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Classification of soil texture classes by using soil visual near infrared spectroscopy and factorial discriminant analysis techniques

机译:利用土壤视觉近红外光谱法和因子判别分析技术对土壤质地类别进行分类

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Texture is one of the main properties affecting the accuracy of visible (vis) and near infrared (NIR) spectroscopy during on-the-go measurement of soil properties. Classification of soil spectra into predefined texture classes is expected to increase the accuracy of measurement of other soil properties using separate groups of calibration models, each developed for one texture class. A mobile, fibre-type, vis-NIR spectrophotometer (Zeiss Corona 1.7 vis-NIR fibre), with a light reflectance measurement range of 306.5-1710.9 nm was used to measure the light reflectance from fresh soil samples collected from many fields in Belgium and northern France. A total of 365 soil samples were classified into four different texture classes, namely, coarse sandy, fine sandy, loamy and clayey soils. The factorial discriminant analysis (FDA) was applied on the first five principal components obtained from the principal component analysis performed on the vis-NIR spectra in order to classify soils into the four assigned groups. Correct classification (CC) of 85.7% and 81.8% was observed for the calibration and validation data sets, respectively. However, validation of the vis-NIR-FDA technique on the validation set showed poor discrimination between the coarse sandy and fine sandy soil groups, with a great deal of overlapping. Therefore, the soil groups were reduced to three groups by combining the coarse sandy and fine sandy soil groups into one group and FDA was applied again. A better classification was obtained with CC of 89.9 and 85.1% for the calibration and validation data sets, respectively. However, the CC for the sand group in the validation set was rather small (46.7%), which was attributed to the small sample number and poor correlation between sand fraction and vis-NIR spectroscopy. It was concluded that vis-NIR-FDA is an efficient technique to classify soil into three main groups of sandy (light soils), loamy (medium soils) and clayey (heavy soils). Additional samples from the sandy and clayey groups should be included to improve the accuracy of the vis-NIR-FDA classification models to be used for an on-the-go vis-NIR measurement system of soil properties.
机译:质地是在对土壤性质进行实时测量期间影响可见(可见)和近红外(NIR)光谱准确性的主要性质之一。将土壤光谱分类为预定义的纹理类别,有望提高使用单独的一组校准模型(分别针对一个纹理类别开发)的其他土壤属性的测量准确性。使用光反射率测量范围为306.5-1710.9 nm的移动式光纤可见近红外分光光度计(Zeiss Corona 1.7可见近红外纤维)来测量来自比利时和德国许多田地的新鲜土壤样品的光反射率。法国北部。总共365个土壤样品被分为四个不同的质地类别,即粗沙质,细沙质,壤质和黏土。阶乘判别分析(FDA)用于从对vis-NIR光谱执行的主成分分析中获得的前五个主成分,以便将土壤分类为四个指定的组。校正和验证数据集的正确分类(CC)分别为85.7%和81.8%。但是,在验证集上对vis-NIR-FDA技术进行的验证显示,粗砂质土壤组和细砂质土壤组之间的区分度较差,并且存在很多重叠之处。因此,通过将粗沙质土壤组和细沙质土壤组合并为一组,将土壤组减少为三组,并再次应用FDA。校准和验证数据集的CC分别为89.9%和85.1%,获得了更好的分类。但是,验证集中沙组的CC很小(46.7%),这归因于样本数量少以及沙分与vis-NIR光谱之间的相关性差。结论是,vis-NIR-FDA是将土壤分为沙质(轻质土壤),壤质(中等土壤)和黏土(重质土壤)三大类的有效技术。应当包括来自沙质和粘土质组的其他样品,以提高vis-NIR-FDA分类模型的准确性,该模型可用于土壤vis-NIR实时测量系统。

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