首页> 外文期刊>Geoderma: An International Journal of Soil Science >Spectral reflectance variability from soil physicochemical properties in oil contaminated soils.
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Spectral reflectance variability from soil physicochemical properties in oil contaminated soils.

机译:油污染土壤中土壤理化性质引起的光谱反射率变异性。

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Oil spills occur across large landscapes in a variety of soils. Visible and near-infrared (VisNIR, 350-2500 nm) diffuse reflectance spectroscopy (DRS) is a rapid, cost-effective sensing method that has shown potential for characterizing petroleum contaminated soils. This study used DRS to measure reflectance patterns of 68 samples made by mixing samples from two soils with different clay content, three levels of organic carbon, three petroleum types and three or more levels of contamination per type. Both first derivative of reflectance and discrete wavelet transformations were used to preprocess the spectra. Three clustering analyses (linear discriminant analysis, support vector machines, and random forest) and three multivariate regression methods (stepwise multiple linear regression, MLR; partial least squares regression, PLSR; and penalized spline) were used for pattern recognition and to develop the petroleum predictive models. Principal component analysis (PCA) was applied for qualitative VisNIR discrimination of variable soil types, organic carbon levels, petroleum types, and concentration levels. Soil types were separated with 100% accuracy and levels of organic carbon were separated with 96% accuracy by linear discriminant analysis using the first nine principal components. The support vector machine produced 82% classification accuracy for organic carbon levels by repeated random splitting of the whole dataset. However, spectral absorptions for each petroleum hydrocarbon overlapped with each other and could not be separated with any clustering scheme when contaminations were mixed. Wavelet-based MLR performed best for predicting petroleum amount with the highest residual prediction deviation (RPD) of 3.97. While using the first derivative of reflectance spectra, penalized spline regression performed better (RPD=3.3) than PLSR (RPD=2.5) model. Specific calibrations considering additional soil physicochemical variability and integrating wavelet-penalized spline are expected to produce useful spectral libraries for petroleum contaminated soils.
机译:溢油事故发生在各种土壤中的大片土地上。可见和近红外(VisNIR,350-2500 nm)漫反射光谱(DRS)是一种快速,经济高效的传感方法,已显示出表征石油污染土壤的潜力。这项研究使用DRS来测量68种样品的反射率模式,这些样品是通过混合来自两种具有不同粘土含量,三种有机碳含量,三种石油类型以及三种或三种以上污染水平的样品制成的。反射率的一阶导数和离散小波变换都用于预处理光谱。三种聚类分析(线性判别分析,支持向量机和随机森林)和三种多元回归方法(逐步多元线性回归,MLR;偏最小二乘回归,PLSR和惩罚样条)用于模式识别和开发石油预测模型。主成分分析(PCA)用于可变土壤类型,有机碳水平,石油类型和浓度水平的VisNIR定性判别。通过使用前九个主要成分的线性判别分析,以100%的精度分离了土壤类型,并以96%的精度分离了有机碳含量。支持向量机通过对整个数据集进行反复随机拆分,有机碳水平的分类精度达到82%。但是,当混合污染物时,每种石油碳氢化合物的光谱吸收彼此重叠,并且无法通过任何聚类方案进行分离。基于小波的MLR在预测石油量时表现最佳,其残留预测偏差(RPD)最高,为3.97。当使用反射光谱的一阶导数时,惩罚样条回归的性能(RPD = 3.3)优于PLSR(RPD = 2.5)模型。考虑到额外的土壤理化变异性和整合小波惩罚样条的特定校准有望为石油污染的土壤提供有用的光谱库。

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