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首页> 外文期刊>Ciencia Rural >Prediction of soil organic matter and clay contents by near-infrared spectroscopy - NIRS
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Prediction of soil organic matter and clay contents by near-infrared spectroscopy - NIRS

机译:近红外光谱法预测土壤有机质和粘土含量

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摘要

Among the soil constituents, special attention is given to soil organic matter (SOM) and clay contents, since, among other aspects, they are key factors to nutrient retention and soil aggregates formation, which directly affect the crop production potential. The methods commonly used for the quantification of these constituents have some disadvantages, such as the use of chemical reactants and waste generation. An alternative to these methods is the near-infrared spectroscopy (NIRS) technique. The aim of this research is to evaluate models for SOM and clay quantification in soil samples using spectral data by NIRS. A set (n = 400) of soil samples previously analyzed by traditional methods were used to generate a NIRS calibration curve. The clay content was determined by the hydrometer method while SOM content was determined by sulfochromic solution. For calibration, we used the original spectra (absorbance) and spectral pretreatment (Savitzky-Golay smoothing derivative) in the following models: multiple linear regression (MLR), partial last squares regression (PLSR), support vector machine (SVM) and Gaussian process regression (GPR). The curve validation was performed with the SVM model (best performance in the calibration based on R?2 and RMSE) in two ways: with 40 random samples from the calibration set and another set with 200 new unknown samples. The soil clay content affects the predictive ability of the calibration curve to estimate SOM content by NIRS. Validation curves showed poorer performance (lower R?2 and higher RMSE) when generated from unknown samples, where the model tends to overestimate the lower levels and to underestimate the higher levels of clay and SOM. Despite the potential of NIRS technique to predict these attributes, further calibration studies are still needed to use this technique in soil analysis laboratories.
机译:在土壤成分中,特别注意土壤有机物(SOM)和粘土含量,因为除其他方面,它们是营养保留和土壤聚集体形成的关键因素,它直接影响作物生产潜力。通常用于定量这些成分的方法具有一些缺点,例如使用化学反应物和废物产生。这些方法的替代方法是近红外光谱(NIRS)技术。本研究的目的是评估使用NIRS的光谱数据在土壤样本中的SOM和粘土定量的模型。先前通过传统方法分析的嵌段(n = 400)的土壤样品用于产生NIRS校准曲线。粘土含量由液压分子法测定,而通过硫致铬溶液测定SOM含量。对于校准,我们使用原始光谱(吸光度)和光谱预处理(Savitzky-Golay平滑衍生物)在下列型号中:多元线性回归(MLR),部分最后方格回归(PLSR),支持向量机(SVM)和高斯过程回归(GPR)。以两种方式使用SVM模型(基于R?2和RMSE的校准中最佳性能)进行曲线验证:使用校准集40个随机样本,另一组具有200个新的未知样本。土壤粘土含量影响校准曲线的预测能力来估计NIRS的SOM内容。验证曲线在从未知样品产生时显示出较差的性能(降低R?2和更高的RMSE),其中模型往往高估较低的水平并低估更高水平的粘土和索马座。尽管载体技术潜力来预测这些属性,但仍需要进一步的校准研究来在土壤分析实验室中使用这种技术。

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