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首页> 外文期刊>Open Journal of Soil Science >Effect of the Continuum Removal in Predicting Soil Organic Carbon with Near Infrared Spectroscopy (NIRS) in the Senegal Sahelian Soils
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Effect of the Continuum Removal in Predicting Soil Organic Carbon with Near Infrared Spectroscopy (NIRS) in the Senegal Sahelian Soils

机译:塞内加尔萨赫勒土壤中连续去除对近红外光谱法(NIRS)预测土壤有机碳的影响

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Spectroscopy plays a major role in the access of the analytical parameters of the soil. It tends to substitute the conventional laboratory analysis because hyperspectral data were least expensive and easier to obtain. The objective of this study was to evaluate the effect of the continuum removal (CR) in the validation of the accurate prediction model of the soil properties with Vis-NIR spectroscopy data. Few studies using Vis-NIR reflectance spectroscopy have well focused the calculation of the CR method; its effect in the calibration of the accurate models was also not well emphasized. In this study, we used the remote sensing software ENVI 4.7 to compute the CR function where the value of the continuum for each sample and for each spectral wavelength was obtained by dividing the reflectance values of the full spectrum (FS) with those of the continuum curve (CC). The partial least square regression (PLSR) model was applied in the spectral data from the soil of the Senegal Sahelian region. It was calibrated with both data from the full spectrum (FS) and those obtained after the application of the continuum removal. With the application of the CR, ultraviolet wavelengths (350 - 429 nm) and those of near infrared (2491 - 2500 nm) were removed from the explanatory variables of PLSR model. With the FS, all wavelengths between 350 and 2500 nm were taken into account in predicting soil properties. Our findings show a positive effect of the application of CR in the estimation of soil organic carbon. In calibration, the R2 increased up to 10% with the continuum removal in the model of 12 components (CP). In terms of validation, it’s the 15-component model which is the most accurate with the same range in calibration between the FS and the CR. The lowest RMSE ranged from 0.04 with the FS to 0.03 with the application of the CR in calibration and validation. These results show that the interest of this study as soil organic carbon is recognized as a key indicator of fertility of the soil in Sahelian-African regions. For future studies, it’s important to apply the model of neural networks to better evaluate the effect of continuum removal in predicting soil properties from the spectral data and other methods of preprocessing like the multiplicative scatter correction (msc).
机译:光谱学在获取土壤分析参数方面起着重要作用。它倾向于替代常规实验室分析,因为高光谱数据最便宜且更容易获得。这项研究的目的是评估使用Vis-NIR光谱数据验证连续性去除(CR)对土壤性质的准确预测模型的有效性。很少有使用Vis-NIR反射光谱学的研究集中研究CR方法的计算。还没有很好地强调其在校准精确模型中的作用。在这项研究中,我们使用遥感软件ENVI 4.7计算CR函数,其中通过将全光谱(FS)的反射率值除以连续光谱的反射率值来获得每个样品和每个光谱波长的连续谱值曲线(CC)。将偏最小二乘回归(PLSR)模型应用于塞内加尔萨赫勒地区土壤的光谱数据。使用来自全光谱(FS)的数据和应用连续光谱去除后获得的数据进行校准。通过应用CR,从PLSR模型的解释变量中删除了紫外波长(350-429 nm)和近红外波长(2491- 2500 nm)。使用FS时,在预测土壤性质时要考虑到350至2500 nm之间的所有波长。我们的发现表明,CR在土壤有机碳估算中的应用具有积极作用。在校准中,随着12个组件(CP)模型中的连续介质去除,R2增加了10%。在验证方面,它是由15个成分组成的模型,在FS和CR之间的校准范围相同的情况下,它是最准确的。最低RMSE范围从FS的0.04到在校准和验证中应用CR的0.03。这些结果表明,作为土壤有机碳的这项研究的兴趣被认为是萨赫勒-非洲地区土壤肥力的关键指标。对于以后的研究,重要的是应用神经网络模型,以更好地评估从光谱数据和其他预处理方法(例如乘法散射校正(msc))预测土壤性质的连续介质去除效果。

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