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Predicting partitioning of radiolabelled ~(14)C-PFOA in a range of soils using diffuse reflectance infrared spectroscopy

机译:使用漫反射红外光谱预测一系列土壤中放射性标记〜(14)C-PFOA的分配

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The aim of this study was to establish partitioning coefficients (K-d) of perfluorooctanoic acid (PFOA) in a wide range of soils and determine if those values can be predicted from soil properties using multiple linear regression (MLR) and from infrared spectra of soils using partial least squares regression (PLSR). For 100 different soils, the K-d values of spiked radiolabelled C-14-PFOA ranged from 0.6 to 14.8 L/kg and significantly decreased with soil depth (p 0.05) due to soil properties that change with depth. The MLR modelling revealed that PFOA sorption was significantly (p 0.05) influenced, in decreasing order, by organic carbon (OC) content, silt-plus-clay content and soil pH. Soils were partitioned into all soils and surface soils alone. The MLR models using OC, silt-plus-clay content and pH together explained most of the variation in sorption in all soils as well as surface soils alone (0-15 cm). However, correlations between soil properties and K-d values in some soils could not be explained by the MLR model. Modelling of K-d prediction in soils with PLSR and diffuse reflectance (mid) infrared Fourier transform spectroscopy (DRIFT) showed comparable success in explaining the predictions of K-d values, including some of the outliers identified in the MLR model. The PLSR loading weights suggested that quartz, and possibly pyrophyl-lite minerals, were inversely correlated with the K-d values. Given that MLR requires a-priori characterisation of a range of soil properties and PLSR-DRIFT is a method based on the direct relationship between spectra and soil components, mid-infrared spectroscopy may be a more economical and rapid technique to predict the solid-liquid partitioning of PFOA in soils. Crown Copyright (C) 2019 Published by Elsevier B.V. All rights reserved.
机译:本研究的目的是在各种土壤中建立全氟辛酸(PFOA)的分配系数(PFOA),并确定这些值是否可以使用多元线性回归(MLR)和使用土壤的红外光谱来预测这些值。偏最小二乘回归(PLSR)。对于100种不同的土壤,Spiked放射性标记的C-14-14-PFOA的K-D值范围为0.6至14.8L / kg,并且由于含有深度的土壤性能而导致土壤深度(P <0.05)显着降低。 MLR建模显示,PFOA吸附显着(P <0.05),受到有机碳(OC)含量,Silt-Plus-粘土含量和土壤pH值的降序影响。单独将土壤分成所有土壤和表面土壤。使用OC,Silt-Plus-Clay含量和pH的MLR模型在一起解释了所有土壤中吸附的大部分变化以及单独的表面土壤(0-15厘米)。然而,MLR模型无法解释一些土壤中的土壤性质和K-D值之间的相关性。用PLSR和漫射反射率的土壤k-d预测的建模(中间)红外傅里叶变换光谱(漂移)在解释K-D值的预测时,包括在MLR模型中识别的一些异常值的相当成功。 PLSR加载重量表明石英和可能是酸纤维素矿物质,与K-D值相反。鉴于MLR需要一系列土壤性能的先验表征,并且PLSR漂移是一种基于光谱和土壤成分之间直接关系的方法,中红外光谱可能是一种更经济和快速的技术来预测固体液体土壤中PFOA的分区。皇家版权(c)2019由elestvier b.v出版。保留所有权利。

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