-flow, porometer, lysimeter, field and catchment water balance, Bowen ratio, scintillometer, eddy correlation, Penman-Monteith and related approaches);
- (iii)
- a summary on data assimilation schemes conceived to estimate evapotranspiration using optical and thermal remote sensing; and
- (iv)
- for soil moisture content, a summary on soil moisture retrieval techniques at different spatial and temporal scales is presented.
1. Introduction
1.1. The significance of evapotranspiration and soil moisture content
1.2. Descriptions of evapotranspiration and soil moisture content
- (i)
- A summary of the theory of plant water uptake and transport and the presentation of a shortlist of environmental factors influencing plant transpiration;
- (ii)
- A summary of ET assessment methods at different spatial scales, with a discussion on pro's and con's in different applications;
- (iii)
- A summary of SMC assessment methods at different spatial scales, with a discussion on pro's and con's in different applications;
- (iv)
- An account on the linkage of ET and SMC assessment approaches with existing remote sensing techniques.
2. Notions on crop water consumption
2.1. The water pathway in plants from the physiological point-of-view: Cohesion Theory
- (i)
- driving force;
- (ii)
- hydration (adhesion) and;
- (iii)
- cohesion of water.
2.2. Quantification of evapotranspiration
- K is a turbulence factor [m2 s-1];
- E is the amount of water evaporated [m s-1];
- dC dz-1 the concentration gradient [10-3 kg m-3 m-1].
- f(va) is a function of wind speed [m s-1 millibar-1];
- va is wind speed [m s-1];
- es is the vapour pressure in the saturated region of a water surface [millibar];
- ea is the vapour pressure in the atmospheric space above the saturated region [millibar].
- LE is the latent heat to vaporize a specific amount of water, usually expressed in [W m-2];
- ρw is water density [kg m-3];
- λ is the latent heat of vaporization (2,260 at 100 °C) needed to transfer water from its liquid to its vapour phase [kJ kg-1];
- E is the amount of evaporated water (flux) expressed in [m3 m-2 s-1] or [m s-1].
2.3. Crop water relationships
3. Evapotranspiration assessment techniques at different scales of observation
3.1. The conservation laws
- P is the amount of rainfall [mm d-1];
- CR is the capillary rise from the groundwater table [mm d-1];
- Irr is the irrigation dose [mm d-1];
- ET is evapotranspiration [mm d-1];
- R is runoff [mm d-1];
- D is drainage [mm d-1];
- and S is the storage of water in the soil compartment [mm d-1].
- Rn is net radiation (net short and net long wave) [W m-2];
- G0 is the subsurface heat flux [W m-2];
- S is the rate of heat storage in the plant canopy [W m-2];
- H is the sensible heat flux [W m-2];
- λE is the latent heat flux [W m-2];
- λ is the latent heat of vaporization of water, approximately 2,450 J g-1 H2O at 20°C;
- and E is evapotranspiration [g H2O m-2 s-1].
3.2. Point / leaf / plant and field scale transpiration and evapotranspiration estimation
3.2.1. Estimation of transpiration based on Sap-flow measurements
3.2.2. Estimation of transpiration based on Porometer measurements
- (i)
- the increase of humidity within a closed chamber attached to the leaf, or;
- (ii)
- with a steady state porometer that maintains a constant humidity in a measuring chamber by matching a flow of dry atmospheric to balance water vapour loss from the enclosed leaf. Water vapour loss from the chamber by atmospheric flow equals the gain in water vapour by transpiration (mass conservation principle). The instrument calculates the amount of water vapour outflow from measured atmospheric flow, relative humidity, and temperature and corrects for the known leaf area in the cuvette to give transpiration per unit leaf area. Porometers are used to determine leaf stomatal conductance but one may also be tempted to extrapolate measurements on a single leave to a whole canopy, when knowing total leaf area.
3.2.3. Estimation of evapotranspiration based on a lysimeter
3.2.4. Estimation of evapotranspiration based on the Bowen ratio
3.2.5. Estimation of evapotranspiration based on meteorological datasets
- Ta is atmospheric temperature [°C];
- es is saturated vapour pressure at temperature T [mbar];
- Δ is the slope of the vapour pressure curve [mbar K-1];
- γ* equals γ (1+rc rah-1);
- γ is the psychrometric constant [mbar K-1];
- (es(T0)-ea) is saturated vapour pressure deficit [mbar];
- α is a constant [-] ranging from 1 to 1.35 for wet surfaces [78];
- γ is the psychrometric constant [mbar K-1];
- Δ is the slope of the vapour pressure curve [mbar K-1].
- Kc is a crop factor [-];
- ETref is reference crop ET [mm d-1];
- ETpot is potential crop ET [mm d-1];
- Tactcrop is crop ET under water stress conditions [mm d-1];
- Ks is a stress factor [-].
- ETpot is the potential evapotranspiration [mm d-1];
- Ta is atmospheric temperature [°C];
- h is a humidity term [-];
- d1 is day length [hours];
- c, a, b, c1, c2, c3 are coefficients [-].
- Rg is daily global radiation [MJ d-1 m-2].
3.2.5. Estimation of evapotranspiration based on field water balance methods
3.3. Evapotranspiration estimation at the field, landscape, regional and continental scales
3.3.1. Scintillometer measurements
3.3.2. Eddy covariance (EC) methodology
3.3.3. Catchment scale water balance methodology
3.4. Introduction of Earth Observation technology to quantify evapotranspiration
3.4.1. Energy flux measurements
- H, λE, G0 and Rn are sensible and latent heat, the soil flux and the net radiation flux respectively [W m-2];
- ρa and ρs are respectively the atmospheric and soil bulk densities [kg m-3];
- cp, cs are the specific heat of atmospheric at a constant pressure and soil specific heat [J kg-1 K-1];
- rah and rsh are the resistance to heat transfer for atmospheric and soil respectively [s m-1];
- Ta, Tz0h, Ts and LST0 are respectively atmospheric, heat source, soil and land surface temperatures [°C];
- qa and qz0h are respectively atmospheric humidity and humidity at reference height [-];
- K↓ and K↑ are incoming and outgoing short wave radiation [W m-2];
- L↓ and L↑ are incoming and outgoing long wave radiation [W m-2];
- α0 is surface albedo [-];
- ε0 is surface emissivity [-];
- σ is the Stefan – Boltzmann constant [W m-2 K-4].
- (i)
- Flux densities are linearly related to the gradients of these parameters;
- (ii)
- Flux densities of momentum, moisture and heat vary less than 10% with height and finally;
- (iii)
- Buoyancy effects on before mentioned densities can be accounted for by one dimensionless variable.
3.4.2. Remote sensing based assessment of evapotranspiration
- (i)
- the parameterization of the surface energy balance;
- (ii)
- the Penman-Monteith equation;
- (iii)
- the water balance approach, or;
- (iv)
- relationships between vegetation indices and land surface temperature assessed with remote sensing.
(i) Parameterization of the surface energy balance
(ii) Penman-Monteith combined with RS
(iii) Water balance combined with RS
(iv) Direct relationships with remotely-sensed vegetation indices and land surface temperatures
4. Soil moisture content assessment techniques at different spatial observation scales
- (i)
- Gravimetric techniques;
- (ii)
- Nuclear (neutron scattering, gamma attenuation, nuclear magnetic resonance);
- (iii)
- Electromagnetic (resistive and capacitive sensors, time and frequency domain reflectometer);
- (iv)
- Tensiometric;
- (v)
- Hydrometric;
- (vi)
- Remote sensing (passive and active microwave, thermal infrared) and;
- (vii)
- Optical techniques (polarized light, fibre optic sensors, near-infrared);
- (viii)
- An additional technique, is the heat dissipation method [106] where heating or cooling of a porous block is measured after a heat pulse;
- (ix)
- Another, more basic field method is the ‘Feel and Appearance method’, using a soil moisture interpretation chart based on texture classification and squeezing of soil samples [107].
4.1. Local scale soil moisture approaches
- θ is volumetric soil moisture content (m3 m-3)
- κ is the dielectric constant [-].
- κx, κa, κh, κw, κb and κi are relative permittivities of the initially absorbed water, atmospheric, solids (or host) fractions, water, ice and inclusion water respectively;
- θt is the transition water content marking a change from a slowly to a more rapid increasing relative permittivity value;
- P is the porosity of the dry soil;
- I and I0 are respectively the rates of the emerging and incident photon beams;
- μs and μw [cm2 g-1] are soil and water mass attenuation coefficients;
- ρs, is soil bulk density [kg m-3] and;
- θ is volumetric soil water content.
4.2. Large scale soil moisture approaches
- (i)
- randomness and;
- (ii)
- independence of individual observations.
4.3. Large scale soil moisture estimation based on remote sensing
5. Measurements, models and model selection
5.1. Evapotranspiration across different scales of observation
5.1.1. Scale issues and evapotranspiration retrieval
5.1.2. Uncertainty in assessing evapotranpiration using Earth Observation techniques
5.1.3. The performance of Earth Observation techniques to assess evapotranspiration
5.1.4. Evapotranspiration estimates not based on remote sensing
ET estimates based on meteorological relationships
ET estimates based on sap-flow, Bowen ratio, Scintillometer, Eddy Covariance techniques
5.2. Soil moisture across different scales of observation
5.3. Selection of the appropriate ET and SMC assessment approaches
- 1)
- Start with a specific scientific objective, check the assessment techniques for their limitations, and check the financial limitations. The method you have is easy to obtain.
- 2)
- Then feed this back into the methods, and subsequently also into the objectives etc.
6. Conclusions
Acknowledgments
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Meteorological factors | |
---|---|
Solar radiation (K↓) | Atmospheric water demand increases with K↓. 1 to 5% of the intercepted K↓ by plants is used for photosynthesis; |
Atmospheric temperature (Ta) | The water amount in atmospheric increases with Ta. For every 10°C rise in atmospheric temperature, atmospheric can hold twice as much water as it can at a 10°C lower temperature. |
Wind velocity (Va) | Transpiration increases with Va. Higher wind speeds reduce the boundary layer thickness. In the boundary layer RH is 100%. A high RH decreases the water potential gradient hence decreasing transpiration. |
Relative humidity (RH) | High atmospheric RH results in a less steep water potential gradient (less transpiration). Transpiration increases with decreasing RH; |
Plant factors | |
Rooting depth | Plants with deep roots have more potential to find soil water since they are able to reach the groundwater table. |
Leaf amount and Leaf Are Index (LAI) | a The larger the leaf surface area the higher the transpiration flux. LAI is the ratio of plant leaf area to leaf area projected on the field. |
Stomatal conductance | Light and moisture levels affect stomatal conductance most prominently. Leaf moisture content affects turgor pressure in the guard cells of stomata. Water stress (even under normal field conditions) results in a loss of turgor in the guard cells and hence induces leaf wilting. |
Leaf enrolling folding and reflection | Typically maize and bluegrass reduce the exposed leaf area under water stress. The silver skin of soybean leaves reflects more K↓ when enrolled |
Scale | Methods | Example | Description |
---|---|---|---|
Point/leaf & plant/field | Mass (water) balance | Porometer (POM) | Water vapour loss from a leaf in a closed chamber is determined by measuring humidity and temperature. |
Lysimeter (LM) | Measurement of water balance components such as rainfall, etc. under realistic environmental conditions. | ||
Water Balance (WB) | |||
Energy balance | Bowen ratio (BR) | Measurement of humidity and atmospheric temperature at two heights to estimate the sensible heat flux. ET is derived from the energy balance. | |
Scintillometer (SCM) | Atmospheric turbulence and light propagation, a combination of the conservation of energy and mass principles. | ||
Energy/ mass (water) balance | Sap-flow (SF) | Heat, temperature, Conservation of energy. | |
Penman-Monteith (PM) | Based on the water vapour pressure deficit. Vegetation is modelled as a big leave. | ||
FAO-24, FAO-56 | Based on PM for a reference crop in water unlimited conditions combined with crop factors to derive ETpot for a certain crop. If SMC knowledge is included ETact is derived. | ||
WAVE & SWAP and other SVAT's | Simulation of the vertical water flow in the soil medium based on the Darcy flux law and mass conservation. Upper and lower boundary data are required such as ETpot, rainfall, groundwater level, etc. | ||
Landscape | Energy balance | Eddy covariance (EC) | Covariance between 3D wind speed and water vapour mixing ratio is determined. Energy fluxes can be derived as well as carbon exchange. |
Mass (water) balance | Water balance (WB) | Rainfall, hydrographs, groundwater level, information on soil and vegetation, elevation of terrain, etc… | |
Energy/ mass (water) balance | SWAT, MIKE-SHE, SEBAL, SVAT's as PROMET, SWAP, etc | Using upper and lower boundary conditions to estimate the 1-2-3D water fluxes in the soil compartment applied on a grid or using hydrological response units. | |
Regional/Continental | Energy/ mass (water) balance | SEBAL, PROMET etc | Including remote sensing data from optical and thermal satellite sensors; Also satellite based microwave data can be used. |
Concept | Method | Parameters | Advantages | Disadvantages | Ref (Sel.) | |
---|---|---|---|---|---|---|
EO | Other | |||||
Parameterisation of the energy balance | SEBAL | LST, α0, NDVI | Ta, va, ε0, RH, surface roughness | Data requirements are minimal; Physical concept; no need for land use; multi-sensor approach. | Dry and wetland requirement to estimate H, hence heterogeneous surface needed in the ROI; only applicable for flat terrain. | [88], [89], [90], [25]. |
SEBS | LST, α0, NDVI | Ta, va, ε0, LAI, ea & esat,, surface roughness | No a-priori knowledge of the actual turbulent heat fluxes needed. | Dry and wetland requirement to estimate H; combined with Penman-Monteith equation. | [68], [70]. | |
RMI | LST, α0 | Detailed meteorological data | Based on geostationary satellites with high temporal resolution. | Monin-Obukhov lengths require detailed meteorological data (network of synoptical stations). | [64]. | |
S-SEBI iNOAA | LST, α0, NDVI | Ta, ε0, (RH) | Data requirements are minimal; No need for land use; no need to estimate H, multi-sensor. | Dry and wetland requirement to estimate evaporative fraction (dependent on ROI). | [91], [69]. | |
Penman-Monteith based | Trapezoidal shape | LST, SAVI | Ta, ε0, vapour pressure deficit, LAI | Minimal meteorological data requirement, ET estimation at regional scales. | Requirement for biome map, surface roughness, vegetation height. | [92]. |
Promet | α0, | Resistance values, LAI, soil type | Across scales, physiologically based (SVAT). | Requires a plant physiological model, land use, extensive meteorological dataset. | [54]. | |
Granger | LST, α0, NDVI | Ta, saturated vapour pressure | Feedback relationship: LST is used to obtain the vapour pressure deficit in the overlying air. | Requires long term Ta and a conventional ET model including vapour transfer coefficient. | [65]. | |
Wang | LST, α0, VI | Meteorological data | Gradients of Ta and LST not required. | Day and night LST required. | [93]. | |
Cleugh | LST, α0, VI | Meteorological data | Linear relationship surface conductance and MODIS-LAI. | Extensive meteorological data and estimations of canopy cover required. | [94]. | |
Water balance based | SWAP | α0, VI | Meteorological, soil, ground water table data | A mechanistic model simulating plant growth both temporal as spatially (GIS, EO). | Requires extensive datasets. Relationships between RS, vegetation data, soil profile, groundwater fluxes. | [66] |
Price | LST, VI | Meteorological, soil, ground water table data | Point method is extended spatially based on pixels of completely vegetated and bare soils. | Independent ET estimates required for a completely vegetated area and for a non-vegetated area; non-uniform area. | [58]. | |
VI/LST based | Nagler | EVI, LST | Ta, calibration coefficients | Simple and minimal input requirements. | Need for site specific calibration, sensor type sensitive. | [95], [96]. |
Jackson | LST (VI) | Ta, (va,), calibration coeff. | Simple relationship between VI and LST. Minimal input datasets. | Calibration parameter depends on surface roughness and wind speed. | [57]. |
Scale | Methods | Example | Description |
---|---|---|---|
Point/local | Gravimetric | Oven-drying | Standard method, destructive sampling |
Nuclear | Neutron scattering | Fast neutrons emitted from a radioactive source are slowed down by hydrogen atoms in the soil | |
Gamma attenuation | The scattering and absorption of gamma rays is related to the density of matter in their path | ||
Nuclear magnetic resonance | Soil water is subjected to both a static and an oscillating magnetic field at right angles to each other | ||
Electro-magnetic | Resistive sensor | Soil resistivity depends on the soil electrical properties and moisture | |
Capacitive sensor | Using the dielectric constant by measuring capacitance between two electrodes implanted in the soil | ||
Time-domain-reflectometer | Propagation of electromagnetic signals. Velocity and attenuation depend on soil properties: water content and electrical conductivity | ||
Frequency domain | An oscillator detects changes in soil dielectric properties linked to variations in soil water content | ||
Tensiometric | Soil matrix tension | Measures the soil matrix potential (capillary tension) | |
Hydrometric | Thermal inertia | Relationship between moisture in porous materials and the relative humidity. Since thermal inertia of a porous medium depends on moisture, soil surface temperature is indicative | |
Heat dissipation | Heat pulse | Rising or cooling of temperature in a porous block is measured after a heat pulse | |
Feel and Appearance | Manual | Soil moisture interpretation chart based on texture classification and manual squeezing of soil samples | |
Optical | Polarized light | The presence of moisture at a surface of reflection tends to cause polarization in the reflected beam | |
Fibre optic sensors | Light attenuation in the unclad fiber embedded in the soil varies with the soil water amount in contact with the fiber because of its effect on the refractive index | ||
Near-infrared | Molecular absorption of water in the surface layers | ||
1D hydrologic models | WAVE, SWAP | Based on solving the 1-D Richards equation with knowledge on atmospheric upper and soil bottom boundary conditions | |
Spatial/regional | Remote sensing | VIS, NIR, SWIR | Reflected electromagnetic energy from the soil surface |
TIR emittance | Emitted EM energy in the thermal spectral band from the soil surface | ||
Microwave emission RADAR | Emitted microwave EM energy from the soil surface Attenuation/backscattering of microwave energy as an indication of moisture content of porous media | ||
Catchment models | SWAT, MIKE-SHE | Solving the 3D Richards equation knowing atmospheric upper and soil bottom boundary conditions |
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Verstraeten, W.W.; Veroustraete, F.; Feyen, J. Assessment of Evapotranspiration and Soil Moisture Content Across Different Scales of Observation. Sensors 2008, 8, 70-117. https://doi.org/10.3390/s8010070
Verstraeten WW, Veroustraete F, Feyen J. Assessment of Evapotranspiration and Soil Moisture Content Across Different Scales of Observation. Sensors. 2008; 8(1):70-117. https://doi.org/10.3390/s8010070
Chicago/Turabian StyleVerstraeten, Willem W., Frank Veroustraete, and Jan Feyen. 2008. "Assessment of Evapotranspiration and Soil Moisture Content Across Different Scales of Observation" Sensors 8, no. 1: 70-117. https://doi.org/10.3390/s8010070
APA StyleVerstraeten, W. W., Veroustraete, F., & Feyen, J. (2008). Assessment of Evapotranspiration and Soil Moisture Content Across Different Scales of Observation. Sensors, 8(1), 70-117. https://doi.org/10.3390/s8010070