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首页> 外文期刊>Catena: An Interdisciplinary Journal of Soil Science Hydrology-Geomorphology Focusing on Geoecology and Landscape Evolution >Prediction of soil organic matter in northwestern China using fractional-order derivative spectroscopy and modified normalized difference indices
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Prediction of soil organic matter in northwestern China using fractional-order derivative spectroscopy and modified normalized difference indices

机译:利用分数阶衍生光谱法预测西北地区土壤有机物及修改规范化差异指数

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摘要

Visible-near-infrared (Vis-NIR) spectroscopy makes it possible to estimate soil organic matter content (SOMC). Spectral pretreatment techniques have important significance in the quantitative analysis of SOMC. A total of 150 soil samples collected in northwestern China were used as data sets for calibration and validation. The SOMC values and reflectance spectra were measured in the laboratory. Fractional-order derivatives (FODs) (intervals of 0.05, range of 0-2) were used for soil spectral pretreatment, and a new three-band index (modified normalized difference index, MNDI) was constructed based on the band-optimization algorithm and the existing two-band exponential form (normalized difference index, NDI). Partial least square-support vector machine (PLS-SVM) models were calibrated using spectral parameters selected based on a single dimension (FOD), two-dimensional index (NDI) and three-dimensional index (MNDI) and subsequently applied to estimate SOMC. Three model evaluation parameters, namely, the coefficient of determination (R-2), root mean squared error (RMSE), and ratio of performance to interquartile range (RPIQ), were used to evaluate the estimation accuracy of the models. The results showed that with increased derivative order, the spectral strength gradually decreased, but the spectral detail increased. Furthermore, the correlation between FOD spectra and SOMC was significantly enhanced in the visible region, with the most obvious effect in the 1.05- to 1.45-order range. The PLS-SVM modeling results showed that the sensitivity and estimation accuracy of SOMC increased with increasing spectral synergy (i.e., 1D (FOD) < 2D (NDI) < 3D (MNDI)). Among the models, MNDI exhibited the best model performance, yielding a validation R-2 and RPIQ of 0.846 and 3.396, respectively. The combination of FOD and MNDI could weaken the soil noise information and improve the prediction accuracy of SOMC. Furthermore, the three-dimensional index has strong application potential for estimating other biochemical parameters of soil using Vis-NIR spectroscopy.
机译:可见近红外(Vis-NIR)光谱使得可以估计土壤有机质含量(SOMC)。光谱预处理技术对SOMC的定量分析具有重要意义。中国西北部收集的150个土壤样本被用作校准和验证的数据集。在实验室中测量SOMC值和反射光谱。用于土壤光谱预处理的分数阶衍生物(FOD)(0.05,范围为0-2的间隔),基于带优化算法和新的三带指数(改进的归一化差异指数,MNDI)构建现有的双频指数形式(归一化差异指数,NDI)。使用基于单尺寸(FOD),二维索引(NDI)和三维索引(MNDI)选择的光谱参数校准部分最小二乘支持向量机(PLS-SVM)模型,随后应用于估计SOMC。三个模型评估参数,即确定确定系数(R-2),均方方误差(RMSE)和性能比与狭窄范围(RPIQ)的比率,用于评估模型的估计精度。结果表明,随着衍生顺序增加,光谱强度逐渐降低,但光谱细节增加。此外,在可见区域中,FOD光谱和SOMC之间的相关性显着增强,在1.05至1.45阶范围内具有最明显的效果。 PLS-SVM建模结果表明,随着频谱协同作用的增加(即,1D(FOD)<2D(NDI)<3D(MNDI)),SOMC的灵敏度和估计精度增加。在模型中,MNDI分别表现出最佳的模型性能,分别产生0.846和3.396的验证R-2和RPIQ。 FOD和MNDI的组合可以削弱土壤噪声信息,提高SOMC的预测准确性。此外,三维指数具有强大的应用潜力,用于使用VIS-NIR光谱估计土壤的其他生物化学参数。

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