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Soil Carbon Stock and Particle Size Fractions in the Central Amazon Predicted from Remotely Sensed Relief, Multispectral and Radar Data

机译:根据遥感地形,多光谱和雷达数据,预测亚马逊河中部的土壤碳储量和粒径分数

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Soils from the remote areas of the Amazon Rainforest in Brazil are poorly mapped due to the presence of dense forest and lack of access routes. The use of covariates derived from multispectral and radar remote sensors allows mapping large areas and has the potential to improve the accuracy of soil attribute maps. The objectives of this study were to: (a) evaluate the addition of relief, and vegetation covariates derived from multispectral images with distinct spatial and spectral resolutions (Landsat 8 and RapidEye) and L-band radar (ALOS PALSAR) for the prediction of soil organic carbon stock (CS) and particle size fractions; and (b) evaluate the performance of four geostatistical methods to map these soil properties. Overall, the results show that, even under forest coverage, the Normalized Difference Vegetation Index (NDVI) and ALOS PALSAR backscattering coefficient improved the accuracy of CS and subsurface clay content predictions. The NDVI derived from RapidEye sensor improved the prediction of CS using isotopic cokriging, while the NDVI derived from Landsat 8 and backscattering coefficient were selected to predict clay content at the subsurface using regression kriging (RK). The relative improvement of applying cokriging and RK over ordinary kriging were lower than 10%, indicating that further analyses are necessary to connect soil proxies (vegetation and relief types) with soil attributes.
机译:由于存在茂密的森林和缺乏通行路线,巴西亚马逊雨林偏远地区的土壤分布不佳。从多光谱和雷达遥感器获得的协变量的使用可以绘制大面积的图,并有可能提高土壤属性图的准确性。这项研究的目的是:(a)评价浮雕的增加,以及从具有不同空间和光谱分辨率(Landsat 8和RapidEye)和L波段雷达(ALOS PALSAR)的多光谱图像得出的植被协变量有机碳储量(CS)和粒度分数; (b)评估用于绘制这些土壤特性的四种地统计学方法的性能。总体而言,结果表明,即使在森林覆盖率下,归一化植被指数(NDVI)和ALOS PALSAR后向散射系数也提高了CS和地下粘土含量预测的准确性。 RapidEye传感器衍生的NDVI使用同位素协同克里格法改善了CS的预测,而Landsat 8和反向散射系数衍生的NDVI被选择为使用回归克里金法(RK)预测地下的粘土含量。与普通克里金法相比,联合克里金法和RK法的相对改进低于10%,这表明需要进一步分析以将土壤代理(植被和起伏类型)与土壤属性联系起来。

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