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Quantitatively estimating main soil water-soluble salt ions content based on Visible-near infrared wavelength selected using GC, SR and VIP

机译:使用GC,SR和VIP选择的可见近红外波长定量估计主要土壤水溶性盐离子含量

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摘要

Soil salinization is the primary obstacle to the sustainable development of agriculture and eco-environment in arid regions. The accurate inversion of the major water-soluble salt ions in the soil using visible-near infrared (VIS-NIR) spectroscopy technique can enhance the effectiveness of saline soil management. However, the accuracy of spectral models of soil salt ions turns out to be affected by high dimensionality and noise information of spectral data. This study aims to improve the model accuracy by optimizing the spectral models based on the exploration of the sensitive spectral intervals of different salt ions. To this end, 120 soil samples were collected from Shahaoqu Irrigation Area in Inner Mongolia, China. After determining the raw reflectance spectrum and content of salt ions in the lab, the spectral data were pre-treated by standard normal variable (SNV). Subsequently the sensitive spectral intervals of each ion were selected using methods of gray correlation (GC), stepwise regression (SR) and variable importance in projection (VIP). Finally, the performance of both models of partial least squares regression (PLSR) and support vector regression (SVR) was investigated on the basis of the sensitive spectral intervals. The results indicated that the model accuracy based on the sensitive spectral intervals selected using different analytical methods turned out to be different: VIP was the highest, SR came next and GC was the lowest. The optimal inversion models of different ions were different. In general, both PLSR and SVR had achieved satisfactory model accuracy, but PLSR outperformed SVR in the forecasting effects. Great difference existed among the optimal inversion accuracy of different ions: the predicative accuracy of Ca2+, Na+, Cl−, Mg2+ and SO42− was very high, that of CO32− was high and K+ was relatively lower, but HCO3− failed to have any predicative power. These findings provide a new approach for the optimization of the spectral model of water-soluble salt ions and improvement of its predicative precision.
机译:土壤盐渍化是农业和生态环境中农业和生态环境中的主要障碍。使用可见近红外(Vis-NIR)光谱技术的土壤中主要水溶性盐离子的准确反演可以提高盐土壤管理的有效性。然而,土壤盐离子的光谱模型的准确性结果是受光谱数据的高维度和噪声信息的影响。本研究旨在通过基于探索不同盐离子的敏感光谱间隔优化光谱模型来提高模型精度。为此,从中国内蒙古的Shahaoqu灌溉区收集了120种土壤样本。在确定实验室中的原始反射谱和盐离子的含量之后,通过标准正常变量(SNV)预处理光谱数据。随后,使用灰色相关(GC),逐步回归(SR)和投影中的可变重要性来选择各离子的敏感谱间隔。最后,基于敏感的光谱间隔研究了部分最小二乘回归(PLSR)和支持向量回归(SVR)的模型的性能。结果表明,基于使用不同分析方法选择的敏感谱间隔的模型精度结果不同:VIP是最高的,下一步,GC是最低的。不同离子的最佳反转模型是不同的。通常,PLSR和SVR都取得了令人满意的模型精度,但PLSR在预测效果中表现出了SVR。不同离子的最佳反演精度存在巨大差异:Ca2 +,Na +,Cl-,Mg2 +和SO42-非常高的预测精度非常高,CO32-高,K +相对较低,但HCO3 - 未能有任何预测力。这些发现提供了一种新方法,用于优化水溶性盐离子的光谱模型及其预测精度的提高。

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