A Comprehensive study on the different types of soil desiccation cracks and their implications for soil identification using deep learning techniques

IF 1.8 4区 物理与天体物理 Q4 CHEMISTRY, PHYSICAL The European Physical Journal E Pub Date : 2024-09-25 DOI:10.1140/epje/s10189-024-00453-4
Emanual Daimari, Sai Ratna, P. V. S. S. R. Chandra Mouli, V. Madhurima
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Abstract

Rapid drying of soil leads to its fracture. The cracks left behind by these fractures are best seen in soils such as clays that are fine in the texture and shrink on drying, but this can be seen in other soils too. Hence, different soils from the same region show different characteristic desiccation cracks and can thus be used to identify the soil type. In this paper, three types soils namely clay, silt, and sandy-clay-loam from the Brahmaputra river basin in India are studied for their crack patterns using both conventional studies of hierarchical crack patterns using Euler numbers and fractal dimensions, as well as by applying deep-learning techniques to the images. Fractal dimension analysis is found to be an useful pre-processing tool for deep learning image analysis. Feed forward neural networks with and without data augmentation and with the use of filters and noise suggest that data augmentation increases the robustness and improves the accuracy of the model. Even on the introduction of noise, to mimic a real-life situation, 92.09% accuracy in identification of soil was achieved, proving the combination of conventional studies of desiccation crack images with deep learning algorithms to be an effective tool for identification of real soil types.

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利用深度学习技术全面研究不同类型的土壤干燥裂缝及其对土壤识别的影响。
土壤快速干燥会导致断裂。这些断裂留下的裂缝在质地细腻、干燥时会收缩的粘土等土壤中最为明显,但在其他土壤中也能看到。因此,同一地区的不同土壤会出现不同特征的干燥裂缝,从而可以用来识别土壤类型。本文通过使用欧拉数和分形维数对分层裂纹模式进行传统研究,以及对图像应用深度学习技术,对印度布拉马普特拉河流域的三种土壤(粘土、淤泥和砂质粘土-壤土)的裂纹模式进行了研究。研究发现,分形维度分析是深度学习图像分析的一种有用的预处理工具。有数据增强和无数据增强以及使用滤波器和噪声的前馈神经网络表明,数据增强增强了模型的鲁棒性并提高了模型的准确性。即使引入噪声来模拟真实情况,土壤识别的准确率也达到了 92.09%,这证明将干燥裂缝图像的传统研究与深度学习算法相结合是识别真实土壤类型的有效工具。
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来源期刊
The European Physical Journal E
The European Physical Journal E CHEMISTRY, PHYSICAL-MATERIALS SCIENCE, MULTIDISCIPLINARY
CiteScore
2.60
自引率
5.60%
发文量
92
审稿时长
3 months
期刊介绍: EPJ E publishes papers describing advances in the understanding of physical aspects of Soft, Liquid and Living Systems. Soft matter is a generic term for a large group of condensed, often heterogeneous systems -- often also called complex fluids -- that display a large response to weak external perturbations and that possess properties governed by slow internal dynamics. Flowing matter refers to all systems that can actually flow, from simple to multiphase liquids, from foams to granular matter. Living matter concerns the new physics that emerges from novel insights into the properties and behaviours of living systems. Furthermore, it aims at developing new concepts and quantitative approaches for the study of biological phenomena. Approaches from soft matter physics and statistical physics play a key role in this research. The journal includes reports of experimental, computational and theoretical studies and appeals to the broad interdisciplinary communities including physics, chemistry, biology, mathematics and materials science.
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