HOME

TheInfoList



OR:

Water retention curve is the relationship between the water content, θ, and the soil
water potential Water potential is the potential energy of water per unit volume relative to pure water in reference conditions. Water potential quantifies the tendency of water to move from one area to another due to osmosis, gravity, mechanical pressure and ...
, ψ. This curve is characteristic for different types of soil, and is also called the soil moisture characteristic. It is used to predict the soil water storage, water supply to the plants ( field capacity) and soil aggregate stability. Due to the hysteretic effect of water filling and draining the pores, different wetting and drying curves may be distinguished. The general features of a water retention curve can be seen in the figure, in which the volume water content, θ, is plotted against the matric potential, \Psi_m. At potentials close to zero, a soil is close to saturation, and water is held in the soil primarily by capillary forces. As θ decreases, binding of the water becomes stronger, and at small potentials (more negative, approaching wilting point) water is strongly bound in the smallest of pores, at contact points between grains and as films bound by adsorptive forces around particles. Sandy soils will involve mainly capillary binding, and will therefore release most of the water at higher potentials, while clayey soils, with adhesive and osmotic binding, will release water at lower (more negative) potentials. At any given potential, peaty soils will usually display much higher moisture contents than clayey soils, which would be expected to hold more water than sandy soils. The water holding capacity of any soil is due to the porosity and the nature of the bonding in the soil.


Curve Models

The shape of water retention curves can be characterized by several models, one of them known as the van Genuchten model: :\theta(\psi) = \theta_r + \frac where :\theta(\psi) is the water retention curve 3L−3 :, \psi, is suction pressure ( or cm of water); :\theta_s saturated water content 3L−3 :\theta_r residual water content 3L−3 :\alpha is related to the inverse of the air entry suction, \alpha >0 ( −1 or cm−1); and, :n is a measure of the pore-size distribution, n>1 (dimensionless). Based on this parametrization a prediction model for the shape of the unsaturated hydraulic conductivity - saturation - pressure relationship was developed.


History

In 1907, Edgar Buckingham created the first water retention curve. It was measured and made for six soils varying in texture from sand to clay. The data came from experiments made on soil columns 48 inch tall, where a constant water level maintained about 2 inches above the bottom through periodic addition of water from a side tube. The upper ends were closed to prevent evaporation.


Method

The van Genuchten parameters (\alpha and n) can be determined through field or laboratory testing. One of the methods is the instantaneous profile method, where water content \theta (or effective saturation Se) are determined for a series of suction pressure measurements \psi. Due to the non-linearity of the equation, numerical techniques such as the non-linear
least-squares The method of least squares is a standard approach in regression analysis to approximate the solution of overdetermined systems (sets of equations in which there are more equations than unknowns) by minimizing the sum of the squares of the res ...
method can be used to solve the van Genuchten parameters. The accuracy of the estimated parameters will depend on the quality of the acquired dataset (\theta and \psi). When water retention curves are fitted with non-linear least squares, structural overestimation or underestimation can occur. In these cases, the representation of water retention curves can be improved in terms of accuracy and uncertainty by applying Gaussian Process regression to the residuals that are obtained after non-linear least-squares. This is mostly due to the correlation between the datapoints, which is accounted for with Gaussian Process regression through the kernel function.Yousef, B. (June, 2019)
Gaussian Process Regression Models for Predicting Water Retention Curves - Application of Machine Learning Techniques for Modelling Uncertainty in Hydraulic Curves.
Retrieved from the Delft University of Technology repository.


See also

* Soil water (retention)


References

*{{cite book , last=Brady , first=N.C. , title=The Nature and Properties of Soils , edition=12th , publisher=Prentice-Hall , year=1999 , location=Upper Saddle River, NJ , pages=183–9 , isbn=0-13-852444-0


External links


UNSODA Model
database of unsaturated soil hydraulic properties
SWRC Fit
fit soil hydraulic models to soil water retention data Soil physics Hysteresis