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首页> 外文期刊>Geoderma: An International Journal of Soil Science >Tracing tropical soil parent material analysis via portable X-ray fluorescence (pXRF) spectrometry in Brazilian Cerrado
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Tracing tropical soil parent material analysis via portable X-ray fluorescence (pXRF) spectrometry in Brazilian Cerrado

机译:通过巴西·库拉多的便携式X射线荧光(PXRF)光谱追踪热带土壤母体材料分析

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摘要

Parent material (PM) type is crucial for understanding the distribution of soils across the landscape. However, such information is not available at a detailed scale in Brazil. Thus, portable X-ray fluorescence (pXRF) spectrometry can aid in PM characterization by measuring elemental concentrations. This work focused on mapping soil PM (specifically variations of phyllite) using pXRF data and evaluating which soil horizon (A, B, or C) provides optimal PM identification in the Brazilian Cerrado. A total of 120 soil samples were collected from A, B, and C horizons across the study area as well as associated PMs; all were subjected to pXRF analysis. Artificial neural network, support vector machine, and random forest were used to model and predict PMs through pXRF data to the entire area. The nine maps (3 soil horizons data x 3 algorithms) generated for PM prediction were validated through overall accuracy, Kappa coefficient, producer's, and user's accuracy. The most accurate PM maps were obtained by using C horizon information (overall accuracy of 0.87 and Kappa coefficient of 0.79) via support vector machine algorithm. Land use dramatically influenced the results. In sum, pXRF data can be successfully used to predict soil PMs by robust algorithms. Specifically, V, Ni, Sr, and Pb were optimal for predicting PM regardless of land use.
机译:父母材料(PM)类型对于了解横跨景观的土壤分布至关重要。但是,这些信息在巴西的详细规模中不可用。因此,便携式X射线荧光(PXRF)光谱法可通过测量元素浓度来帮助PM表征。这项工作主要用于使用PXRF数据映射土壤PM(特异性变化),并评估哪种土壤视野(A,B或C)在巴西的Cerrado中提供最佳PM鉴定。在研究区以及相关的PMS中,共收集来自A,B和C视野的120种土壤样品;所有人都经过PXRF分析。人工神经网络,支持向量机和随机森林用于模拟并通过PXRF数据到整个区域的PMS。通过整体精度,kappa系数,生产者和用户的准确性验证为PM预测产生的九个地图(3土壤视野数据x 3算法)。通过支持向量机算法使用C地平线信息(0.87和Kappa系数为0.79的总精度为0.79)获得最准确的PM映射。土地利用显着影响结果。总之,PXRF数据可以成功地用于通过强大的算法预测土壤PM。具体而言,V,Ni,Sr和Pb对于预测PM而言,无论土地使用如何,都是最佳的。

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