首页> 外文期刊>Pedosphere: A Quarterly Journal of Soil Science >Model-Based Integrated Methods for Quantitative Estimation of Soil Salinity from Hyperspectral Remote Sensing Data: A Case Study of Selected South African Soils
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Model-Based Integrated Methods for Quantitative Estimation of Soil Salinity from Hyperspectral Remote Sensing Data: A Case Study of Selected South African Soils

机译:基于模型的高光谱遥感土壤盐分定量估算综合方法:以南非几种土壤为例

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摘要

Soil salinization is a land degradation process that leads to reduced agricultural yields. This study investigated the method that can best predict electrical conductivity (EC) in dry soils using individual bands, a normalized difference salinity index (NDSI), partial least squares regression (PLSR), and bagging PLSR. Soil spectral reflectance of dried, ground, and sieved soil samples containing varying amounts of EC was measured using an ASD FieldSpec spectrometer in a darkroom. Predictive models were computed using a training dataset. An independent validation dataset was used to validate the models. The results showed that good predictions could be made based on bagging PLSR using first derivative reflectance (validation R2 = 0.85), PLSR using untransformed reflectance (validation R2 = 0.70), NDSI (validation R2 = 0.65), and the untransformed individual band at 2 257 nm (validation R2 = 0.60) predictive models. These suggested the potential of mapping soil salinity using airborne and/or satellite hyperspectral data during dry seasons.
机译:土壤盐碱化是导致农业减产的土地退化过程。这项研究调查了使用单个谱带,标准化差异盐度指数(NDSI),偏最小二乘回归(PLSR)和装袋PLSR可以最好地预测干旱土壤中电导率(EC)的方法。使用ASD FieldSpec光谱仪在暗室中测量含有不同EC的干燥,地面和筛分土壤样品的土壤光谱反射率。使用训练数据集计算预测模型。使用独立的验证数据集来验证模型。结果表明,使用一阶导数反射率(验证R2 = 0.85),使用未转换反射率(验证R2 = 0.70),使用NDSI(验证R2 = 0.65)和未转换的单个谱带的PLSR装袋PLSR可以做出良好的预测257 nm(验证R2 = 0.60)预测模型。这些表明在干旱季节使用机载和/或卫星高光谱数据绘制土壤盐分的潜力。

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