Murray D. Fredlund D.G. Fredlund G.W. Wilson

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Presentation transcript:

Murray D. Fredlund D.G. Fredlund G.W. Wilson Prediction of the Soil-Water Characteristic Curve from Grain-Size Distribution and Volume-Mass Properties Murray D. Fredlund D.G. Fredlund G.W. Wilson

Outline ABSTRACT INTRODUCTION THEORY FOR MATHEMATICALLY REPRESENTING THE GRAIN-SIZE DISTRIBUTION CURVE THEORY OF PREDICTING THE SOIL-WATER CHARACTERISTIC CURVE FROM THE GRAIN-SIZE DISTRIBUTION IMPLEMENTATION OF THE SWCC PREDICTION INTO SOILVISION CONCLUSIONS

ABSTRACT

ABSTRACT This paper presents a method of estimating the soil-water characteristic curve from the grain-size distribution curve and volume-mass properties. The grain-size distribution is divided into small groups of uniformly-sized particles. A packing porosity and soil-water characteristic curve is assumed for each group of particles.The incremental soil-water characteristic curves are then summed to produce a final soil-water characteristic curve. Prediction of the soil-water characteristic curve from grain-size distribution allows for a inexpensive description of the behavior of unsaturated soils. The soil-water characteristic curve forms the basis for computer modeling of processes in unsaturated soils.

INTRODUCTION

INTRODUCTION This paper presents a model for the prediction of the soil-water characteristic curve, (SWCC), based on the particle-size distribution, dry density, void ratio, and specific gravity of a soil. The model first fits a modification of the Fredlund & Xing (1994) equation to the grain-size distribution curve. The grain-size distribution curve is analyzed as an incremental series of particle sizes from the smallest to the largest in order to build an overall soil-water characteristic curve. Typical soil-water characteristic curves and grain-size distribution curves for a mixture of sand, silt, and clay were obtained from SoilVision (Fredlund, 1996), which contains over 6000 soils.

INTRODUCTION The soil-water characteristic curves were then fitted with the Fredlund & Xing (1994) equation. This provided an approximation for the curve fitting parameters in the Fredlund & Xing (1994) equation classified according to dominant particle size. Parameters used in the Fredlund & Xing (1994) equation for soils composed entirely of sand or entirely of clay are easy to obtain. Uniform soils containing only mid-range particle sizes are more difficult to obtain and as a result some estimation is required.

INTRODUCTION The benefits of a mathematical fit would be two-fold. A grain-size curve fit with a mathematical equation would then allow further computations to be performed on the curve. It was reasoned that a prediction of the soil-water characteristic curve would be possible if the grain-size distribution could be fit with an equation. This idea was then implemented in the form of a least-squares curve-fitting algorithm which allowed for fitting of the grain-size distribution data.

INTRODUCTION The second benefit of mathematically representing each grain-size curve was that it would provide coefficients of indices by which grain-size curves could be classified. This would allow the ability to search the database for soils with grain-size curves within a specified band. This technique has proven invaluable in performing sensitivity analyses on soil parameters.

THEORY FOR MATHEMATICALLY REPRESENTING THE GRAIN-SIZE DISTRIBUTION CURVE

THEORY The research by Wagner(1994) presented several lognormal distributions capable of fitting the grain-size curve. Providing a meaningful representation of the grain-size data in the extremes proved difficult for a lognormal distribution. Due to similarity between the shape of the grain-size distribution and the shape of the soilwater characteristic curve, a different approach was taken. The Fredlund & Xing (1994) equation, which had previously been used to fit SWCC data, provided a flexible and continuous equation that could be fit by the nonlinear regression using three parameters.

THEORY

THEORY

THEORY OF PREDICTING THE SOIL-WATER CHARACTERISTIC CURVE FROM THE GRAIN-SIZE DISTRIBUTION

THEORY A review of current research showed that one of two approaches have typically been taken in the prediction of the soil-water characteristic curve from grain-size. The first approach entails a statistical estimation of properties describing the SWCC from grain- size and volume-mass properties (Gupta, 1979; Ahuja, 1985; Ghosh; 1980; Aberg, 1996). The second approach was theoretical and involved converting the grain-size distribution to a pore-size distribution which was then developed into a SWCC (Arya, 1981).

THEORY

THEORY A new approach is proposed for predicting the soil-water characteristic curve from the grain-size distribution curve. The uniqueness of the soil parameters was confirmed by querying the SoilVision database for plots of the ‘n’ and‘m’ parameters versus the percent sand, silt, and clay of a soil. The divisional soil-water characteristic curves can then be summed starting with the smallest particle size and continuing until the volume of pore space is equal to that of the entire heterogeneous soil.

THEORY

IMPLEMENTATION OF THE SWCC PREDICTION INTO SOILVISION

SOILVISION Information relevant to describing the grain-size distribution is organized in a single form in the SoilVision knowledge-based system.

SOILVISION

SOILVISION

CONCLUSIONS

CONCLUSIONS The readapted Fredlund & Xing (1994)equation produces a satisfactory fit of the grain-size distribution. A good curve fit of the grain-size curve is essential for the prediction of a reasonable soil-water characteristic curve. The prediction of soil-water characteristic curve from the grain-size distribution was found to be particularly accurate for sands, and reasonably accurate for silts

Grain-size distribution fit for a Sand (# 10720) CONCLUSIONS Grain-size distribution fit for a Sand (# 10720)

Grain-size distribution fit for a Loamy Sand (# 10741) CONCLUSIONS Grain-size distribution fit for a Loamy Sand (# 10741)

Grain-size distribution for a Sand (# 350) CONCLUSIONS Grain-size distribution for a Sand (# 350)

Grain-size distribution for a Silt Loam (# 10861) CONCLUSIONS Grain-size distribution for a Silt Loam (# 10861)

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