利用多任务卷积神经网络进行深度学习,生成国家级三维土壤数据产品:德国农业土壤景观的粒径分布

Q2 Agricultural and Biological Sciences Agriculture Pub Date : 2024-07-26 DOI:10.3390/agriculture14081230
Mareike Ließ, Ali Sakhaee
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引用次数: 0

摘要

许多土壤功能和过程都受土壤粒径分布的控制。因此,需要有关这一土壤特性的全国性地理信息,以实现气候智能和弹性土地管理。本研究提出了一种新的深度学习方法,可同时模拟砂、淤泥和粘土三种粒径的含量及其在整个地形中随深度的变化。该方法考虑了自然土壤地层的边界,并将每个土壤剖面的周围景观背景纳入其中,以研究土壤与景观的关系。该方法应用于德国的农业土壤景观,生成了地理空间分辨率为 100 米、深度分辨率为 1 厘米的三维连续数据产品。该方法依赖于一个片段式多目标卷积神经网络(CNN)模型。遗传算法优化被用于 CNN 参数的调整。总体而言,CNN 算法在生成多维、多变量、国家尺度土壤数据产品方面的有效性得到了验证。预测性能的中位均方根误差分别为:砂含量 17.8 质量%,粉土含量 14.4 质量%,顶部 10 厘米粘土含量 9.3 质量%。在 40 厘米深处,误差分别增加到 20.9%、16.5% 和 11.8%。生成的数据产品在同类产品中尚属首次。然而,尽管这种深度学习方法在理解和模拟复杂的土壤-景观关系方面具有无限潜力,但其局限性也是数据驱动的,涉及土壤形成因素的近似值和可用的土壤剖面数据。
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Deep Learning with a Multi-Task Convolutional Neural Network to Generate a National-Scale 3D Soil Data Product: The Particle Size Distribution of the German Agricultural Soil Landscape
Many soil functions and processes are controlled by the soil particle size distribution. Accordingly, nationwide geoinformation on this soil property is required to enable climate-smart and resilient land management. This study presents a new deep learning approach to simultaneously model the contents of the three particle sizes of sand, silt, and clay and their variations with depth throughout the landscape. The approach allows for the consideration of the natural soil horizon boundaries and the inclusion of the surrounding landscape context of each soil profile to investigate the soil–landscape relation. Applied to the agricultural soil landscape of Germany, the approach generated a three-dimensional continuous data product with a resolution of 100 m in geographic space and a depth resolution of 1 cm. The approach relies on a patch-wise multi-target convolutional neural network (CNN) model. Genetic algorithm optimization was applied for CNN parameter tuning. Overall, the effectiveness of the CNN algorithm in generating multidimensional, multivariate, national-scale soil data products was demonstrated. The predictive performance resulted in a median root mean square error of 17.8 mass-% for the sand, 14.4 mass-% for the silt, and 9.3 mass-% for the clay content in the top ten centimeters. This increased to 20.9, 16.5, and 11.8 mass-% at a 40 cm depth. The generated data product is the first of its kind. However, even though the potential of this deep learning approach to understand and model the complex soil–landscape relation is virtually limitless, its limitations are data driven concerning the approximation of the soil-forming factors and the available soil profile data.
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来源期刊
Agriculture
Agriculture Agricultural and Biological Sciences-Horticulture
CiteScore
1.90
自引率
0.00%
发文量
4
审稿时长
11 weeks
期刊介绍: The Agriculture (Poľnohospodárstvo) is a peer-reviewed international journal that publishes mainly original research papers. The journal examines various aspects of research and is devoted to the publication of papers dealing with the following subjects: plant nutrition, protection, breeding, genetics and biotechnology, quality of plant products, grassland, mountain agriculture and environment, soil science and conservation, mechanization and economics of plant production and other spheres of plant science. Journal is published 4 times per year.
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