2016
DOI: 10.1134/s106422931603008x
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Estimation of soil saturated hydraulic conductivity by artificial neural networks ensemble in smectitic soils

Abstract: The saturated hydraulic conductivity (K s ) of the soil is one of the main soil physical properties. Indirect estimation of this parameter using pedo-transfer functions (PTFs) has received considerable attention. The Purpose of this study was to improve the estimation of K s using fractal parameters of particle and micro-aggregate size distributions in smectitic soils. In this study 260 disturbed and undisturbed soil samples were collected from Guilan province, the north of Iran. The fractal model of Bird and … Show more

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Cited by 24 publications
(14 citation statements)
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“…A lot of research has been conducted in the field as well as in the laboratory pertaining to the estimation of infiltration characteristics, viz., hydraulic conductivity, cumulative infiltration and infiltration rate of soil, recharging rate, and permeability of soil. Most of the modelling studies recognized the application of ANN on the laboratory as well as field data and substantial number of researchers found appreciable results with this technique (Anari et al, 2011; Esmaeelnejad et al, 2015;Schaap & Leij, 1998;Sedaghat et al, 2016;Sihag, 2018Sihag, , 2018Sy, 2006). Observing some recent field-based studies, illustrated in Table 6, RF regression is recognized as superior modeling method in predicting the infiltration rate and hydraulic conductivity of soil in the region of Kurukshetra, India (Kumar & Sihag, 2019;Singh et al, 2017).…”
Section: Discussionmentioning
confidence: 99%
“…A lot of research has been conducted in the field as well as in the laboratory pertaining to the estimation of infiltration characteristics, viz., hydraulic conductivity, cumulative infiltration and infiltration rate of soil, recharging rate, and permeability of soil. Most of the modelling studies recognized the application of ANN on the laboratory as well as field data and substantial number of researchers found appreciable results with this technique (Anari et al, 2011; Esmaeelnejad et al, 2015;Schaap & Leij, 1998;Sedaghat et al, 2016;Sihag, 2018Sihag, , 2018Sy, 2006). Observing some recent field-based studies, illustrated in Table 6, RF regression is recognized as superior modeling method in predicting the infiltration rate and hydraulic conductivity of soil in the region of Kurukshetra, India (Kumar & Sihag, 2019;Singh et al, 2017).…”
Section: Discussionmentioning
confidence: 99%
“…Secondly, although both ANNs and random forest are applied to explore the nonlinear and complicated relationships, the former ANNs presents higher quality and better performance than random forest in prediction and classification (Were et al, 2015;Raczko and Zagajewski, 2017). Thirdly, ANNs is one of the most commonly used approaches in salinity studies, including soil salinity prediction of crop root zone (Patel et al, 2002), saturated hydraulic conductivity (Motaghian and Mohammadi, 2011;Sedaghat et al, 2016) and soil salinity mapping (Zou et al, 2010;He et al, 2015). Nevertheless, ANNs only consider the variations of the soil properties caused by the correlated environmental factors or the spatial autocorrelation of surrounding measured data (Park and Vlek, 2002;Takata et al, 2007).…”
Section: Introductionmentioning
confidence: 99%
“…Soil is an important material from which human beings have benefited since the beginning of the earth. Since the soil is a base component in some areas (agricultural activities for food production, constructional works for building shelters, and many others related to the material science), many issues in natural science such as drainage, water retention capacity, air capacity, erosion susceptibility, organic matter content, cation capacity, pH balance, hydraulic conductivity can be assessed with knowledge of the physical content of the soil [1][2][3][4]. By a simple definition, estimating soil texture is to measure the amount of sand, silt and clay particles [5].…”
Section: Introductionmentioning
confidence: 99%