研究目的
The main objective of this study was to employ MIR laser spectroscopy using a QCL source to detect insoluble pollutants such as petroleum and its derivatives in soils by simulating contaminated areas.
研究成果
The study demonstrated that new spectroscopic techniques, such as MIR laser spectroscopy, combined with PLS-DA and SVM, can be used for the development of practical methods for in situ detection in challenging matrices, such as sensing petroleum traces in soils. The QCL/SVM methodology demonstrated superior performance, improving the detection and decision limits to 0.04% and 0.003%, respectively.
研究不足
The experiments were limited to only two types of particulate materials (whole soils and sand). The technique's applicability to other soil types and the use of other robust pattern recognition techniques could be explored in future work.
1:Experimental Design and Method Selection:
The study employed a portable MIR quantum cascade laser (QCL) as an excitation source for detecting traces of petroleum in soil. The methodology combined artificial intelligence (AI) with mid-infrared (MIR) laser spectroscopy for remote sensing.
2:Sample Selection and Data Sources:
Samples included mixtures of red soil, brown soil, sea sand, and bentonite with varying concentrations of petroleum. Standard reference samples were prepared using KBr with various petroleum concentrations.
3:List of Experimental Equipment and Materials:
A portable MIR predispersive spectrometer (LaserScan?, Block Engineering) equipped with three laser diodes was used. Samples were prepared using potassium bromide (KBr), sea sand, bentonite, montmorillonite, and red and brown soils.
4:Experimental Procedures and Operational Workflow:
Samples were homogenized by mechanical mixing and sieved to determine different sizes of soil distributions. Spectra were acquired at various points on the surface, resulting in 100 reflectance spectra per petroleum concentration in the soil samples.
5:Data Analysis Methods:
MVAs such as PLS-DA and PCA were implemented using the PLS-Toolbox 8.0 for MATLAB. SVM was employed using the Logistic Regression CV module in Python. The performance of the models was evaluated using parameters of a confusion matrix, such as sensitivity and specificity.
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