Characterization of heterogeneous soil hydraulic parameters of deep vadose zones is often difficult and expensive, making it necessary to rely on other sources of information. Pedotransfer functions (PTFs) based on soil texture data constitute a simple alternative to inverse hydraulic parameter estimation, but their accuracy is often modest. Inverse modeling entails a compromise between detailed description of subsurface heterogeneity and the need to restrict the number of parameters. We propose two methods of parameterizing vadose zone hydraulic properties using a combination of k-means clustering of kriged soil texture data, PTFs, and model inversion. One approach entails homogeneous and the other heterogeneous clusters. Clusters may incl...
Soil hydraulic parameter values for large-scale modelling cannot be obtained by direct methods. Pedo...
Distributed hydrological models are useful tools to analyse the performance of irrigation systems at...
The emerging importance of large scale distributed-process modeling has generated a pressing need fo...
Characterization of heterogeneous soil hydraulic parameters of deep vadose zones is often difficult ...
We use geostatistical and pedotrasnfer functions to estimate the three-dimensional distributions of ...
Concern over the quality of environmental management and restoration has motivated the model develop...
Subsurface flow and contaminant transport processes are critically affected by the structure and het...
Different methods for parameterizing soil hydraulic models can lead to substantially varied predicti...
A geostatistical inverse technique utilizing both primary and secondary information is developed to ...
The objective of this research is to develop and demonstrate a general approach for modeling flow an...
A transient flow experiment using automated drip infiltrometers (ADIs) was performed on soil columns...
A correct quantification of mass and energy exchange processes among Earth's land surface, groundwat...
Modeling soil water flow requires the knowledge of numerous parameters associated to the water conte...
Accurate estimates of soil hydraulic parameters and dispersivities are crucial to simulate water flo...
Accurate estimates of soil hydraulic parameters and dispersivities are crucial to simulate water flo...
Soil hydraulic parameter values for large-scale modelling cannot be obtained by direct methods. Pedo...
Distributed hydrological models are useful tools to analyse the performance of irrigation systems at...
The emerging importance of large scale distributed-process modeling has generated a pressing need fo...
Characterization of heterogeneous soil hydraulic parameters of deep vadose zones is often difficult ...
We use geostatistical and pedotrasnfer functions to estimate the three-dimensional distributions of ...
Concern over the quality of environmental management and restoration has motivated the model develop...
Subsurface flow and contaminant transport processes are critically affected by the structure and het...
Different methods for parameterizing soil hydraulic models can lead to substantially varied predicti...
A geostatistical inverse technique utilizing both primary and secondary information is developed to ...
The objective of this research is to develop and demonstrate a general approach for modeling flow an...
A transient flow experiment using automated drip infiltrometers (ADIs) was performed on soil columns...
A correct quantification of mass and energy exchange processes among Earth's land surface, groundwat...
Modeling soil water flow requires the knowledge of numerous parameters associated to the water conte...
Accurate estimates of soil hydraulic parameters and dispersivities are crucial to simulate water flo...
Accurate estimates of soil hydraulic parameters and dispersivities are crucial to simulate water flo...
Soil hydraulic parameter values for large-scale modelling cannot be obtained by direct methods. Pedo...
Distributed hydrological models are useful tools to analyse the performance of irrigation systems at...
The emerging importance of large scale distributed-process modeling has generated a pressing need fo...