Proximal Sensing and Digital Terrain Models Applied to Digital Soil Mapping and Modeling of Brazilian Latosols (Oxisols)

被引:56
|
作者
Godinho Silva, Sergio Henrique [1 ]
Poggere, Giovana Clarice [2 ]
de Menezes, Michele Duarte [2 ]
Carvalho, Geila Santos [2 ]
Guimaraes Guilherme, Luiz Roberto [2 ]
Curi, Nilton [2 ]
机构
[1] Fed Univ Jequitinhonha & Mucuri Valleys, Inst Agr Sci, Campus Unai,Ave Vereador Joao Narciso 1380, BR-38610000 Cachoeira, Unai, Brazil
[2] Univ Fed Lavras, Dept Soil Sci, POB 3037, BR-37200000 Lavras, Brazil
关键词
magnetic susceptibility; portable X-ray fluorescence scanner; data mining; fuzzy logics; ordinary least square multiple linear regression; HEAVY-METAL POLLUTION; RAY-FLUORESCENCE SPECTROMETRY; MAGNETIC-SUSCEPTIBILITY; SPATIAL PREDICTION; ELEVATION MODELS; KNOWLEDGE; SPECTROSCOPY; EROSION; PATTERN; ROCKS;
D O I
10.3390/rs8080614
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Digital terrain models (DTM) have been used in soil mapping worldwide. When using such models, improved predictions are often attained with the input of extra variables provided by the use of proximal sensors, such as magnetometers and portable X-ray fluorescence scanners (pXRF). This work aimed to evaluate the efficiency of such tools for mapping soil classes and properties in tropical conditions. Soils were classified and sampled at 39 locations in a regular-grid design with a 200-m distance between samples. A pXRF and a magnetometer were used in all samples, and DTM values were obtained for every sampling site. Through visual analysis, boxplots were used to identify the best variables for distinguishing soil classes, which were further mapped using fuzzy logic. The map was then validated in the field. An ordinary least square regression model was used to predict sand and clay contents using DTM, pXRF and the magnetometer as predicting variables. Variables obtained with pXRF showed a greater ability for predicting soil classes (overall accuracy of 78% and 0.67 kappa index), as well as for estimating sand and clay contents than those acquired with DTM and the magnetometer. This study showed that pXRF offers additional variables that are key for mapping soils and predicting soil properties at a detailed scale. This would not be possible using only DTM or magnetic susceptibility.
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页数:22
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