As a result of heterogeneity nature of soils and variation in its hydraulic conductivity over several orders of magnitude for various soil types from fine-grained to coarse-grained soils, predictive methods to estimate hydraulic conductivity of soils from properties considered more easily obtainable have now been given an appropriate consideration. This study evaluates the performance of artificial neural network (ANN) being one of the popular computational intelligence techniques in predicting hydraulic conductivity of wide range of soil types and compared with the traditional multiple linear regression (MLR). ANN and MLR models were developed using six input variables. Results revealed that only three input variables were statistically si...
Modeling soil-water regime and solute transport in the vadose zone is strategic for estimating agric...
The two common methods used to develop PTFs are multiple-linear regression method and Artificial Neu...
Indirect estimate of solute-transport parameters through pedo-transfer functions (PTFs) is becoming ...
This study deals with development of artificial neural networks (ANNs) and multiple regression analy...
Multilinear regression has been used extensively to predict soil hydraulic properties from easily ob...
Hydraulic conductivity of tropical soils is very complex. Several hydraulic conductivity prediction ...
Soil hydraulic conductivity (K-s) is a crucial soil physical property that not only influences soil ...
Modeling contaminant and water flow through soil requires ac-curate estimates of soil hydraulic prop...
The hydraulic conductivity of saturated soil is a crucial parameter in the study of any engineering ...
Parametric and nonparametric supervised machine learning techniques were used to estimate saturated ...
Parametric and nonparametric supervised machine learning techniques were used to estimate saturated ...
Saturated hydraulic conductivity is one of the soil hydraulic properties which is widely used in env...
Modeling soil-water regime and solute transport in the vadose zone is strategic for estimating agric...
Rapid and reliable observations of soil electrical conductivity are essential in order to maintain s...
Various approaches exist to relate saturated hydraulic conductivity (Ks) to grain-size data. Most me...
Modeling soil-water regime and solute transport in the vadose zone is strategic for estimating agric...
The two common methods used to develop PTFs are multiple-linear regression method and Artificial Neu...
Indirect estimate of solute-transport parameters through pedo-transfer functions (PTFs) is becoming ...
This study deals with development of artificial neural networks (ANNs) and multiple regression analy...
Multilinear regression has been used extensively to predict soil hydraulic properties from easily ob...
Hydraulic conductivity of tropical soils is very complex. Several hydraulic conductivity prediction ...
Soil hydraulic conductivity (K-s) is a crucial soil physical property that not only influences soil ...
Modeling contaminant and water flow through soil requires ac-curate estimates of soil hydraulic prop...
The hydraulic conductivity of saturated soil is a crucial parameter in the study of any engineering ...
Parametric and nonparametric supervised machine learning techniques were used to estimate saturated ...
Parametric and nonparametric supervised machine learning techniques were used to estimate saturated ...
Saturated hydraulic conductivity is one of the soil hydraulic properties which is widely used in env...
Modeling soil-water regime and solute transport in the vadose zone is strategic for estimating agric...
Rapid and reliable observations of soil electrical conductivity are essential in order to maintain s...
Various approaches exist to relate saturated hydraulic conductivity (Ks) to grain-size data. Most me...
Modeling soil-water regime and solute transport in the vadose zone is strategic for estimating agric...
The two common methods used to develop PTFs are multiple-linear regression method and Artificial Neu...
Indirect estimate of solute-transport parameters through pedo-transfer functions (PTFs) is becoming ...