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Autori principali: Wagner, Norman, Daschner, Frank, Scheuermann, Alexander, Schwing, Moritz
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2406.15756
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author Wagner, Norman
Daschner, Frank
Scheuermann, Alexander
Schwing, Moritz
author_facet Wagner, Norman
Daschner, Frank
Scheuermann, Alexander
Schwing, Moritz
contents The frequency dependence of dielectric material properties of water saturated and unsaturated porous materials such as soil is not only disturbing in applications with high frequency electromagnetic (HF-EM) techniques but also contains valuable information of the material due to strong contributions by interactions between the aqueous pore solution and mineral phases. Hence, broadband HF-EM sensor techniques enable the estimation of soil physico-chemical parameters such as water content, texture, mineralogy, cation exchange capacity and matric potential. In this context, a multivariate (MV) machine learning approach (principal component regression, partial least squares regression, artificial neural networks) was applied to estimate the Soil Water Characteristic Curve (SWCC) from experimentally determined dielectric relaxation spectra of a silty clay soil. The results of the MV-approach were compared with results obtained from empirical equations and theoretical models as well as a novel hydraulic/electromagnetic coupling approach. The applied MV-approach gives evidence, (i) of a physical relationship between soil dielectric relaxation behavior and soil water characteristics as an important hydraulic material property and (ii) the applicability of appropriate sensor techniques for the estimation of physico-chemical parameters of porous media from broadband measured dielectric spectra.
format Preprint
id arxiv_https___arxiv_org_abs_2406_15756
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Estimation of the Soil Water Characteristics from Dielectric Relaxation Spectra -- a Machine Learning Approach
Wagner, Norman
Daschner, Frank
Scheuermann, Alexander
Schwing, Moritz
Geophysics
The frequency dependence of dielectric material properties of water saturated and unsaturated porous materials such as soil is not only disturbing in applications with high frequency electromagnetic (HF-EM) techniques but also contains valuable information of the material due to strong contributions by interactions between the aqueous pore solution and mineral phases. Hence, broadband HF-EM sensor techniques enable the estimation of soil physico-chemical parameters such as water content, texture, mineralogy, cation exchange capacity and matric potential. In this context, a multivariate (MV) machine learning approach (principal component regression, partial least squares regression, artificial neural networks) was applied to estimate the Soil Water Characteristic Curve (SWCC) from experimentally determined dielectric relaxation spectra of a silty clay soil. The results of the MV-approach were compared with results obtained from empirical equations and theoretical models as well as a novel hydraulic/electromagnetic coupling approach. The applied MV-approach gives evidence, (i) of a physical relationship between soil dielectric relaxation behavior and soil water characteristics as an important hydraulic material property and (ii) the applicability of appropriate sensor techniques for the estimation of physico-chemical parameters of porous media from broadband measured dielectric spectra.
title Estimation of the Soil Water Characteristics from Dielectric Relaxation Spectra -- a Machine Learning Approach
topic Geophysics
url https://arxiv.org/abs/2406.15756