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Evaluation of spectral pretreatments, spectral range, and regression methods for quantitative spectroscopic analysis of soil organic carbon composition

机译:光谱预处理评价,光谱范围和土壤有机碳组合物定量光谱分析的回归方法

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Although there is an increasing interest in using infrared spectroscopy for the simple, rapid, and inexpensive prediction of soil organic carbon content, few studies have used this technique to measure organic carbon chemistry. In this paper, based on both near-infrared and mid-infrared diffuse reflectance spectroscopy, we compared the use of instrumentation, spectral pretreatment, and regression method for the prediction of three parameters related to organic carbon content, one related to isotopic composition, and five related to organic carbon chemistry. A total of 140 soil samples collected from seven oriental oak forest sites across East China were used as the data set for the calibration-validation procedure. Calibrations using sample set partitioning based on joint x-y distances method significantly outperformed those using Kennard-Stone method. Compared to models using linear method (i.e., partial least squares), those using non-linear regression method (i.e., support vector machines) greatly improved the prediction precision of the alkyl-to-O-alkyl ratio and performed slightly better for the other organic carbon chemical compositions. Instrumentation had a large effect as mid-infrared models had higher average prediction accuracies than near-infrared models. We finally proposed a model using second derivative preprocessing, joint x-y distances based sample set partitioning, mid-infrared spectra, and support vector machines regression to quantify organic carbon chemistry in this study. The results are helpful for the further study of soil composition measurement.
机译:尽管使用红外光谱对土壤有机碳含量的简单,快速和廉价预测的简单,快速和廉价预测,但很少有研究使用该技术测量有机碳化学。本文基于近红外线和中红外漫反射光谱光谱,我们比较了仪器,光谱预处理和回归方法的使用,用于预测有机碳含量的三个参数,与同位素组成有关,和五个与有机碳化学相关。从华东七个东方橡木林地收集的140个土壤样本被用作校准验证程序的数据集。使用基于关节X-Y距离的样品设定分区的校准明显优于使用肯纳德 - 石材方法的方式。与使用线性方法(即,局部最小二乘)的模型相比,使用非线性回归方法(即,支持载体机)大大提高了烷基-O-烷基比的预测精度,并且对另一个略微表现有机碳化学组合物。仪器效果很大,因为中红外模型具有比近红外模型更高的平均预测精度。我们最后提出了一种使用第二衍生物预处理的模型,基于关节X-Y距离的样品设定分配,中红外光谱和支持向量机回归来量化本研究中的有机碳化学。结果有助于进一步研究土壤成分测量。

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