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Soil environment grouping system based on spectral, climate, and terrain data a quantitative branch of soil series

机译:基于光谱,气候和地形数据的土壤环境分组系统土壤系列定量分支

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Soil classification has traditionally been developed by combining the interpretation of taxonomic rules that are related to soil information with the pedologist's tacit knowledge. Hence, a more quantitative approach is necessary to characterize soils with less subjectivity. The objective of this study was to develop a soil grouping system based on spectral, climate, and terrain variables with the aim of establishing a quantitative way of classifying soils. Spectral data were utilized to obtain information about the soil, and this information was complemented by climate and terrain variables in order to simulate the pedologist knowledge of soil–environment interactions. We used a data set of 2287 soil profiles from five Brazilian regions. The soil classes of World Reference Base (WRB) system were predicted using the three above-mentioned variables, and the results showed that they were able to correctly classify the soils with an overall accuracy of 88 %. To derive the new system, we applied the spectral, climatic, and terrain variables, which – using cluster analysis – defined eight groups; thus, these groups were not generated by the traditional taxonomic method but instead by grouping areas with similar characteristics expressed by the variables indicated. They were denominated as “soil environment groupings” (SEGs). The SEG system facilitated the identification of groups with equivalent characteristics using not only soil but also environmental variables for their distinction. Finally, the conceptual characteristics of the eight SEGs were described. The new system has been designed to incorporate applicable soil data for agricultural management, to require less interference from personal/subjective/empirical knowledge (which is an issue in traditional taxonomic systems), and to provide more reliable automated measurements using sensors.
机译:传统上通过将与脚本主学家默契知识的土壤信息有关的分类规则的解释来制定土壤分类。因此,需要更具定量的方法来表征具有较小主体性的土壤。本研究的目的是基于光谱,气候和地形变量开发土壤分组系统,目的是建立分类土壤的定量方式。利用光谱数据来获取有关土壤的信息,并且该信息被气候和地形变量补充,以模拟土壤师的互动的知识。我们使用了来自五个巴西地区的2287个土壤曲线的数据集。使用三个上述变量预测了世界参考基础(WRB)系统的土壤类,结果表明,它们能够正确地分类土壤,整体准确性为88%。要派生新系统,我们应用了频谱,气候和地形变量,它 - 使用群集分析定义的八组;因此,这些组不是由传统的分类方法产生的,而是通过分组具有所示变量表示的具有类似特性的区域。它们以“土壤环境分组”(SEG)计价。 SEG系统促进了使用等同特征的群体使用不仅使用土壤而且环境变量的区别。最后,描述了八个SEG的概念特征。新系统旨在纳入适用的农业管理土壤数据,需要对个人/主观/经验知识(这是传统分类系统中的问题)的干扰,并使用传感器提供更可靠的自动测量。

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