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Prediction of organic carbon and calcium carbonates in agricultural soils with Vis-NIR spectroscopy

机译:可见-近红外光谱法预测农业土壤中的有机碳和碳酸钙

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The objectives of this study were to (i) evaluate the ability of Vis-NIR spectroscopy to predict soil organic carbon (SOC) and CaCO3 content in the heterogeneous agricultural soils from Dalmatia, Croatia and (ii) to compare the performance of two multivariate calibration techniques: partial least square regression (PLSR) and support vector machine regression (SVMR). The reflectance spectra of a total of 250 top-soils (0-25 cm) samples were collected in the laboratory using a portable Terra Spec 4 Hi-Res Mineral Spectrometer with a wavelength range 350-2500 nm. The coefficient of determination (R2), the residual prediction deviation (RPD) and the root mean square error (RMSE) were used for the model evaluation. The CaCO3 prediction derived by PLSR and SVMR with R2 (0.86 and 0.88) and RPD (2.67 and 2.82), respectively are considered good prediction models. The SOC prediction with SVMR (R2 0.84 and RPD 2.43) indicates good prediction and approximate quantitative prediction with PLSR with R2 of 0.78 and RPD of 1.94. Our results showed that (i) CaCO3 and SOC estimations were obtained with acceptable accuracy using Vis-NIR spectroscopy, (ii) the SVMR method produced more accurate estimations of selected soil properties compared to LSR, and (iii) Vis-NIR spectroscopy, in combination with SWMR can be recommended as a rapid and inexpensive method for screening of the CaCO3 and SOC content.
机译:这项研究的目的是(i)评估Vis-NIR光谱法预测克罗地亚达尔马提亚非均质农业土壤中土壤有机碳(SOC)和CaCO3含量的能力,以及(ii)比较两种多元校准的性能技术:偏最小二乘回归(PLSR)和支持向量机回归(SVMR)。使用便携式Terra Spec 4 Hi-Res矿物光谱仪在波长范围为350-2500 nm的实验室中收集了总共250个表层土壤(0-25厘米)样品的反射光谱。确定系数(R2),残留预测偏差(RPD)和均方根误差(RMSE)用于模型评估。由PLSR和SVMR分别以R2(0.86和0.88)和RPD(2.67和2.82)得出的CaCO3预测被认为是良好的预测模型。 SVMR(R2 0.84和RPD 2.43)的SOC预测表明良好的预测和PLSR的近似定量预测,R2为0.78,RPD为1.94。我们的结果表明(i)使用Vis-NIR光谱法可以得到可接受的准确的CaCO3和SOC估算值;(ii)SVMR方法与LSR相比,可以更准确地估算所选土壤的特性,以及(iii)Vis-NIR光谱图推荐与SWMR联用作为筛查CaCO3和SOC含量的一种快速,廉价的方法。

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