利用光谱学和空间机器学习绘制精细尺度的土壤属性图

IF 5.8 2区 农林科学 Q1 SOIL SCIENCE Soil Pub Date : 2024-10-07 DOI:10.5194/egusphere-2024-2810
Thorsten Behrens, Karsten Schmidt, Felix Stumpf, Simon Tutsch, Marie Hertzog, Urs Grob, Armin Keller, Raphael Viscarra Rossel
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引用次数: 0

摘要

摘要土壤制图面临的一个挑战是如何将新技术和新方法应用到实际操作中,并将其与传统的实地调查相结合,降低成本,提高土壤地图的质量。后者至关重要,因为它们是许多专题地图的基础。作为土壤制图新方法的一部分,我们整合了各种技术和测步法,为土壤勘测人员绘制土壤属性图,供他们在开始实地土壤学工作前参考。这为勘测人员提供了更为详细和准确的先验信息,减少了土壤制图中固有的主观性。我们的方法包括新颖的土壤采样设计(可有效捕捉空间和特征空间)、中红外光谱以及基于通过各种特征工程方法生成的一整套协变量的空间机器学习。我们采用多尺度地形属性、时间多尺度遥感和欧氏距离场来考虑机器学习中的环境相关性、空间非平稳性和空间自相关性。减少光谱和空间数据固有不确定性的方法被整合在一起。新的采样设计以地理分层为基础,重点关注当地土壤的变异性。该方法可识别特征空间的空间局部最小值和最大值,这对特定尺度的土壤调查至关重要。k-means 算法和 Kennard-Stone 算法在覆盖研究区域的六边形网格的每个单元内依次应用。这种方法允许对每个单元进行系统的子取样,以分析不同取样密度下的预测准确性。我们测试了每公顷一至三个样本。我们的研究结果表明,每公顷两个样本的取样量足以准确绘制 300 公顷的土壤特性图。由于勘测所需的时间和资源大幅减少,这明显减轻了后续项目的经济负担。光谱和空间模型均无偏差,平均 R2 值分别为 0.91 和 0.68-0.86,具体取决于是否使用 pedotransfer 模型绘制地图。我们的研究凸显了在土壤调查中集成强大的计步技术的价值。
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Operationalizing fine-scale soil property mapping with spectroscopy and spatial machine learning
Abstract. One challenge in soil mapping is the transfer of new techniques and methods into operational practice, integrating them with traditional field surveys, reducing costs, and increasing the quality of the soil maps. The latter is paramount, as they form the basis for many thematic maps. As part of a novel approach to soil mapping, we integrate various technologies and pedometric methodologies to create soil property maps for soil surveyors, which they can utilize as a reference before beginning their pedological fieldwork. This gives the surveyors considerably more detailed and accurate prior information, reducing the subjectivity inherent in soil mapping. Our approach comprises a novel soil sampling design that effectively captures spatial and feature spaces, mid-infrared spectroscopy, and spatial machine learning based on a comprehensive set of covariates generated through various feature engineering approaches. We employ multi-scale terrain attributes, temporal multi-scale remote sensing, and Euclidean distance fields to account for environmental correlation, spatial non-stationarity, and spatial autocorrelation in machine learning. Methods to reduce the uncertainties inherent to the spectral and spatial data were integrated. The new sampling design is based on a geographical stratification and focuses on the local soil variability. The method identifies spatially local minima and maxima of the feature space, which is fundamental to soil surveys at the specified scale. The k-means and Kennard-Stone algorithms were applied in a sequential manner within each cell of a hexagonal grid overlaying the study area. This approach permits a systematic sub-sampling from each cell to analyze predictive accuracy for varying sampling densities. We tested one to three samples per hectare. Our findings indicate that a sample size of two samples per hectare was sufficient for accurately mapping soil properties across 300 hectares. This markedly reduces the financial burden associated with subsequent projects, given the significant reduction in the time and resources required for surveying. The spectroscopic and spatial models were unbiased and yielded average R2 values of 0.91 and 0.68–0.86, depending on mapping with or without pedotransfer models. Our study highlights the value of integrating robust pedometric technologies in soil surveys.
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来源期刊
Soil
Soil Agricultural and Biological Sciences-Soil Science
CiteScore
10.80
自引率
2.90%
发文量
44
审稿时长
30 weeks
期刊介绍: SOIL is an international scientific journal dedicated to the publication and discussion of high-quality research in the field of soil system sciences. SOIL is at the interface between the atmosphere, lithosphere, hydrosphere, and biosphere. SOIL publishes scientific research that contributes to understanding the soil system and its interaction with humans and the entire Earth system. The scope of the journal includes all topics that fall within the study of soil science as a discipline, with an emphasis on studies that integrate soil science with other sciences (hydrology, agronomy, socio-economics, health sciences, atmospheric sciences, etc.).
期刊最新文献
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