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首页> 外文期刊>Geoderma: An International Journal of Soil Science >Assessing models for prediction of some soil chemical properties from portable X-ray fluorescence (pXRF) spectrometry data in Brazilian Coastal Plains
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Assessing models for prediction of some soil chemical properties from portable X-ray fluorescence (pXRF) spectrometry data in Brazilian Coastal Plains

机译:评估巴西沿海平原的便携式X射线荧光(PXRF)光谱数据预测一些土壤化学性质的模型

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摘要

Portable X-ray fluorescence (pXRF) spectrometry is becoming increasingly popular for predicting soil properties worldwide. However, there are still very few works on this subject under tropical conditions. Therefore, the objectives of this study were to use pXRF data to characterize the Brazilian Coastal Plains (BCP) soils and assess four machine learning algorithms [ordinary least squares regression (OLS), cubist regression (CR), XGBoost (XGB), and random forest (RF)] for prediction of total nitrogen (TN), cation exchange capacity (CEC), and soil organic matter (SOM) using pXRF data. A total of 285 soil samples were collected from the A and B horizons representing Ultisols, Oxisols, Spodosols, and Entisols. The pXRF reported elements helped in the characterization of the BCP soils. In general, the RF model achieved the best performances for TN (R-2 = 0.50), CEC (0.75), and SOM (0.56) when A and B horizons were combined, although better results have been reported in the literature for soils from other regions of the world. The results reported here for the BCP soils represent alternatives for reducing costs and time needed for assessing such data, supporting agronomic and environmental strategies.
机译:便携式X射线荧光(PXRF)光谱测量越来越受欢迎,用于预测全世界的土壤属性。然而,在热带条件下,这一主题仍然很少有效。因此,本研究的目标是使用PXRF数据来表征巴西沿海平原(BCP)土壤,并评估四台机器学习算法[普通最小二乘回归(OLS),立方体回归(CR),XGBoost(XGB)和随机使用PXRF数据预测总氮(TN),阳离子交换能力(CEC)和土壤有机物(SOM)的森林(RF)。从代表Ultisols,Oxisols,Spodosols和Entisols的A和B视野中收集了总共285种土壤样品。 PXRF报告的元素有助于BCP土壤表征。通常,RF模型实现了TN(R-2 = 0.50),CEC(0.75)和SOM(0.56)的最佳性能,但是当A和B视野组合时,虽然来自来自的文献中的更好的结果世界其他地区。此处报告的BCP土壤的结果代表了降低评估这些数据所需的成本和时间,支持农艺和环境策略所需的替代方案。

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