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Predicting soil properties for sustainable agriculture using vis-NIR spectroscopy - a case study in northern Greece

机译:Vis-NIR光谱预测可持续农业的土壤性质 - 以希腊北部的案例研究

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Soil Spectral Libraries facilitate agricultural production taking into account the principles of a low-input sustainable agriculture and provide more valuable knowledge to environmental policy makers, enabling improved decision making and effective management of natural resources in the region. In this paper, a comparison in the predictive performance of two state of the art algorithms, one linear (Partial Least Squares Regression) and one non-linear (Cubist), employed in soil spectroscopy is conducted. The comparison was carried out in a regional Soil Spectral Library developed in the Eastern Macedonia and Thrace region of Northern Greece, comprised of roughly 450 Entisol soil samples from soil horizons A (0-30 cm) and B (30-60 cm). The soil spectra were acquired in the visible - Near Infrared Red region (vis-NIR, 350nm-2500nm) using a standard protocol in the laboratory. Three soil properties, which are essential for agriculture, were analyzed and taken into account for the comparison. These were the Organic Matter, the Clay content and the concentration of nitrate-N. Additionally, three different spectral pre-processing techniques were utilized, namely the continuum removal, the absorbance transformation, and the first derivative. Following the removal of outliers using the Mahalanobis distance in the first 5 principal components of the spectra (accounting for ~99.8% of the variance), a five-fold cross-validation experiment was considered for all 12 datasets. Statistical comparisons were conducted on the results, which indicate that the Cubist algorithm outperforms PLSR, while the most informative transformation is the first derivative.
机译:土壤谱图书馆促进农业生产考虑到低投入可持续农业的原则,为环境政策制定者提供更有价值的知识,从而改善了该地区的自然资源的改进决策和有效管理。在本文中,进行了在土壤光谱学中采用的技术算法的预测性能,其两个状态的预测性能,一种线性(局部最小二乘回归)和一个非线性(立方体)。该比较是在北京北部的马其顿和北部城区开发的区域土壤光谱库中进行的,该图书馆由来自土壤视野和B(30-60厘米)的土壤(0-30cm)组成的大约450个甾醇土壤样品。使用实验室中的标准方案在可见近红外红区域(Vis-Nir,350nm-2500nm)中获得土壤光谱。对农业至关重要的三种土壤性质进行了分析,并考虑到比较。这些是有机物,粘土含量和硝酸镍浓度。另外,利用了三种不同的光谱预处理技术,即连续去除,吸光度转化和第一衍生物。在使用频谱的前5个主成分中使用Mahalanobis距离去除异常值(占差异的约99.8%),考虑了所有12个数据集的五倍交叉验证实验。在结果上进行了统计比较,表明立体算法优于PLSR,而最具信息丰富的转换是第一个衍生物。

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