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VISIBLE-NEAR INFRARED REFLECTANCE SPECTROSCOPY FOR FIELD SCALE DIGITAL SOIL MAPPING. A CASE STUDY

机译:用于场比例数字土壤映射的可见近红外反射光谱。案例研究

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The aim of this work is to present a method for "intelligent", field-scale digital soil mapping based on visible-near infrared(vis-NIR)reflectance spectroscopy, in combination with statistical analysis(Principal Component Analysis, PCA and geostatistics). The study was carried out in a site of southern Italy. With reference to a 50 x 50 cell size grid, 240 soil samples were collected to a depth of 20-30 cm. The soil was analyzed by vis-NIR reflectance spectroscopy and the data were decomposed by PCA. The first three components(PCI, PC2, PC3)explained 98% of the total variance of the initial data set and therefore they were selected for the assessment of soil spatial variability by variography and kriging(geostatistics). The resulting PC1, PC2 and PC3 kriging maps were interpreted in the light of the information contents on reflectance spectra and compared with the results of a previous, conventional soil survey. The presented strategy seems to be efficient and reliable to use, when mapping soil spatial variability.
机译:本作作品的目的是提供一种基于可见近红外(Vis-NIR)反射光谱的“智能”,现场规模数字土壤映射的方法,与统计分析(主要成分分析,PCA和地质学)组合。该研究进行了意大利南部的网站。参考50×50个细胞尺寸栅格,收集240个土壤样品至深度为20-30厘米。通过Vis-niR反射光谱分析土壤,数据通过PCA分解。前三个组件(PCI,PC2,PC3)解释了初始数据集的总方差的98%,因此选择通过变形例和克里格(地质学习)评估土壤空间变异性。根据反射光谱的信息内容来解释所得到的PC1,PC2和PC3 Kriging映射,并与先前的常规土壤调查的结果进行比较。当绘制土壤空间可变性时,呈现的策略似乎是有效可靠的。

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