2023
DOI: 10.3390/w15142623
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Deep-Learning-Enhanced CT Image Analysis for Predicting Hydraulic Conductivity of Coarse-Grained Soils

Abstract: Permeability characteristics in coarse-grained soil is pivotal for enhancing the understanding of its seepage behavior and effectively managing it, directly impacting the design, construction, and operational safety of embankment dams. Furthermore, these insights bridge diverse disciplines, including hydrogeology, civil engineering, and environmental science, broadening their application and relevance. In this novel research, we leverage a Convolutional Neural Network (CNN) model to achieve the accurate segmen… Show more

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“…The machine learning-based methods using digital image analysis have been widely applied as a non-contact and on-site indirect measurement approach in studying soil properties, such as the hydraulic conductivity of soils [18], soil roughness [19], soil type [20], soil texture [21], soil bulk density [22], and total soil nitrogen content [23]. Many studies have focused on utilizing soil surface images to estimate SWC [13,24].…”
Section: Introductionmentioning
confidence: 99%
“…The machine learning-based methods using digital image analysis have been widely applied as a non-contact and on-site indirect measurement approach in studying soil properties, such as the hydraulic conductivity of soils [18], soil roughness [19], soil type [20], soil texture [21], soil bulk density [22], and total soil nitrogen content [23]. Many studies have focused on utilizing soil surface images to estimate SWC [13,24].…”
Section: Introductionmentioning
confidence: 99%