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Potential of Spectroradiometry to Classify Soil Clay Content

机译:分光光度法对土壤黏土含量进行分类的潜力

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ABSTRACT Diffuse reflectance spectroscopy (DRS) is a fast and cheap alternative for soil clay, but needs further investigation to assess the scope of application. The purpose of the study was to develop a linear regression model to predict clay content from DRS data, to classify the soils into three textural classes, similar to those defined by a regulation of the Brazilian Ministry of Agriculture, Livestock and Food Supply. The DRS data of 412 soil samples, from the 0.0-0.5 m layer, from different locations in the state of Rio Grande do Sul, Brazil, were measured at wavelengths of 350 to 2,500 nm in the laboratory. The fitting of the linear regression model developed to predict soil clay content from the DRS data was based on a R 2 value of 0.74 and 0.75, with a RMSE of 7.82 and 8.51 % for the calibration and validation sets, respectively. Soil texture classification had an overall accuracy of 79.0 % (calibration) and 80.9 % (validation). The heterogeneity of soil samples affected the performance of the prediction models. Future studies should consider a previous classification of soil samples in different groups by soil type, parent material and/or sampling region.
机译:摘要漫反射光谱法(DRS)是一种快速廉价的土壤黏土替代方法,但需要进一步研究以评估其应用范围。该研究的目的是建立一个线性回归模型,根据DRS数据预测粘土含量,将土壤分为三个质地类别,这与巴西农业,畜牧业和食品供应部的法规所定义的相似。在实验室内,从巴西南里奥格兰德州不同地点的0.0-0.5 m层中的412个土壤样品的DRS数据在实验室中测量了350至2500 nm的波长。为从DRS数据预测土壤黏土含量而开发的线性回归模型的拟合是基于R 2值0.74和0.75,分别针对校准和验证集的RMSE为7.82和8.51%。土壤质地分类的总体准确度为79.0%(校准)和80.9%(验证)。土壤样品的异质性影响了预测模型的性能。未来的研究应考虑根据土壤类型,母体材料和/或采样区域对不同组中的土壤样品进行以前的分类。

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