Prediction of biopore- and matrix-dominated flow from X-ray CT-derived macropore network characteristics

Prediction and modeling of localized flow processes in macropores is of crucial importance for sustaining both soil and water quality. However, currently there are no reliable means to predict preferential flow due to its inherently large spatial variability. The aim of this study was to investigate...

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Main Authors: Naveed, Muhammad, Moldrup, Per, Schaap, Marcel G., Tuller, Markus, Kulkarni, Ramaprasad, Vogel, Hans-Jörg, Wollesen de Jonge, Lis
Other Authors: Univ Arizona, Dept Soil Water & Environm Sci
Language:en
Published: COPERNICUS GESELLSCHAFT MBH 2016
Online Access:http://hdl.handle.net/10150/621951
http://arizona.openrepository.com/arizona/handle/10150/621951
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spelling ndltd-arizona.edu-oai-arizona.openrepository.com-10150-6219512017-01-15T03:00:39Z Prediction of biopore- and matrix-dominated flow from X-ray CT-derived macropore network characteristics Naveed, Muhammad Moldrup, Per Schaap, Marcel G. Tuller, Markus Kulkarni, Ramaprasad Vogel, Hans-Jörg Wollesen de Jonge, Lis Univ Arizona, Dept Soil Water & Environm Sci Univ Arizona, Dept Elect & Comp Engn Prediction and modeling of localized flow processes in macropores is of crucial importance for sustaining both soil and water quality. However, currently there are no reliable means to predict preferential flow due to its inherently large spatial variability. The aim of this study was to investigate the predictive performance of previously developed empirical models for both water and air flow and to explore the potential applicability of X-ray computed tomography (CT)-derived macropore network characteristics. For this purpose, 65 cylindrical soil columns (6 cm diameter and 3.5 cm height) were extracted from the topsoil (5 cm to 8.5 cm depth) in a 15 m  ×  15 m grid from an agricultural field located in Silstrup, Denmark. All soil columns were scanned with an industrial X-ray CT scanner (129 µm resolution) and later employed for measurement of saturated hydraulic conductivity, air permeability at −30 and −100 cm matric potential, and gas diffusivity at −30 and −100 cm matric potential. Distribution maps for saturated hydraulic conductivity, air permeability, and gas diffusivity reflected no autocorrelation irrespective of soil texture and organic matter content. Existing empirical predictive models for saturated hydraulic conductivity and air permeability showed poor performance, as they were not able to realistically capture macropore flow. The tested empirical model for gas diffusivity predicted measurements at −100 cm matric potential reasonably well, but failed at −30 cm matric potential, particularly for soil columns with biopore-dominated flow. X-ray CT-derived macroporosity matched the measured air-filled porosity at −30 cm matric potential well. Many of the CT-derived macropore network characteristics were strongly interrelated. Most of the macropore network characteristics were also significantly correlated with saturated hydraulic conductivity, air permeability, and gas diffusivity. The predictive Ahuja et al. (1984) model for saturated hydraulic conductivity, air permeability, and gas diffusivity performed reasonably well when parameterized with novel, X-ray CT-derived parameters such as effective percolating macroporosity for biopore-dominated flow and total macroporosity for matrix-dominated flow. The obtained results further indicate that it is crucially important to discern between matrix-dominated and biopore-dominated flow for accurate prediction of macropore flow from X-ray CT-derived macropore network characteristics. 2016-10-06 Article Prediction of biopore- and matrix-dominated flow from X-ray CT-derived macropore network characteristics 2016, 20 (10):4017 Hydrology and Earth System Sciences 1607-7938 10.5194/hess-20-4017-2016 http://hdl.handle.net/10150/621951 http://arizona.openrepository.com/arizona/handle/10150/621951 Hydrology and Earth System Sciences en http://www.hydrol-earth-syst-sci.net/20/4017/2016/ © Author(s) 2016. This work is distributed under the Creative Commons Attribution 3.0 License. COPERNICUS GESELLSCHAFT MBH
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language en
sources NDLTD
description Prediction and modeling of localized flow processes in macropores is of crucial importance for sustaining both soil and water quality. However, currently there are no reliable means to predict preferential flow due to its inherently large spatial variability. The aim of this study was to investigate the predictive performance of previously developed empirical models for both water and air flow and to explore the potential applicability of X-ray computed tomography (CT)-derived macropore network characteristics. For this purpose, 65 cylindrical soil columns (6 cm diameter and 3.5 cm height) were extracted from the topsoil (5 cm to 8.5 cm depth) in a 15 m  ×  15 m grid from an agricultural field located in Silstrup, Denmark. All soil columns were scanned with an industrial X-ray CT scanner (129 µm resolution) and later employed for measurement of saturated hydraulic conductivity, air permeability at −30 and −100 cm matric potential, and gas diffusivity at −30 and −100 cm matric potential. Distribution maps for saturated hydraulic conductivity, air permeability, and gas diffusivity reflected no autocorrelation irrespective of soil texture and organic matter content. Existing empirical predictive models for saturated hydraulic conductivity and air permeability showed poor performance, as they were not able to realistically capture macropore flow. The tested empirical model for gas diffusivity predicted measurements at −100 cm matric potential reasonably well, but failed at −30 cm matric potential, particularly for soil columns with biopore-dominated flow. X-ray CT-derived macroporosity matched the measured air-filled porosity at −30 cm matric potential well. Many of the CT-derived macropore network characteristics were strongly interrelated. Most of the macropore network characteristics were also significantly correlated with saturated hydraulic conductivity, air permeability, and gas diffusivity. The predictive Ahuja et al. (1984) model for saturated hydraulic conductivity, air permeability, and gas diffusivity performed reasonably well when parameterized with novel, X-ray CT-derived parameters such as effective percolating macroporosity for biopore-dominated flow and total macroporosity for matrix-dominated flow. The obtained results further indicate that it is crucially important to discern between matrix-dominated and biopore-dominated flow for accurate prediction of macropore flow from X-ray CT-derived macropore network characteristics.
author2 Univ Arizona, Dept Soil Water & Environm Sci
author_facet Univ Arizona, Dept Soil Water & Environm Sci
Naveed, Muhammad
Moldrup, Per
Schaap, Marcel G.
Tuller, Markus
Kulkarni, Ramaprasad
Vogel, Hans-Jörg
Wollesen de Jonge, Lis
author Naveed, Muhammad
Moldrup, Per
Schaap, Marcel G.
Tuller, Markus
Kulkarni, Ramaprasad
Vogel, Hans-Jörg
Wollesen de Jonge, Lis
spellingShingle Naveed, Muhammad
Moldrup, Per
Schaap, Marcel G.
Tuller, Markus
Kulkarni, Ramaprasad
Vogel, Hans-Jörg
Wollesen de Jonge, Lis
Prediction of biopore- and matrix-dominated flow from X-ray CT-derived macropore network characteristics
author_sort Naveed, Muhammad
title Prediction of biopore- and matrix-dominated flow from X-ray CT-derived macropore network characteristics
title_short Prediction of biopore- and matrix-dominated flow from X-ray CT-derived macropore network characteristics
title_full Prediction of biopore- and matrix-dominated flow from X-ray CT-derived macropore network characteristics
title_fullStr Prediction of biopore- and matrix-dominated flow from X-ray CT-derived macropore network characteristics
title_full_unstemmed Prediction of biopore- and matrix-dominated flow from X-ray CT-derived macropore network characteristics
title_sort prediction of biopore- and matrix-dominated flow from x-ray ct-derived macropore network characteristics
publisher COPERNICUS GESELLSCHAFT MBH
publishDate 2016
url http://hdl.handle.net/10150/621951
http://arizona.openrepository.com/arizona/handle/10150/621951
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