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Soils of the Brazilian Coastal Plains biome: prediction of chemical attributes via portable X-ray fluorescence (pXRF) spectrometry and robust prediction models

机译:巴西沿海平原生物群落的土壤:通过便携式X射线荧光(PXRF)光谱法和鲁棒预测模型预测化学物质

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Portable X-ray fluorescence (pXRF) spectrometry has been successfully used for soil attribute prediction. However, recent studies have shown that accurate predictions may vary according to soil type and environmental conditions, motivating investigations in different biomes. Hence, this work attempted to accurately predict soil pH, sum of bases (SB), cation exchange capacity (CEC) at pH 7.0 and base saturation (BS) using pXRF-obtained data with high variability and robust prediction models in the Brazilian Coastal Plains biome. A total of 285 soil samples were collected to generate prediction models for A (n= 123), B (n= 162) and A+B (n= 285) horizons through stepwise multiple linear regression, support vector machine with linear kernel (SVM) and random forest. Data were divided into calibration (75%) and validation (25%) sets. Accuracy of the predictions was assessed by coefficient of determination (R-2), root mean square error (RMSE), mean absolute error (MAE) and residual prediction deviation (RPD). The A+B horizons dataset had optimal performance, especially for SB predictions using SVM, achievingR(2)= 0.82, RMSE = 1.02 cmol(c)dm(-3), MAE = 1.17 cmol(c)dm(-3)and RPD = 2.33. The most important predictor variable was Ca. Predictions using pXRF data were accurate especially for SB. Limitations of the predictions caused by soil classes and environmental conditions should be further investigated in other regions.
机译:便携式X射线荧光(PXRF)光谱法已成功用于土地属性预测。然而,最近的研究表明,准确的预测可以根据土壤类型和环境条件而变化,激励不同生物群的调查。因此,这种作品试图使用PXRF获得的数据准确地预测PH 7.0和基础饱和度(BS)在巴西沿海平原中具有高变异性和鲁棒预测模型的基础饱和度(BS)的土壤pH,碱基(Sb)和基础饱和度(BS)生物群系。收集总共285个土壤样品以通过逐步多个线性回归产生(n = 123),B(n = 162)和A + B(n = 285)视野的预测模型,支持带有线性内核的向量机(SVM) )和随机的森林。数据分为校准(75%)和验证(25%)集。通过确定系数(R-2),根均方误差(RMSE),平均绝对误差(MAE)和残差预测偏差(RPD)来评估预测的准确性。 A + B个邻居数据集具有最佳性能,特别是对于使用SVM的SB预测,AgieVingSR(2)= 0.82,RMSE = 1.02 CMOL(C)DM(-3),MAE = 1.17 CMOL(C)DM(-3)和RPD = 2.33。最重要的预测变量是CA。使用PXRF数据的预测尤其是SB的准确性。应在其他地区进一步调查土壤类别和环境条件引起的预测的局限性。

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